{"id":944,"date":"2023-06-14T09:32:28","date_gmt":"2023-06-14T09:32:28","guid":{"rendered":"https:\/\/welcome.hexstruct.com\/?p=944"},"modified":"2024-04-28T09:58:43","modified_gmt":"2024-04-28T09:58:43","slug":"ai-detector-to-check-for-ai-in-images-audio","status":"publish","type":"post","link":"https:\/\/welcome.hexstruct.com\/index.php\/2023\/06\/14\/ai-detector-to-check-for-ai-in-images-audio\/","title":{"rendered":"AI Detector to Check for AI in Images &#038; Audio"},"content":{"rendered":"<p><h1>AI Image Recognition Guide for 2024<\/h1>\n<\/p>\n<p><img decoding=\"async\" class='wp-post-image' style='display: block;margin-left:auto;margin-right:auto;' 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\" width=\"308px\" alt=\"ai image identifier\"\/><\/p>\n<p><p>Facial analysis with computer vision allows systems to analyze a video frame or photo to recognize identity, intentions, emotional and health states, age, or ethnicity. Some photo recognition tools for social media even aim to quantify levels of perceived attractiveness with a score. And because there\u2019s a need for real-time processing and usability in areas without reliable internet connections, these apps (and others like it) rely on on-device image recognition to create authentically accessible experiences. Many of the current applications of automated image organization (including Google Photos and Facebook), also employ facial recognition, which is a specific task within the image recognition domain. With modern smartphone camera technology, it\u2019s become incredibly easy and fast to snap countless photos and capture high-quality videos.<\/p>\n<\/p>\n<p><p>These powerful engines are capable of analyzing just a couple of photos to recognize a person (or even a pet). For example, with the AI image recognition algorithm developed by the online retailer Boohoo, you can snap a photo of an object you like and then find a similar object on their site. This relieves the customers of the pain of looking through the myriads of options to find the thing that they want. After designing your network architectures ready and carefully labeling your data, you can train the AI image recognition algorithm. This step is full of pitfalls that you can read about in our article on AI project stages. A separate issue that we would like to share with you deals with the computational power and storage restraints that drag out your time schedule.<\/p>\n<\/p>\n<p><p>Today we are relying on visual aids such as pictures and videos more than ever for information and entertainment. In the dawn of the internet and social media, users used text-based mechanisms to extract online information or interact with each other. Back then, visually impaired users employed&nbsp;screen readers&nbsp;to comprehend and analyze the information. Now, most of the online content has transformed into a visual-based format, thus making the user experience for people living with an impaired vision or blindness more difficult. Image recognition technology promises to solve the woes of the visually impaired community by providing alternative sensory information, such as sound or touch.<\/p>\n<\/p>\n<p><img decoding=\"async\" class='aligncenter' style='display: block;margin-left:auto;margin-right:auto;' src=\"https:\/\/www.metadialog.com\/wp-content\/uploads\/feed_images\/future-of-customer-support-top-5-trends-img-3.webp\" width=\"305px\" alt=\"ai image identifier\"\/><\/p>\n<p><p>An efficacious AI image recognition software not only decodes images, but it also has a predictive ability. Software and applications that are trained for interpreting images are smart enough to identify places, people, handwriting, objects, and actions in the images or videos. The essence of artificial intelligence is to employ an abundance of data to make informed decisions.<\/p>\n<\/p>\n<p><p>In general, traditional computer vision and pixel-based image recognition systems are very limited when it comes to scalability or the ability to re-use them in varying scenarios\/locations. Object localization is another subset of computer vision often confused with image recognition. Object localization refers to identifying the location of one or more objects in an image and drawing a bounding box around their perimeter.<\/p>\n<\/p>\n<p><p>We know that Artificial Intelligence employs massive data to train the algorithm for a designated goal. The same goes for image recognition software as it requires colossal data to precisely predict what is in the picture. Fortunately, in the present time, developers have access to colossal open databases like&nbsp;Pascal VOC&nbsp;and&nbsp;ImageNet, which serve as training aids for this software. These open databases have millions of labeled images that classify the objects present in the images such as food items, inventory, places, living beings, and much more.<\/p>\n<\/p>\n<p><h2>Artificial Intelligence (AI) Image Recognition<\/h2>\n<\/p>\n<p><p>If a digital watermark is detected, part of the image is likely generated by Imagen. SynthID allows Vertex AI customers to create AI-generated images responsibly and to identify them with confidence. While this technology isn\u2019t perfect, our internal testing shows that it\u2019s accurate against many common image manipulations. It&#8217;s there when you unlock a phone with your face or when you look for the photos of your pet in Google Photos.<\/p>\n<\/p>\n<ul>\n<li>Back then, visually impaired users employed\u00a0screen readers\u00a0to comprehend and analyze the information.<\/li>\n<li>Hardware and software with deep learning models have to be perfectly aligned in order to overcome costing problems of computer vision.<\/li>\n<li>In this article, our primary focus will be on how artificial intelligence is used for image recognition.<\/li>\n<li>The conventional computer vision approach to image recognition is a sequence (computer vision pipeline) of image filtering, image segmentation, feature extraction, and rule-based classification.<\/li>\n<li>Despite the size, VGG architectures remain a popular choice for server-side computer vision models due to their usefulness in transfer learning.<\/li>\n<\/ul>\n<p><p>For this reason, neural networks work so well for AI image identification as they use a bunch of algorithms closely tied together, and the prediction made by one is the basis for the work of the other. Image recognition comes under the banner of computer vision which involves visual search, semantic segmentation, and identification of objects from images. The bottom line of image recognition is to come up with an algorithm that takes an image as an input and interprets it while designating labels and classes to that image. Most of the image classification algorithms such as&nbsp;bag-of-words,&nbsp;support vector machines (SVM),&nbsp;face landmark estimation, and&nbsp;K-nearest neighbors (KNN), and&nbsp;logistic regression&nbsp;are used for image recognition also.<\/p>\n<\/p>\n<p><p>The software can learn the physical features of the pictures from these gigantic open datasets. For instance, an image recognition software can instantly decipher a chair from the pictures because it has already analyzed tens of thousands of pictures from the datasets that were tagged with the keyword \u201cchair\u201d. Image search recognition, or visual search, uses visual features learned from a deep neural network to develop efficient and scalable methods for image retrieval. The goal in visual search use cases is to perform content-based retrieval of images for image recognition online applications. Other face recognition-related tasks involve face image identification, face recognition, and face verification, which involves vision processing methods to find and match a detected face with images of faces in a database. Deep learning recognition methods are able to identify people in photos or videos even as they age or in challenging illumination situations.<\/p>\n<\/p>\n<p><p>An example is face detection, where algorithms aim to find face patterns in images (see the example below). When we strictly deal with detection, we do not care whether the detected objects are significant in any way. The goal of image detection is only to distinguish one object from another to determine how many distinct entities are present within the picture. Image-based plant identification has seen rapid development and is already used in research and nature management use cases.<\/p>\n<\/p>\n<p><h2>Can I use AI or Not for bulk image analysis?<\/h2>\n<\/p>\n<p><p>However, with higher volumes of content, another challenge arises\u2014creating smarter, more efficient ways to organize that content. In this section, we\u2019ll provide an overview of real-world use cases for image recognition. We\u2019ve mentioned several of them in previous sections, but here we\u2019ll dive a bit deeper and explore the impact this computer vision technique can have across industries. For much of the last decade, new state-of-the-art results were accompanied by a new network architecture with its own clever name.<\/p>\n<\/p>\n<p><img decoding=\"async\" class='aligncenter' style='display: block;margin-left:auto;margin-right:auto;' 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cku8QfYRnJydETPo0aNERo0aNERo0aNERo0aNERo0aNERo0aNERo0aNERo0aNERo0aNEVPPMiRvnuZHVFbkhzby2kllx3pocBmXAOKl5HEHOCfZnVvo7oScg9h3GqheQl3fLc1lTTDvU27tpPTkOcGnP4ZcHqrVkcUnwJ9gJ1b6fvR2x20RVtu1XLO2jsC977l27OnKnx5FRqEaFGlyFzX24SWhz6LbpYQWo7TZd4hCAApWCSSms3J5OMKNXJD8W7o7chFQqVTky6VcSfckhtyXISHXG\/+DHOKeullCmVZUw42jK2Sq5rotil3fbdXtWsB0wK3CfgSw0viotPNlteD7DxUcHStWNkbFr865nas1Pfp94tOJrtJ87UiJPdXCEFT7gThzmYiUM4CwjCEK49RKVgirvcuq7E0mfRLFl2lXJ6WLjfgPGgU+ruSKXUBS\/PS+lcFpTin1NvMKCkq5FTrjoUVtOkeG5KX5JMJC7brtsXA6l2aqhP01qkXBI92Jaky5AedZabV7pOAxpj6Zy0vFLranEuhzCtXDS9tqFSlwZUqr1epTYdXdrQmT5nN12U5GcjEqACUpQGnlJS2hKUJwniABjSLVtodrLMp1PpDm5dRs6Ew2uLSorNViQY7UQN8PNkMKbDTyUBaClxxDjzZCSlxOTkiZrwru0lz3Y1tNeNOcq9QZhCsOQ3aNLkQWY0hqYwlyRIS0YzaXENTEJS6scikgDPHSzbd37AxIcbbmnU245qrjkyGpEGq29W50x9xHmqHVVBUtlbyEBEqEnnKIR0ltAHppAGPdt\/YDd+1I0ipXqiVZkelxoUy33q0wYCGklbbbcruXW3OS+C0dVPNTSEuBfHGsoLE2vqNTZp53kqEmYYoqkuC3XYiUzYLamVh5UZtAQ02AppKn2ENKUh4BbigpOiKtd5r88lfYGFLg3lAkvUuozHbUuyqPyKlMeYZqkILcTJlr6i5b6kQ4SVN9UyWoxZWkJaQgKzudgqjcVz0Gu1W4ZEmXUDNnPPxK1ENCWgSlpWmfge5zbjb8lDakOstOoWtLYV1lhxyrVrbaVOrxrnqG4ctdCcnOXFGaTU4yaSxKaQiIp0PBIV3Lp+5lwtlxalcQvGOFzWnsSt25WbirkGSxufBp8KpQlVHkJ8MJMdnppbPMNKStQUtJxx5KKkhJIIqtozXkyVXcQ2ZR1XEJDblNcFCjUCpQkURYhe50JK0tstqgKQ20y42+6lElJVDUh\/otx0Ns8C+PJwr1PtpuGzeS4sqBLrdJmsQbgj1CoRml05pxSlhKZs9t3z6ATzDqHuAJKiz6tn2tY9hkOVKm3IuuSWHyzKm+esq+6ocZX01IYSllop6LQ4IQjOVFQKlqUcY15PNnKAmTK9X6hW2ZMOXErkqQy5OhuRQsMqaV0uAVh19K1qQVupkPJdU4lZToiqG2rl8i2l1evVKj0msRo9jRlefSnKfW1QaQISY9YdZSlSS3GfC4zb7zCUoeW9Gc6yFOZCrwtKyNsqzWGN0aJQas1OekSJLSammoxA1KVzZdkinyuKWZBQpxvrdFLhaWUhXTXg+o7QWo3Rl0imu1GmrX13VTYMjoyfOXkyA7K5gY6ylS3llWPv1A47Y1lbLsem2RAkQ4M6dNdmy3JsqVMcSXHnVAJyUoSltCQlCEhKEJSAkdskkkTCrwPzarOiU33Gs\/a6kC3hQRBXBje5XnnnXmHCnPJ836wJDvTxw6gJ5cc+3VmHwOdVJBkQrY2y22lPUNFFiUiNEdXTY8wTUQm2qW8Swh8KIeCAkpDnI8+IOTnOscv6UWH3i2+pF27nWfWLutWFUaZTWJIpspCnW5LNRA84IWtpaV9MNRVFCQFpLncgFKc1JX\/fjZM2qzaREj29RKo\/Sa5V4cCI1GXTZ8yLIiJkrW+4202UFuET1BguR8nh1VqSw3DRN8dzt34sufPptp0unrXHg09Ut2qtKLTbTzsl2Mltls9RqT5m7ydUUhTiWyQrmXOVAZ2rulpyqzoTkKoREirQ0xkx6eunJdSyXWGVLWpoxnHmFuFS+K25LhJPTbSjIirzZt3cKXbYpG4riKfDrNvuQobr1BTTZVVEIvOuxzHDhREH8IcSloJdLrLTjoWnJCdkNrRnb+lk5yUO5J7\/8qvVbyrjoF0O02bR3mle6lWrdWiJcUlJcixKc9T3H2cffoW6tpSSPvkOhXhpqty5JVt7X0d6DT0zpklZixI63uihx5bywAtzCuCAMqUoJUQlJwlRwlWP\/AKx9EVd3Bt8z6TrtvNdl0t24JPmEZpw+cFlymulTSHHmWFkSl9Rr1w62lIS20Cri2F6tTZenv0ex2KG9LU+ikSptLjBRBLUWNLeYYbyAMhLbSRkjJwSSdI9Ao0zdExLxnTYSKtLp8WbJp8mM5MgsQ5GXYzCAFtEPthCVF3IOXF5HFaQnMbd1Z207rlWE\/U5cuLKkSltqnIShxmogJkSEpIPrMvokCQ2Bkow+kkAIQm8oni2f4x3b+UmP1OPpk0tWwf8AwjuzJ7+6LH6nH0y6sj4RVt5StOqVY8njc+j0enyZ06oWZW4kaLGZU68+85BeShttCclSlKIASO5JAHfTsm4KdxGFveH9Gd\/Z1itzZlRp1i1mfSag5BmMRVLZkNobWptWR3AcSpJP\/SSR8mgWhXsd9zLj+jU77LrIiy3vgp38976M7+zo98FO\/nvfRnf2dYhdoV8pPHcu4vmMandx7R\/xXWItagXhPgvKqu5dbU8y+psOsRKelDiSlKuwVGUcpKi2TnupBICQeIIm73wU7+e99Gd\/Z0e+Cnfz3vozv7OsT70K98Zlx\/Rqd9l1j6DT5VzUuNW6JuvXpcCaw1KjSGmaapDrTiAtCx\/BfApUlQ+QjREze+Cnfz3vozv7Oj3wU7+e99Gd\/Z1ifehXvjMuP6NTvsulzcSl3Zb1oy6vTdzrhTIZdjJSVRaaRhchtCu3mvwKOiJ598FO\/nvfRnf2dHvgp38976M7+zrDt2hXggD0mXGfnj077Lrl70K98Zlx\/Rqd9l0RZb3wU7+e99Gd\/Z0e+Cnfz3vozv7OsT70K98Zlx\/Rqd9l0e9CvfGZcf0anfZdEWW98FO\/nvfRnf2dHvgp38976M7+zpeZotRkTXYDW6dfU8yooWjoU3kFBKVEY819gWg\/+8Nev3oV74zLj+jU77Loiy3vgp38976M7+zo98FO\/nvfRnf2dIG5VMu23LZTVqZufcKZAqdLjZVFppHTfnMMuD\/ivtQ4rTT70K98Zlx\/Rqd9l0RZb3wU7+e99Gd\/Z0e+Cnfz3vozv7OsT70K98Zlx\/Rqd9l0e9CvfGZcf0anfZdEWW98FO\/nvfRnf2dHvgp38976M7+zrE+9CvfGZcf0anfZddEu261DQHHdzbgSkqQ2CpinAclKCUj\/AIp7SQP7Roizvvgp38976M7+zo98FO\/nvfRnf2dYZm160+Cpvc64lAEjIj03xzj+i6X7+pN2UGhxZ9N3PuFDzlZpEMlUWmkdKRUI7Lgx5r7UOKHyZ0RPPvgp38976M7+zo98FO\/nvfRnf2dYkWhXcfhMuP6PTvsuoXadeQkq9JdxnHs82p32XRFl\/fBTv5730Z39nR74Kd\/Pe+jO\/s6wzNr1mQguNbnXEpIUU5Eem+IOCP8Aivw9tcZFs1qK2XntzrhShIyVGPThj\/8AS6IkxtmVL3a3IrvuePc6RYlAiNPzWltRHnWpVcU62XFAAhKXmivH3qXE58Rq3kABCQPDA0nOWfU6vGkRHNya+8w4lTLiVR6apKwSUqSR5r38CD8515oW1cqB5l0t0r3c9z+oWutNYc5cxhXU5Mnq\/IF8gn+TjRE+aNVLdlh1i2qJSpNM3VvXqRKrAhJU9MjulxqXOYZd6nJk9Q8HVhJVkoOCnGBrMsbTy2kR0p3WvsiKh1pvnUGV5SsqzzyyeahyPFSslPbiRgYImy5LWoN30xdEuWmM1CnuuMuOxX08mnS04lxAWnwUnmhJKT2OMEEZGkS7doYk8UKLQGaYy7SKXUKZHqlYge7MuOzK6KX+DklwuKddQhXJxxTgUQC4l0EpPvY2llMBARurfJ4RjF7z2TySc5Ucs919zhw5WPVwRga7DtXLKQg7qXwQIZg\/8dj92\/53+o\/1n\/O\/6z\/a0RV3A8m2fQF2M7Zd++579gya9Lp6JlOcfjSzUpJXmUy1IZ6vTZdkoGCAXHA7gcemrprvkoUKoqUqgVVmhvquhN0ZhQVst827fcpLMbi0+giOgrS50gripsKZUkhxSy90zb5muRXX6Zu9ekhltD9HWtE9ghJZdU06n\/UdnUrbUkuD18gjkdcK9YEaiU5U2s7x3tEjyPNKSHF1FhIK3Xm2WEJPR7OLdW2jmMLUVYJOToiXzsZV49URe1MvCExdSq+9cbz3uU8aY7Lcp8emqHmaJSXOn5rHzxXIWRIV1cnilvVe7heS5Wr3uWBaDEOkUy0kzn6u\/VIsBlt+O8ugzacx5moOc2nI78pp9llTJS2GuoJPMBkXcjayRNjvrTutfAbnNoSrp1BgAJTjCmyln1CcAlScFWTyJydY69rCrEOmPSmd173Qup1GkxHunLjI4trmsNK6fFgdIlKjko48s986IvDtP5PsSxLQqtiXNcb92UKoRI1P8xqJlSGvNmkKQW3PPJMlS0uIKUraSpEfinCWUcnOVoUK36ZbkQwKS042wXnXglx9bpSXHCspSVkkIBVxQgHg2hKEICUJSkKMnaaVKEkObqXwPO1Nqc4TWEYKPveHFkdMfCEYCv5QOutzayZMdf6u6l8pU9IRJXwnsJAWnwCeLI4J9b7xOEntkHA0RWJo0g+imYc53Vvgc5KZagmbHSOoPAJAZwlvv\/qx6h7ZGpXtZNIUo7qXxyVLE3tNYADgz2A6PZvv\/qv9X4eroie1\/eK8fA+A76pKVR7dqWze3lCuJqJTaIuJT2JqKXV3URo7Cqc6jpsS0Oc1N9wlLgcPJJB5HOdM7O3S+uhDG7N7KcTMVK4GfHI6gKQoEFjugZH3M+oP5vfWVo23Mu36TDodHv8Ar0Sn0+O3FiRmYtNS2wy2kJQ2gea9kgAAD4NWSNLm0EVU3Ra2x1AiOVy3avOrVakvsxUIkbh1XH3d1ptxxa\/OHChKUhK1EJOQ0B8GlO+rEoNy249Fg1i34cwsrhYG59YfWmM8UpkALUQk5bTkBaFJ5JSSDjBuiNS7rO48u21bnXEYbVEjzkjzam56q5DyCc+afAhOmVdp11IyNy7kJ9g6FN+yap\/ieyLXGy7Tp9Vo8Tcmr7oN23clSpbEtdEp78Z9htxyD03WymU0p5Djjrr61pQpOVuZPNYUtVg0Gl7d1e0YFIvq\/wCWxIgS33kRE1w01yG4FuJCR5sWnMAKUMLJPrHOe2Hmhx\/fMy8\/Q93q7MaYkyYbimmqaeD8eQ5HfQf4J4oeZdbP+02r4NZUWhXAPwmXJ9Hpv2TVvS++rZV2VLzrT2XtYQqPY1VdkpcZ5OKl7n1mK000wG220BxDzpK8LSEoIAKUK79tKddcg23dMN+Migz41cqVL6k+Ndk2ZUKOhlzpvOCY4Q4G1NPAJbSlAwqTyWEkAbK+9GufGXcv+BTfsmldcS5WbuaoPpOrC2nkKQlpMenecBxDYcccOY2OkkOMJOE55Ppye4Au\/wAT2VF7tqm2Uybmfi3RMuCNIqiXGJklbK\/VEZhJbSppCEqSlSSMkFX85ROrA0ri0a8Ug+k25P7Y1N+yaPehXvjMuP6NTvsuqsaWiii6t1vweV7\/AO5q\/wC0abB4aSN7V1Vvau5F0SNGkTUwVFlqQ+WW1qyOynEoWUj5Qk\/Npfq24m7FDq1HoVVtbbmNUK\/JdiUuMu85vUlutsrfWlCRS8ni02tZ9gA+UavRWq4krQUg4PbvpCi2puJS4CY1Nr8FSloYZ4vrWW4\/TcKlvp4oCnXHeRUtKiB2SkHGVHCt37vku65NqjbixQ9Gp7FRU8bymcCh111sJH\/Bmcgs5PbHramgbibuXUy8\/QLQ2\/ltsqCVLTd09IIUMoWnlShyQsYUhacpWkhSSQQdEXltvaTcehQqzCq25NTuJirSHXFNzKxMjuttJkv9BDUhkhcdRiriIWpoJBciKXxUqQ6vWb2a27u3bS2qfaNXuONU4NMp8KEy4gLB\/g8VmMAlCs9NBEfrEclevIWnwbClqzm9m5NNsmjX9ctqbd0Ol1qIxMaXNvSYA0hxgvnqKFLISENJcWtZ9VCG1rUQlKiMpN3C3yiXdSrP9G1irk1WBNnodF5y+DaIzkdCgr\/gzOSZKcY\/mq8NEVuDOBnx9uk3eD8H1Q\/9fC\/W2tYf3073qm+5jdk7dql8OqWPfrL6nTBAKuPuZnAJAz8ukq9Lz3muTbqpS5Ng2XAjIqogFQueoSXFOsVMMYS0zS1LXzcbAAAJ9YaIr+R96NYm66NNr9Cn0mDVJFPelxnGEPsPLaW2VJI5BaCFpP8AtJIUPEEHvqupm4O98GlU2rDbayVsVKTFjNBV2zmnEl9aUpUtDlLSpGCrKkqAUMEEZGNel6+942K1Et1yzLAFRnR3pbDAu+cSplpTaXF5FKwAC82MkjJUMZ76IvPQNqb+otKrFLnX3OrTVVdk5TKrc9DrMcS5BitsyErLrCxEcitLdQeRXFKyFreW5rKUawb\/AKfSITUq+VO1dFLTS5c8uPLSvpoSluSlpaijqqUla1Egqy9jmpLYCsPH3J3sdn3FCVtrZaRbjqG3y3dk95TvKOh\/7mhulqWohK8cQCSR2B14fTJurLsKrbh0Sx7FqNNpMeouvJTdk9l3qQlOtyGShylJUhxDrDjZSoAhSFA+GiLOWXtte1uXHDq8i5AIDER2IuAupS56lBaIYDi35B6jzqfNVIDrhKilalHBUUi0UggYJydU5cu7W5lnSqfBua2dvIMiqK4xmlXfPWojqNNFauFKPBtLkhhCnFYQlTzYKgVpzkH7z3zj12LRHNvbD5yocmaF+\/KYEIQytlKgf+DPEl9P9x0RZrej+Iw\/LdD\/AO9YunrVBVm6N3d1becpdt2tt+6Gp9Nm9T32VBPUaamNPodbC6UnqMuBlQQ8jk2vCuKlcTr2DfDcOLQaLX69bO3NEZrdJcrTQn3rMbS3GaYS+8ta\/cvgkNtqClEkADJ8BoiZY22N0U2vV6vwr0qzzkx1tylsyq1NdjxCvPnJUwpZaUCVEoRx4oACUcB3HG2duL5o9JjIqN7S5tShuvJaW9UZLzXTdWkrcWVELcUSnqBtZUlvKmmi0jiUYKm7w7qVxVNFEsixJSajNkU\/1rsnsuRpDKFqW2805SkuNqHTI4qSD3B8DnXb6YNwxAhVVVB23EOfV1UGM6bxnAOzw+uOWE\/8Fd1dZtaM+B4nBIwdETFBsK8oTwnNXSvz1txxIdkTpclDodSrqPlpSw2hRX0lpYCS22G1IQUhwlOHjbX3+xTYLcu5lVB+n1NyoMsP1yeGchfNIWtXNx5C\/WHSeLiGS6FNghhpvWOb3j3TapzlRrFmbfUtlFe97japN6TB15ipPmzSUAUwk9R0gAewZJwASIm7y7otNuqgWZYE9ceowqc62zeE4HnIloihaSaWAtCXFKClI5AKacRnklQBFZ9m0i4aNTnYtx1lNRfMh5aHUjGUKcUoE9hgkKHqj1UgJSM4KlYzdf8AivC\/9o7f\/wC94mkKrb5XrQotSmVal7aRmaTOVTJil3lO+5SkxhKW3gUrKiiMS+vGQhtDi1EJbWU4fdS\/d2YtDqzVx2zt3RafbBo9y1CpSbymdFqO1UC8QQKZnwhLHzqGM+GiLYYeGvJWJ0emUuVUZSX1NRWlPLSw0t1xQT34pQgFSycYCUgk5wAc6rSq35vRSWHy\/ZG3apTMF+oJiJvaX1nGWQnqKSk0wEhJWgE+AK058Rpcr+9d\/wACniLXbbsSDJlwIk1MZu7Ki5J4S30R4\/TS3SVFS1PuttpCQo81DsdEXqte0dzLraFacveoUtBNcpwV58syYizNeQObKcxHljikhzgC0Wwls8FLCmm4rS3EuBbMpc6nsLhvLdjxmarMaZcJaSOT3BIDoyFoDS0qQnqdbCloQgLFtXnvJEFLoMHbmzkNP01+oh6Xdk9hXFtxtLhdQ5SkrC1KeKiSkeBJ7nGvbTd1tzqwKCaZbG3kg3PAVVKUlF3T+UmIlLalPAe5WUoAeZypWAC6geKgCRPljUC4LfgSI1w101R5yS+426ST6i3nHBnIyCA4E8QeKUoSAB3JZdUjS95t0Z9NtubKsuwYL92c0UuE7eM1T8hxDDj60JSilnkQ0y4rt\/NA8SAeiDvhuhWJsWBRLDsuU+9W1W\/JadueoxXYUsQFTgl1t+koWnLAbUPV7h5BGQc6IrK3M\/i5E\/8AaChf96xdNIBLeB7Qda6XtvFd8+gU4yWNsYzD9aadbeN4z1A+5lTa87UcUv1Gm3Gumt5WG0FxsqUAtPJlqG7u6FEektV+z9v6Yhisw6A07JvKYlMidKQwWGm8UwklS5KED5QScDRFnK1t\/fszoppt5PtCPMS4FuVKSlTqOqp3qkIwApCllIZIWy4hIQoBJCU+d7aq8okqe5Sdwqw9GqUd9iWxMq8oqd5qacCmnMkxFFfniOUcI4IlI4ACOwhGCf3q3QNJqFWpll2HPFODLi2UXbPbccadXwbebC6UnqMrIVweTltfBfFR4nHGpb73tSILlQqVD29YaQ90EJVdVS6sg9Nxzkw2KRzfbLbD7gcaSpBQw8oK4trKSLOWltRd1qQnfM7uKJrkqeprMmQ9FYaky5cnqFlavu7wXKSCpw9w0nuO+cXX9lr2uC3KNR5N08nKTWKfV2kv1ee+2hUOoszAhalL5yg70A3l8q6OQpsEpwrrf3m3Vi1aTT3rIsFUdilwao3LYvGa+iUmU6+20hlLdLUtxRLBICQeXIYzrtqm8G50GEqVGtXbqetdFlXBFbi3rMcEuGwG+bjaxS+BSS80Ac9+YxkA4IrJsijXBQLcg0a4KumpSYDDcUSsqK30toCOq4T\/AC3OJWoeCSviCoDkrr3A\/wDEcX8t0b\/vKNqvGd4dx1KdZk29ttFdjRPPJAfvSYhLLYQlxQUs0vgFIQttS08spStCiAFpJwdybp7n1pmnU9u0bDbjyB7tGSu7JyQyKbPhF1hbaqWHEulToTwKeQUkpIz20RbCaS5tpXCivVCXQpsWHHqkdQkSVPvF\/qhCUtgN\/edsE9TlyweOPAhLc3j3DZFIVIoG3TCa68qNCU7d89tKn0qCFMrKqUA04HCG+DnFXUIbxzITqKXu\/uhU6gKMLOsCPUFSpcREd68ZuVLYedaxyFLKQpfQdWlBPJSELUAQheCL3q2rveeigRZd5T4EKjS09SPFuGouOSofTWVIdkFaXXVhwsJ5LKlFLClFQLy0DuTtruKi5ETm9w5aKYxBfgxWTNfcUy2XCW+olWUyFqSWwp5z7sjogIXh17n4a3uhu5RGw67Zm3TyW6g3TZZaviUfM3VoDn3X\/gz1MNqSsg9wlQPgc6xp303CMun01u0LOdqFTS+tiE1XKwuSEMFkOrcZTRy40lPnUY8nAlOH2lA8VpJImu07CvSiVWnvSq6G6bDacZVE905M5agpTK0qW7IBW84OmporcJUU5cHFbhCLJ1Ryt6d1I9aq1CqFh2RGepU5ENSzdk9xKwqOw+Xjwpai2ygSG0rdXxQkqSFKHIZ9VX3Y3cptNueaxY1hzXLSjreqTDN3zuTa0x\/OAzyNLCQ4WihXHOQlxBIAWnJE4xvwzT\/\/AGXifrcjTFctOnVaiSqfTpao7zyOIWl1bJI9qQ42QtvkMp5o9ZOcp7gao5q\/d00XxVrqYtSxpgiU1ilPx4Fx1SW4FokPEqQlqkqU4kKK0KUhJSlaFpUQpCgPbA333JqSUz4Nm2HJpUii0uuwp8e7Z7yZseep8Rwy2ilFxalJjlQSE5IUO3bRF57c2A3MtKzLttW3NzVQHa61VnabKbefW5TpUqoVGe04FuFSlqDlSShx0nmtMNBxydPTYoW0l+0tdRis7h1KdSag624YUusz+q10n5HANy+oX2+TC4SVhKsKVCUSCZLyz5U7xbiPV+mWxGoO3L1RrMdqXBQzd89xt9lxt5xtaXU0ot4WiNIUjKhzDLhTkIVjzU7e3cmZAhzJdo2FA86p7VQV5xds9LbQWyHg0p73K6XWDZ59Llz4evx499EWXs7azcW3\/cuo3BuVOr9TpVHp9NQXp0pqI6+204zJkusJVxeU4C09905K6iVgLQFAp88fZ29YdVl3JCveS1U5aVQwh6oyZMZiOpKy68hK\/X6zziYyiCri0hhtDRSEqLvhd3k3YPmTjW39nqZlGSHeVy1Jp6L0Gi6sOsLpKXkqKACElGVBaSBhSSeuNv5d0yZSqfGgbZuSK0htyKgXlPyA4pxDYd\/4K+4KW4w+2hLvAqcZdQkFbakgitCwaDW7ctmDSa9VFzpMZkNlS5bsooGBhvrvfdX+OMB10lxXitSlEksmqLjb5bkFcdmrWlt7SpE2rzKNEal3nMT13mJYi5BFLwkLeU0hJVjK32kD11pSWGnXzvHVpNSh06zNv33qRKEGalN4TvuL5abe4EmlYJ6bzau2R62PEEAiZt1yBt3XiTj+Bq\/7RrF3\/to3c99bc3vAp9N88tCuyZsqU8jEgwnaVPjFlpYSSQX5TCykkJIQT3KQD6N8Gn3NpbqMac9DeRTHltvMhBWhSU5BAWlST4e0HXrFk3ABgbtXWAB4eb0rsPoWiLHxcK3hqvJvj\/4LwMpAz\/8APJZxgfJ7Ncdv7QrdNq1WvC7qTToterLcRh5NPqb8qNGjMdQtR2g400EoQXXVFQQC4t1xRCAUto7UbYTm629cKN0rrFRfitQnHulTO7La1rQnj5njsp1ZzjPrePhr3e8m4fbu1dhHweb0r7FoiriVYs3cvyerOsldHj1OiVe1YkWrMG45tFdU2YaAEpfiIUtaFHkhxpWEqSrvnBQtrlMyY28FkNS3+s43bFdQt4o4Baw\/SwTxHZOSCcfL8mvFcVkV2wts6l72d1bqjt25Qnvc9pUelrSgR456QJMPKgOKfE5OPHWRi7ZVCozaXdU3dG63KnEguxmHizTAENyCyt5PEQ+J5KYaOSCRx7YyckXO1bNvyjbj1m6azc1GqFKrIk8mGaY\/HkshK2UwWg45IeSpttlMjkEBpKnn3HQ2C6oDxwKI9cG3k+nMUlipOJuyfLTGkVJ6C2ssV917KnWULXgdPl0+JS5jpr9Rajph95VwFWTuxdZH80x6Vj9T15KZttUaPFXDpu6V1stLkyJah0aYo9R51brhyqGfFa1n5M6IsROpFeo1l0Om3PWk1WabojvBxLIbSxHdqSnI8UYAKwwyttgOkJU4GuaglSyAPWDcir5mXO0YKVT6nCkIqSHVtTI0COwlBgKQhvElpS1S1gOOBLa5q3Ep5toKsvUNtqlVm2Wp+6N1vJjyG5Tf3GmJ4utqCkK9WGM4I8D2+HWF26ot4XHZdNrdT3cukyZSHFOFEWlBOQ4pIwPM\/gA0RdS411TZm7kaxZUWNcLykopD8skR2pppLIjrcIQshAcKCcIX2z6qvA4Kj7Xt7L+SNM2zRIRIcoVkz2JspIUBLnKjOuSZHrZV91eW64cnxWdPMPbGdT59QqcLdG62pNVdbelrDNMPUWhtLaTgw8DCUJHbGuVY2zqNfpE6hVfdK65EGoxnYklro0xPNpxJStOUwwRlJIyDnvoiwm5m2dRvm4qVVgz1WqaWxGUiryKe5EV5w2t5aksJInsuJbZK4j5DKjGSFJUVZbYavEZmX3SoUljk0\/b9XZcRkjkFPwQRnx758c+3OfbrAWNRbxr0Oqv1Dd26SqLW6jCb4RaUAGmpK0IB\/gfchKR31nHNuao5UGKsvdS6zLjMOx23ejTPVbcU2pYx5ng5LSO+M9tEWF28s7cekX1dF0XzcqqhBq0aBGpMJTjDyoIZclLdJdZiRvVV50hCULDigGSouHqFKFKdtR7+tpLGqlvUW3HbgYoEDk7V4pdZloap73m8aSEjk5H67\/rN5A4uPccKV3s\/3lXD7d2rsI+DzelfYtKti2dcEZ+vWtF3UulmnWzMi0qntpYphKI6afFWApSoZKjlxXc98Y0RddJoNepV506qXLFgxpdduWXPUxDlOSWmkopQjI+6ONtqJUiMFkcMJKykFYHNXquLZ6kTbVodCo1vUaI7blbp8qkqRGS2mnwWarHkrZjkJ+5AsMJSEoAB4pT4DIzMvbapzpkKdK3Vuxb9PcW7HV0aWOKlIUhXYQ8HKVKHfPw69Zsm4F5T6Wrrx8Hm9K+xaIq+NgN37aklpuFTnajRNyU1uG\/MRyLHmtabeeLSglRS4qO282CMZ6nEkJUo65XPaleaIr9y0mmwlIrdv02mMUyqSHmWYSK3GUgllbbaEPLASVrSP5LbeSlvmv3U+yq7b+4KLVpW6V0swKjTp9akJ83pilKlqlNclAmGcA9Vfbw79saZattlUK5ERCqm6V2PNNyY0xA6NLSQ6w8h5pWRDHg42g48DjB0RLd07SP1ChXTadLtqnu0a7607LqEeNXZdCd6DsVsvLD8JsuFx2U0S4nKQtLzilqUSpteB3J2qqe5VgX\/ALVVR2nVyu1HbuLTGKjUIyW2V1NbVSablcEpUGiHSF8kAlGfV8BqzveVcPxt3Z9HpX2LSlW7TuOk7g0AQ91bpSuvsvxZrhj0wlTcZtxxkJ\/geE4U84cgd+XfRF01W1d1Kbctz3HU7zos60KhRKsFU5FLWxLjvdOKmEgPKcc6jaENzlKx0wXJBPBXIFHRO2nptxwqFXodpUacXabDlTW3ZDkEzZjT9KejPOvMIUtZaFORgK5cg2hsgoUcOkzb6sVCI\/Am7q3W6xJaUy6gsUsckKBBGRDBHYnuDnUQdvqzT4bMCJuzdiGY6EtNp6FKPFIGAM+Z5PbHc99EWAplrrfrse2L1jRKqxUKFXWpcR9PnEZUSROaUIqg4kBbaWXA1gpAKU44gdh0Dbe+26z57DrVOYeekUYiqoaxJiU2F0y9TQ3w4voePnuHlrStHn6ilOWGwWNe21ScqjVZXundZmssORUO9Gmdm1qQpSceZ48UJOcZ7eOO2sNblGvGp3PdNKk7t3T0KRKisxuMWlA8VxW3Fcj5n3PJZ\/sxoiXrWsL3yWttJeNNplLdqVqrkSS\/IHB4xnqdLYUw24lClJSt5yMpSeww0FYUpKUnB7P7QV3Zu1tuqFelUp9Wu6tXrVbhuqqwY\/Rbn1WbTqm884OwKggKQylZCSUMt+qj7xNqUbbGfb1LjUWj7o3XHhw2w0y2GaYrikezKoZJ\/tOidtlUKnKp02duldbztKkqlxFdKmDpvKZcZKsCGAr7m84MHI9bOMgYIkG79gE1m2afaNHpNLgRqYqqM096FKdhopjEqV1Gmww0gImRg3w6kF0iK6WG0rSvihSPXe+2w3HVW4cSmU1dRo24dt1yNJlo9ZhuG5SJUnpL4kpcWyw6gYxyKwCQCSM5TKLeEu\/a\/b727d0eZ06BTZLAESlBQW8qSF5PmfcfckY+DvrNxNuKjAkTpMPdG6mnKk+mS+ejTDycDSGgRmGceo0gYHbtoirCp2JuHbNPul64rqVMtZumwYVu0ha2XVUzjKJePWaisKKC2IiEpcLyx0VkuErVnKM7X37SrjhXzTLTsl6p0tKKfCpzk+Q1BhUtmPJRGZhhMYpiOoU+EqdDThW28+jASllKHiq7aVCu096l1XdK65EZ7jzR0aYnPFQUO6YYI7gHx9mvX7yrh+Ny7Po9K+xaIqzpNrXPb9zOW3bcej1CuUOyrbiMvznHGmGlJfqLLr7akoWoL4F3AABPLBUkHOmCv2BTrV2\/qcuLTUNy4lmy6VKlvSXJsx9CEKW2hyW6Oq+EqXIVyX35POEAFatZ9va+a1W5Fxt7oXWmoyojMF14M0z1mWlurQnj5njsp5w5xnvrsqe3NVq9OlUmo7q3W9FmsrjPtliljm2tJSoZEPIyCe40RLDdqXlUXIVZ97NvyWKFT1O23HXWpTTMmY7HSS\/MaTHUhKuoVoSQHS2lS1jmp0obxKrPrVMvCkpNHo8+5J1Ir9YW3Uag+\/DeqHntJcaXycQpbSG1NN9NCUnppabSk+ry0y7c2zc9V29tiqSN2bpS9Mo0KQ4ER6XxClsIUcZhk+J9pOso9tlOfrMWvvbp3WqdCjPw2HS1S\/VaeW0pxOPM8HKmGu+Mjj2xk6Ik+dtNc1WVbkGtRm5ESkVNqvrdTc9SSsVH3RVKeU4ylAaltH1Omy6EoZI4thKQhSZt22rorL6lQYNMiUiLX6zUm5CJklD0ioidMaSqVGbSlL7LY6ag2p311JbVlBaTl895Vw+Ppbuz6PSvsWvNT9t6lSY6otO3Sutlpb78kp6NMV90edU64cqhk91rUcZ9uiKtZFi7hQLSNrbo1O3LxYlXHBZpyfc4xWZUQwmEPImNrLuVOyky1rBU7lLo74PSRkXtpLpkGRdMqj0x29JrFUaXWUXHNbTBVLZhN5ixwzw4gQIuEniUmOF81LedWcnRrOr921O4Ydb3Vul1u3ribRB4sUxBQURIzyVHEP1iFvL8e2D3B03myrgP\/pausD4PNqVj9S0RVbXLGqm4Fb3LtNqj02TSKzVEU6uGRPdiSXoDtIp4diNONtLKEPhJS6sFK0pRhHrrS61216xr6tuwK+qqVinmFFtCuNVREZoFVcqb6Q77prSpCRFUFCWSy2VoPnxBOGW8v9O2ul0qbU6jB3PutEisSESpiy1TFdR1DLbKTgw8DCGkDA+DPiTrsq+2tSrtJnUSrbp3W\/CqMZ2JIbLNLTzacSUqGUwwR2J7g6Iqs3m2V3Z3Xsi8rfo8yh2vV7jhC1YM9NUlSmKfQXJaBMUIpYQ2ZD0VKsgcRnpNhwBsvOMblpy6Nd0+3tuLeoUdyg2rbUWkNSh02KYy29VWMs8G18VoYUpCAEgYVg+qSC9e8q4fjbuz6PSvsWlSnWTXPStcBTuldIcNvUcKdDFM5KT5zUcA\/wADxgZOMDPc\/Joi89C2eqtIvugXNIlyZEahxo8SGFXDOUY0VunrjiO80rLdQWHnHnhKfw8OuoADiS5gqDtjUrvodmVGZSKWKZRqdT6zSjEnuxpC6wmnoaamScMKDhQng0hC1KQEgrWh0hpDVoe8q4P5W7V1kfAY9K+x681L24qlGpkSkUzdW7GYkFhuMw30aWrg2hISkZMMk4AHcnOiKoaftxufb0txNZuBiuV67LinVFBlzlRVNQvc6JCU2ZUGNGWl4x4q3EONsIU046hH3TpdVeZtTZW8rOWKPSqXbZo02oQKhJmyKjMkVdox6i\/MLS5Ljalzm+JaQjrKbWHHJLilOFeDYcrbSfNnwqlL3SutyTT1LVGWWqYOHNPFXYQ8HI+HOPZjXr95VwnsN3Ls+j0r7FoiqqFYdbv2nLguU+JJplOvSp1Zt8V6ZBejT49acdaWqMyhTMxCChKw28oJ5tJz3VzbuO37eiUFyoIptMiwo82Y7O6MdoNpLrp5vOqSkBPNx1Tjij4lS1KOSo6wlI2vnUJh6NSt0brYbkSpE10dGmK5PPOKccV3hnGVqUcDt317veTcXxt3Z9HpX2LRF0b0fgouz8kyP\/8AQ67b7q1RobDMqmJSt6S42wFONLcbY5vNt9dxLYK1NthzqLGUDi2eS0JytPTvSpKdqLr5KCQaVI7k4A9Q6zAZoC62ivrnsmQ3HXGRiYoI4KUFHLfLgo5HZRHIZUAcKVkiqCFu\/uCigxrmr9nobpSJU9id5rT5jjyY0WRUeUpuPx6gQuLT2yhA5LW5NbKQOCUv9dG3f3cVeMShVjaGtNRJ8mnpkKbchOsxTIjMKeZS6uSy6oRFKcU44hiQHMEDpeAvQVSlDwqEUe3\/AFqfr0e6lK\/p8X\/FT9eiKuXK1cdy+TfMuW7obMOs1ezn582Iy0tpEV12GpZYCXCV5Ry4EqwSUk4TniMjuJHr0mwae3b6pBe86pnXZircakSI\/nDXVaadbdaU0pScgr5cQkqyMZI9u6VUph2zu1KJ8Yk0GeAA6nufN19vHWdpNUpfuZESqfGyI7fi6n+aPl0RUdt7vXu1dUCDIruzVTpsqpXCimRkvtCN02HkRZJdXxW8ECPEcnhalqAdfhpb+4PPiM10tb3btMwbONS2iqtTmXM41LmppzCW2qawtMH+D\/wh1opdCZzhJKlnlEfwgIDjjGwRqlKPjUIv+Kn69HurSvxhF\/xU\/Xoi8NoP1+VQWZFyMwWZjjjyktwwsISwXFdEHn36nS4c\/YF8gOwBNWR7muq0dj6VXbRoDdZlxI82Q7DWtwKeaZalv9JsNpUeo4tltpKsEJLvPi4Uhpdxe61LH\/lCN\/jJ+vSZs9U6cjbaiocnR0qDbuQp1II+7L+XREm3HuRutbDzEGZQ6XMlM1yjU58w4UspqMWfU0R1vRhyPRVGirD7qeTyAT3UhICltu1d1XxcC3o980enQpTdMp8sGnklrqvM8321Ba+o2ttfqhC205QEuJWorW0w7+6lKHhPi\/4qfr1PurSx4VCL\/ip+vREjWbNl060rrqECmPVGTGr1bdZhsLShyQtMt0htClkJClHsCogAkZIGsBTtzL3k1SnUZVoIqzU6oppy6rEiy4zDZU1EkHKXmxxSI7k8FwLKOtDQySh54MIZdr6lTU02uhc6OM3LVz3dT3BmOfLpy91KUfGoRf8AFT9eiKhdkb\/3Tvu5LarN+UqdSW6lbc2dIgiK7HisuvRrfktNFKwFdRtUqY0Cv1ipD+OI9RFr2V\/Gm\/vy9H\/7rhaY\/dSld\/8AhCL3\/wCdT9elKy6pTRdF+lU+OOVdjkZdT3\/4MhfLoiQJ+5+7seFVKxH24YqEWDXE01ins9ZqZKjLrbtOQtCl4bSek352XFHiEYHZLvVbc9vLyuG46wuHUoiTHjsLV51HhSo7DqlNxnEpAktJPJHXW0eClDk0vkEOBbLL17q0o+NQi\/4qfr0e6tLzn3Qi\/wCKn69EStJ\/DLTv\/Zib+tRtReN3SrfvG26Ulv8AgVSZnLmPL7NsJaQjgtRx6uXFoRkkDLgHckY88mp070xU5fn0fj72Zo5dVOM+dRu3jrPrjW6u4BchmMGYIghclTCUhrmVkJb5cEkqwSoDKuKQSQlOCJWsS6L1rNWqLVco7MKlxZsiIwtbbgkOqSELSs5CUhsBRSOyisnOUlB55K7fwh2P\/wBOpfq+mn3UpP8AT4vb\/nU\/XpNuupU5e4VkKTPjkJXUcnqp7fwf59EXu3ArtTthin1CmQfPVS6pChSEFGUtRnH0IfeUQCQltpS3CewAbyo8QSKNurcrdui7wM1ih2xXavRqjaUL7gwlpUCDIXIecXIWiTJisKXxQlr\/AF6V\/dUH1gAk7DKaoLlaarbs9ovsNLZbAmqCAFEEkt8uCleOFEZSCoAgKVnIe6lK\/GEX\/FT9eiJR2yrl13L7vT7lpsqlNN1GL5hT5TCUvRmV0yE840taFFLqkyXZCStJKcpKQTxzrwQ6y\/b9Z3QrMWAqa9Acjym46Q4S8pFOaUEANNuOHOMYQ2tX81KjhJfvdWljwqEb\/FT9ekyzqjTU3xfilzowCp8EpJdT3\/gLPy\/DoiUbe3Ov+sV6q0edQYrkCl1aFTmJrEN5pFdae6KXXYgW5ybEYuKccUUuNrRxCF+qpwebYncPc29KvT0XhS34TCqbJfmtvwuDiJa4lFlJZKghIR0HJ8+MEEciI3rlTja1G6fdSk\/0+L8H+tT9ep91aX4+6EX\/ABU\/XoiT4K3W9zL0cYS2pxNGo5QlxfBJVzm4ClYOBnxODj4Dqpa35St\/0IKnO7JXE\/SoVGm1CbMkNMQWi9FhTH1ryl99SG+tD83BCHGldZp1EhaFMiRa9DqdOG612rM6PxVSaOAeqnHZc35dMtcbti4qLPt+suQZcCpxXYUuO46OLzLiChaFYOcFJIOPh0RVLcW6G41NohrNKtRdxOMSBDWmn09Tacu+Zqbk4mPR09NrrvNOJ6uCUKUVs8HkN8KNulvFWk0mS3tpEoLdQo6K1IiTkyi\/HDbNOckQ1L6aOMhZnPoa5oBSqAeSFF5Qj3QipUpAGahFJHYHrJJx\/frkarSj41CKf\/xU\/Xoioe19yN1GbQobMS1F12YxBbenIchzGZhCIcxRi85SW21SnZENoBZXxSJKVLSElhyRY20133PeNFfmXVbEmiyY0xyO2l5MVAkt8G1h5tMaVKbCQXFNnDyzybWTxzwDl7q0r8YRf8VP16DVaX+MIx\/\/ABU\/XoiqalXZcdubb2G1b9JE9arWjS+h0VqXMW2xHSiE0vKWm3nS6opW4sJAaXlJSFuN4+8dzNy6dWKKug0ZUuF74J0ebTo1NkmT5lHplYW2h1amzxL0mFCUhbaPB9CQHErQt2wNqqlTE7W2e25OjAigU9Kgp1Pb+Do7Hvpp91KV+MIv+Kn69EVO1S+dw4lchqZpAqHm0WqhBjMLRFuEtqp\/SREy8Wozrin3mkGQ6DmO8sIU0VOow9j747wVev2DRbj2enxmbrpMWp1SfHYDcamqkRJMkIIW6XUqZWw3HcStsAuPJJW2VMsv317qUr+nxf8AFT9ep91aX+MIv+Kn69EVWP124rdg3zPtSmtzKk\/fFJp7aHWnHUNNykUuO68pKCFKDTby3SOSQen3UkZUMLbm9d71C1Il1VPbSZB61Laq8yjIjS3ZtNYSYq5CiUtFMhamZDrjTKAl5SoxbCFuF1Ed7sKp00V2\/CqdHANyAjLqe49zoXy6cfdSlfjCL3\/51P16ItfapvhvM3Xve6nZKpRHkOUeK7PdSmXEjPS3qcmTISW3kuvNNJnyE\/c2wkqhLw4R1hH9tL3Y3MqTNMerVqsUBdRhUqtIfVFnusRm5kOe4uC+ltoEvtLhNtlZU2OUplISXAhp+9fdSlfjCL\/ip+vR7qUkeE+L\/ip+vRFr9Td9t6HH7eNV2PqrSa1cEqnvNMJZV7nQ26x7njrK65UXUskTFONNONLbOE8W0uSEW7SSTupXiTkm3aP+s1HTJ7qUr+nxf8VP16VKbU6cN1bgWZ0cJNv0gA9VODiTUPl+UaIk3f7cHcuzmU+jqhO1KSzULf5QmoZekVRmTVG2ZbEZayllktx0rUtxzklKX0qUpoISpWKszdndOs2y9UK1YkiiSI86cUyKnGSETG0MsyGY6GYbshaXF+cOR0ON9fCoLvNvqrTH1eRqlKV2VPin53U\/Xo91KV4e6EX\/ABU\/XoipC2d1t4rpemxXdq36EuLDXUE+7D7KEr4jPueFw5ErL4ICS6otqAcDnQIb6buJi31u9S90blk1KKmVFj0KkNMU1qHK6E2QKzWorkiJlRS0vzdEN95OHT0w2nkE8XdbC+6lK\/GEX\/FT9ej3UpXh7oRf8VP16IqvtLcncmVuSqyLo24ktxYsBHnVbhdHzByV5vHdW60p2QJBYK3lsJT5ufXaJ5nDgatpKuSQr4deX3VpX4wi\/wCKn69T7q0v8Yxf8ZP16Ioq1IpNep0ij1ymRKjAlILb8WUyl1p1B8UqQoEKHyEawQ2q2vAwNt7Wx+R4\/wCxpp0aIlb0VbX\/ABb2t+Z4\/wCxo9FW1\/xb2t+Z4\/7Gsbuffly2dItil2lbVOrdVuerOUthmo1VVPjtcIUmWpxbqGH1fexVAAIOSodx4640+\/6xb1Jk1PexNm2YlorcZXHuZUtlTCEhTi3HH40bgU57gBQxg5HhoiyL20m1UhpbD+2dqONuJKVoVRoxCgfEEcO41zG1W147Dbe1vzPH\/Y0g7h+VdszZdu0W44W5lmVBmuVGnxIo98EZCVxn6i3DflpOTzbYy8teO2WFpKkYUQ0u7\/7FM0mJXnt5bIRTKhIXEiTTX4oYffRjm2hznxUpORkA9sjPjoiyvoq2v+Le1vzPH\/Y0eira\/wCLe1vzPH\/Y0wtVCBIfMViaw48lpD5bQ4CoNrJCF4HfiopVg+B4n4NKtxby7SWi0X7p3MtikNBqM9zm1VhlPTkdXoKBUoZCxHfKT7Q04fBJwRen0VbX\/Fva35nj\/sa4M7SbVR2wyxtnajaE+CU0aMAP\/g1kKjfVk0d2ksVa8KLCcryw1SkSJ7Tap6ynkEsBSsunj3wjPbvrG7k357wLfh15unGemVXaHRS2HeAT7o1OLB6ucH\/ViV1MY78MZGc6Iu30VbX\/ABb2t+Z4\/wCxo9FW1\/xb2t+Z4\/7Gsh787P8AfIbN99dH98CWBKNJ8+a88DJOA50eXPhn+VjGvDR90dtbhuWdZlBv+3alX6YVibS4lTZdlx+B4r6jSVFaeKiAcjsSAe+iLqb2l2rZCktbaWqgKUVEJo0YZJOSfvPae+ufoq2v+Le1vzPH\/Y1l6pclu0RBcrVep8BCWFSVKlSUNAMpUlKnCVEeoFOIBV4ArSPaNeZy+LLan0ylOXdRkTa0krpkZU9oOzkhPIllPLLoCe54g9u+iLw+iva\/4t7W\/M8f9jXBG0u1Ta3HG9s7USp5XNwijRsrVgDJ9TucJA+YDXbVt0NtqDckGza3uBblOr9UCTBpkqpsNS5IVkJLbSlBS8kHGAc4ONJFY8qTZCh34uyKru1ZEIxYz65r8i4ojZiymnkNqiuIUscV+sokEgjgrt4kETr6Ktr\/AIt7W\/M8f9jR6Ktr\/i3tb8zx\/wBjRT909s6tdMmxqXuDbku44aSuRSWKmyuY0AkKJUyFcxgEE5HYEazNcuGgWxSZNeuWtwKTTITfVkzZ0hDDDKP5y3FkJSPlJ0RYM7SbVF4SDtnanVSkoC\/caNkJOCRnh4dh\/drn6Ktr\/i3tb8zx\/wBjXqtbcCxb4jJm2ZeVFrsdZWEO06e1IQviEFXFSFEHAdaJx4c0\/CNdtw3rZtpUyXWrquyj0anwClMuVPnNR2o5UAUhxa1AJJ5JwCRnI+HRF4PRVtf8W9rfmeP+xrgvaTapxaHV7Z2opbeeCjRo2U58cepryPb4bNMUZu43t1LURSnmn32pxq7Hm7jbDzbDq0ucuKkpeeZbJBxycQPFQyu3t5TezdnrtcPbnWcW7ndacZddr8ZtKYDjbykzk5V67PNnhyBCSVH1sjBInD0V7YH\/ANHFrfmeP+xo9FW1\/wAW9rfmeP8Asaw167wUCjbKXPvNZk6nXXT7eoVRrLPufPQ4zNMNhxxTSXkBYBKmigkA4Ps7ay14bsbY7dJYG4W4ltW2uQ246ymq1RiKp5DaSpakBxQKwACSQNEXP0V7YfFva35nj\/sa4I2k2qaW443tnaiVOkFZFGjAqIGAT6nfsANMb9Sp8VhMqVOYZZWtttLjjgSkqWoJQAT2ypSkgD2kgDx1hp24u31MpVSr1Svq34lMo7haqM1+psoYhrGMpecKuLZ7jsojxGiLo9FW1\/xb2t+Z4\/7Gj0VbX\/Fva35nj\/sa8u4+5dJsCw5N+B+mzIraWjH61WjQmZCnFJCAJL60tJBCs5J7gdgTrNzLutWlxVS6tc1LhtNMNyHHJMxptKG1khC1EqwEqKVAHwJBxoixadpNqkurfTtnagccAStYo0bKgM4BPDvjJ\/v1z9FW1\/xb2t+Z4\/7Gsgu9LPRXYtrruujprM6OuZFpxnNedPsJICnUNcuakAqSCoAgZHfvqU3laK7lNmIumkm4EsedKpImt+eJZ7fdCznmEdx62Mdxoix3oq2v+Le1vzPH\/Y0eira\/4t7W\/M8f9jXru+\/bI2\/pqKxfV30a3oLjqY6JNUmtxW1uqBIQFOEAqISo4HfCSfYdZCm1yi1mKzOo9XhTo0hluS09GfQ6hxpwEtuJUkkFKgDhQ7HHbRFhPRVtf8W9rfmeP+xo9Fe2A8NuLX\/M8f8AY0h3v5QRtS+51mxbebntxE2qRMRMwFLrFfXSXEYCCMsFAcPfJJKTw++08VrdfbS2azEta5Nwrbplem9ER6XKqjDUt4uuJbbCGSvmrk4pKRgHJOO+iKWtpdq2GkMMbZ2o222kIQhNGjAJSBgADh4a5+ira\/4t7W\/M8f8AY1i7N3itG42YsWr1qkUWtz6pWKbCpMipNCVK9z578Ra2myUqWD0OZ4pPHlg\/Dplk3laMK4YtozLppEeuzmlPxaW7NbRLfaT98tDJPNSRnuQCBoix3oq2v+Le1vzPH\/Y0eira\/wCLe1vzPH\/Y0yPyo0VtT0mQ2y2gEqW4oJSB8JJ0iUjdqFUb0qtnSaU\/HMOtKo8OYl1DjUoppkSeVnBBR2lLQOyhlgkkc0jRFlG9pNqmlOLa2ztRCnlc3CKNGHNWAMn1O5wAPmA1z9FW1\/xb2t+Z4\/7GvCvezZ\/zyp0pO69oidRmXn6kyKzGK4LbXHqrfHP7kEck5K8Yz30mWX5W+xV106oSpe7di0yRDqVRhoYXcsRRcjxpLjSJIyoeo4hsODxAChhR++JFYPoq2v8Ai3tb8zx\/2NHoq2v+Le1vzPH\/AGNI21PlS7PbmUyU+3uPZsaoxqhV4\/uei4Izr3mkKW+ymURyB6bjLAkZxxCHB3IHIvttbmbdXlSpVdtG\/LfrdNhHEmbT6kzIYZ9Xl6ziFFI9U57nw0Rdfoq2v+Le1vzPH\/Y1wG0u1YdU+Ns7UDi0hCl+40bJSMkDPDwGT\/ede2n7gWJVXOlS7zocxXBl37hUGnAUOuqZaOUqIwt1Cm0\/CtJSMkY1lV1SmtOvsOVCMl2K2l59CnUhTTauXFahnKUngvBPY8VfAdEWA9FW1\/xb2t+Z4\/7Gj0VbX\/Fva35nj\/saydtXdal504Viz7mpVcgF1bAlU2Y3JZ6iDxWjm2SnkkggjOQex1ltESt6Ktr\/AIt7W\/M8f9jR6Ktr\/i3tb8zx\/wBjTTo0RK3oq2v+Le1vzPH\/AGNHoq2v+Le1vzPH\/Y006NERo0aNEVIeUtAjOSttqtWKLds+iUq71yqoq12Ko9Njsqo9RaQ5wpiTKU2X1stqCfVIcHPKcjWNqFKtq4Lq2sbt\/b65pkGjXW9KefrlLqCTA50eoFuWpcxBWcOttN5JHFbyDkKKQb5nT4VMiOz6jLZixmElbrzywhCEjxKlHsAPhOsVTL4tGtSHI1HuWlTnGmmHliNNbc4oeUtDSjxJ7LU04lJ9pQoDw0RUJdVt3UhG4kRmg1ZUN\/eCy6tTUIhurQuIl633JTzSUju2l1qUtak+qFJdUrGFnTdWH07dbm3Ld1wWRWa3HuenUym0ybR6Q\/UngGQ+DT3W2W1GO0FuKeDrnFkmQsLUgoHK33qrAjofXImMNpio6j5W6AGkd\/WVn70YB7n4DryWxdltXpSW6\/aNfp1apb5UGZtPlNyY7vEkK4uIJSrBBBwfEaItftrKHfGzT0l+o7cVurKqdtxmaVEpLcZSoSm6hVJLVGUrqJaZTGYnRWEOqWllXBeFpAGuPk0bQ1W1Lki3DedsFisQbKjWizIejdRUZmFVqlybakFCctutORV9kpC0tNKKR2AtK1N6rdqtnVu97uep1p02h3DW6E\/IqVSQ3HSIFSfhB5TrgQlAd6IcCT97zA5KxyL6KnANOFXExgwy11xIDg6XSxnny8OOO+fDGiLVCvbUy7RvW87blOXnFtC4KVTqNb1Jtq1Wquy7SWIIaXTVyX476IjaXjIKWni0yBIKkrJW4EXBf1IrMvZ2jwmKHVBPYn21KdgqUZkpvoVKG46lxbfIOKQltXNacg8VKGR31YHvwtrqzI5r1ND1Pa84lt+do5R2v\/pHBnKE478jgfLrzL3BspFqG+zddFNtJjmUawKg15l0R4udfl0+P+1yxoi1ltiyrgj1Bm2blTuVOqsa+HrgVS6dbcaBTlKXUlOpnLq62MONlpYWtDcpL62iphTfdTOmK0oldZqVr0a2LWu6BJoNY5T7arlEbeo9GYc66X3odUcjtl77m4sNKZfdVxdQ2ttCSsN39bF72le1DauazblpddpDxWG59NmNyY6ykkKAcQSkkEEEZ7YOlOpbzwIFevqgimxgbLt2n3CJcmpNR4spEszUoQp1Y4sALgLBWokYWD7CNEWJvfbWDd+\/23121y32qlTbYt+4EtKkMqcbj1F6TSVRne44cwhmTxJ7g+skZTlNWPbRVe2toPKMRSLEfaqj9UrFVtBqLEzJdLEFqTB80CAVAJqBeW0lI7OqWpIBPe5lb3UWTP2yRRIKKhA3NekNxJjc1tSYyG6e9MCj0+aHMhgoPFeATkKIHdvot7WncdTqdGoFy0mpTqK8mPUY0Sa287DcUnKUPISSW1EdwFYONEVB1enS7etncTbSubY126Lgv+qVaXDfYpbrsOrNyQDG85nJBZiCKyWY33dxCgmGCylY4JNkUukVykbjWZDqTkuoOxbLnxJlS6Cy29JQ\/Txla8cUrXhxQSSCr1sZ4nTzcl22xZ0H3Vuy4qXRYPNDXnVRmNxmuazhKebhCck9gM5J1Xl9eU9s7YF1Ui067uJZ8STPfW1NEy4Y0ZdOR5qt9px1CjkBzihKeRTnqJIJ8CRJLcS4WrnYp1o0a8GKhBvBc9+hVqhtyKGyw\/UXVTKhHqTkYHk4w89IbS1JUtC3ENFoDmgPm6FNqHvwsO4pdBmVe3aFImvzI0OOqS5FmqZSmJMLCQVuJbHnCMIClJU+hQGElSc3dW7FDodiU\/cChLh3BTKpUqRBivwpqFMPNz58eIl9DqQpK0p8459vvuOARnIztCva1LodqDFtXFS6s5SZPmc9ECa1IVEkcQotOhBPTXxUk8VYOFDt3GiLXyn23dlQl7jbhUWyqraFdpFzC6bbFWUhhFRjmlxWJTDpQstpZleaO8kqVltamXnEJcQAOvbqnzZFStLfu4LIqchu9U1e55aIbK5iqdJlIhNUpTkdBUsOopcdMdS2gUocU8ThLpULYq+5+x+4FPuTb6VuFa9VaNPmxq9Bh19vrR4owzJ6pZWHGOPWSkqJQUlY7g417qBvBtHNcn0ig7i2vNeostinzY0SpsLXCfcX0WmVpQcoWpwcEpPcqBSO4xoioja\/b2uT\/KBpd5XDs\/UaNTaVMvWVTV1Rhp1dPeqJojzTyFIUtCFPZqIyhZ4kvIODzSHV+3qlbsaBSINCqUWnxN01TGgzFdcBjzHHH3XuKUniyX5bwUs5QBnJCQQm0rX3Y20vakT7gs+\/7crVLpbimps2n1ViQzGUAFEOLQopR6pz3I7d9Zm27moF30eLcNsVqn1alzW+rGmwJKJEd5OSOSHEEpUMjxB0RLm8dImVnaG9aRS4r8iXUbdqMVpllsrdcWuM4lKUpHdSiSAB3Jz7fDVQ3LQJcygbqW\/U9orhrdW3BiCHG6baenOhuUthhDZkrUlMNDLnVCm3FIUFdRxCVKc72nb289rzbPn3vdk6mWrTYFw1m31SKnUm2mS5BqsmnpUXXOKQXVRgsI8R1AnKsZOUuzdnbWw\/c83vftuW+KqopgGp1ViKJRGM9IuKHPspJ7eHJOfEaIq23itu4txPJRmUdukVIVedQ6dIXA6LqZYcbWw8trgB1A6OCk4xyCvl8O6Xs1QYnlBWBcdEsWExRKJZ9ZiKdYhtojQ5bUmmppyUoAwlaGHqolo49RDjwTgKObZuK54Nt21UbpmJDkSmRHJrvB9psKbQgrVhx5SG09h98taUjxKgMnS+je3aVdwQ7UTuTawrVRekRodOVV2BJfdYdcZdQhoq5KUl1l1sgDIU2seKSARa4otm9LfvduqP0+77Yte16tc1MpEihWt7rupRLlxpKFtxug84004HHm0OoYWhKY6kFaEqSlWe2o2ViQ93berlVsWuuUqk2nVI9NeuViO7JjS1VZbnV+4J83jKcalO9JpsILbJU1wbAU2LDo\/lb7BVevVWiDdyxGvMpLMaG7754ihOK2ULPTHLBKVLKCElRyPYTjTpSt4Nr65XKrbVI3DtmZVaGyuRUoTFWYcfhtI+\/W8gKy2lOcEqxg+ONEVD03aiZYXk5V9FD25d98VMvmpVulw48PMl5qNcLvuYUcEqUEinNxm0Adks4TgJynWOtqxa9BmtW5XxuRNq0K9XbjFJpduRYNPUs1JTiJiqstgpW0WlBakNykvlkqYLXdTGtrZFXp8NxLMuYwy4tlyQErdSklpHHmsA9ylPNOT4DkM+I1hLL3P293HakSNvr3t+5WYTiWpTlIqbMtLClAkBZaUriTjsD4\/NoiS95WUxq3bFzOUq6Yyaciaz74bZhKnz6YXgyAz5imNILzL3E8ldNXTUw2cDJWiuK03fG0tmPb40y2FzKpb0ybHlUrzaLTJNy0aRMWtC3G0FLKJokPKktnCVr6rqC227JUhO0esPdNpUK86czSbjhedRGJ0Ooob5qSPOIshuQws8SM8XmW18T6p44UCCQSLXibtZclnUmiwG6bPqc9uk0yZVn4sVx1qTVE1+POmODiFHLjr0h3j34pBI8DrqvylVqPtjddnQ9pLqqtzSbql19x2PHKm3wxVfPY03zrkA6A01HDUdBW8ODbPT4pJG0Y7anRFqciyIUTb7d7b6k7F1lqv3TcVflw6g3ASyitTJMl1+NN89BywGFvICXXShSehlkLwka8jljXhCql6UW7ZO4NXqNaup+4ItKoluxUxqkwh9tcArq78daGlNJQwjCn2XWgwemkpQha9vNGiKl99aHS61UbVe3Bs2ZdFgRhOTWaS1R3qu2qatLXmb78JptxchpHGQOyFhC3GlkDjzQl2Xt41Esze6jbX7XTbLFSfle9Zg05NLC+vRojRcipKQI6FvMA8SEkKQOaUkYGzmjRFr4Ue6O6e07tm7SXFSKLbzU6nTZz1N8yYpsZ2nuBEEtEhak840f10oUyCloJcJVjTpsjDqMKj3PFqcCbGWm86880iTHcbJacnOuNrb5AckKSsEKRlJycHxxZ+jRFrRblvXDDsmhyKlatUnU2lbsXRWKxTfc9a3noSqvV3IchLC08nkokPQpSS2CcNpWjlhIOIqNvXncG61yXlE2wr7NnMVO1qrIp8qM2lVfRHTUmXJLUcqzzZc9zZBacCHSmI2eBUW0q2u0aItQ7iki7N6q3clubaTEqbj2NUlsToSYMusMxqnOdXIRHdAfK4zQLgQ62h1SopShOOmo+3dK19xdw61e9bpNk12j0+u0q2ISPOYTEp2ZEpdYfkSl+aKJQQ4zOVxjuq5upaWlTafvV7FyNvLRk30xuU9RI67li040lmoLBU41EKystoyeKQVKJJAyfDOO2mMDAA+DRFSuyMN56767c\/O\/aoKtBhNP1m5aM1RUOrYLwQy1C82jyOSQ4sqdebOQptKVqCQEXXo0aIjRo0aIjRo0aIjRo1h7wr7VqWtVbokQ5MpmkQ3pzjEYoDriGkFZSnmpKckDtlQHy6Ik\/eSmy5KrRrCrffrlJoVyM1CrQmGQ+4Y4jSENvpZ8XixJcjv8UguDolTaVOJQlVET2F1TygazfFr2DVYEKjyrSrtQhJgJjzK1GDVeiKlCKSHSWzIaXwdQl0iCcIyGwdjk3ncDiO+1NzqBPtkUo57\/wD3zS97nU0X67ugNia+bpepTVDVU1P0tTogIdW6GE5m4QnqLKlcQCohHIngnBFTe5sDdG\/LxuSqxrLrtCtgJtR9Acpzc1+ZHhVOpKkviKkK6isLiPJjqK3S02j7kHFdE2rsTTW2q1dNytO3xP8AdxuA69U7jpTNJRJdbS8goZgpZYebUhPALdea5LBaSFrS2OLj78K\/3\/8A5T3N38fu9K+2akXncQzjam6Bn\/6xS\/tmiLX+9LWuqkbhQLsel3JSrfpFWuVapNKthValpky1xVsPNMBp5aQUKkth9tlwISXEKKQ6rVm2DajjGyVatKJS7gisSkVdEUV1EduXI84U6vrFmMhKGErW6opZDaChOAUJPq6cvfhX8lXonubJ8T16V9s0e\/Cv5J9E9zd\/+fpX2zRFQdubGwHrB8mpmVtwwhykzIsy6mnoYQtJVQpj7i5oUOS1GqtwXFBzJ84S2pWVJyMrdFCqVL3eqk5G2U2pWhQrgpF4SPNoinPOJj9Pmwnn47IR93cjqZhOrbQVK+6c0pLiEhd0e\/G4D47UXP3GP9fSvD6ZqPfhX859E1zZ7f8AL0r2f\/3miKg7rt33+XTMv2pWFWG9sapOpSrjo8ygSRKrjMWFUf4U7TOl5y4nzl+lNlt1oLUmD66VNITmu5m18aBvBU7j2m2wrNh2Ix71anLVTbDKUyHmW68lT7FMLXNTja34YUjol5Ci270iAhZ3AF4V8eG09zDH\/P0r7ZoN4V8+O09zHP8Az9K+2aItabmsO9axFo7u3cW+HKlPuitVFivV2E1T1JlSbUqEdqYGGGmlQWA+YyOTrTa1OqKlBS1hTjbspbi4lyWOXmL8mS7ZpbtIU3LtWNQabRm1sI6rYJYQuUlTjTSQlh59rkhKyTwC9W5W9xKtRKNPrU3ai6BGp8Z2W7xfpeeDaSo\/\/PPgB17ReNwDBG09zjHh93pf2zRFWG9VDr7O8VBvWRWblp1BjW9IpjMmg2z7uSGJbshCnU9IMPqZDiENZcDJQQzxWpHqhfZa9uLoFK2apdOoFzxolOuKoBbVXZbXKYjKp1U6a3xGT0GEKKm+CAEIbC22sJI4CzDeVwkhR2ouckeBMildv\/1mj35XD8VFz9\/+fpX2zREseVJaTF67DXXQXrZfuEebtS0UmO11HZqo7zbyWkJ9qlFvGCQDnBIBOq03Gtaq3sqOrbHbeuUA0i0alTJ7aI6aO6+w8GQ3R46\/VSV5QpSHm1FpopSUr+6HV5G87iV47U3QfnkUv7ZqBeNwAYG09zgf+vpX2zRFr5vZTl3xElwbL2cuRmM\/trdNrtTV0VcZph6XEaeZh+bdnFevASkK6fS5KQhC1Kcxp+3s2Usi+7KorKrDiSE0eRRILEBMPmhNKTV6bKkw1MD1FMqRBbCkqThIR2wM5sT33174prm\/x6V9s1y9+NwfFRc\/+PSvtmiKr\/KQ20nVFVuXZZ8d2C9FrVNVc0iBTRUJEmjw0S1x2kwiCJRZlyWnkoCFKQUlaErUlKCybEU1uLNuurMsXc+K5KjVB+q3DS2KWue\/0Q0S3DQyy43wbaZQVvNJWvAGVBAw2G8rhPjtRc5+d+lfbNAvK4UnI2oucfNIpX2zRFrk9bF10S9ody1Z67aLSYVTvNiPKpFrKrEll2ZXVyEL836Ly20OslJS+llSClshS0c0hzK29QGLH9xQmjbrW4lylyafDrbNMYq8yWlU+Q95nMhx4r7MNkBSXWD02kNtvFo9Hh0ze5vCvqOTtPcx9vd+lfbNHvxuAHI2nuf\/AB6V9s0RV1c9Cvaf5Gl1W2LWaj3Kqw6tT4FHgw22sOiG83EZTHaUpttZAaBaQpSEqJSklIGli0tsF0vZK\/mpFhLj12TuDX7sZaajfd50huvuzadJy2CpZ6bcXj4kJSAR4jV2+\/O4gMDam6MfB5xS\/tmj343CBgbUXPj\/ANfSvtmiJWapcmp3hupRn4UlqPUadASw4qMsNu9SK60otrI4rIKE8gkkp7ZxkZR4+0jFyeSPalOd24ji66NYC2abSHG\/MSxPk0ZcZ+KtKgEthzrLbWHAUgkKUOSQRcPvxuDGPRRc+P8A19K+2aPflcPxUXP2\/wDrFK+2aIqV3NbuDci6KXWqds\/cNQokO1bit+ZFqaxT\/dM1CI26YiQeTjSeUBDSpDnBIW+2Gy8FKUjP2HU6gi+4deaN51qkR6VIhTJtyWd5pPhPKksBmMwtEVh91CsuKcIbdbAaC1OjAK7K9+FfJydp7mz8PXpX2zQLwr4GBtPcwA9nXpX2zRE3IWFjIBx\/265aUBedxJ7Dam6B80il\/bNT79Lj+Kq6PpFL+2aIm7RpR9+lx\/FVdH0il\/bNHv0uP4qro+kUv7ZoibtGlH36XH8VV0fSKX9s0e\/S4\/iquj6RS\/tmiJu0aUffpcfxVXR9Ipf2zR79Lj+Kq6PpFL+2aIm7RpR9+lx\/FVdH0il\/bNHv0uP4qro+kUv7ZoibtGlH36XH8VV0fSKX9s0e\/S4\/iquj6RS\/tmiJu0aUffpcfxVXR9Ipf2zR79Lj+Kq6PpFL+2aIm7RpR9+lx\/FVdH0il\/bNHv0uP4qro+kUv7ZoibtGlH36XH8VV0fSKX9s1j65ubV6BTl1WobW3UiOypCVqD9LOOS0pBIEwnsVDwB0RP2jUJzgZGDjU6IjSnu0M7W3fn8RVD9XXps0p7s\/gtu\/8gz\/ANXXoiakpSBgDGpwNA8NToijA0YGgkDxI0ZHwjREYGjA0ZHw6hSuKcgjREHiPHQCgjIOqJr3lBXW41PetWz6AYCqzNtyDPqVwIZWZsZ5cd5xcUoTyabdaeJSl7mpDZOE57eKFu3uDY1Qq9IqBXudFgJU7Jl08RIcqmPNtpcfYeRyQgoCHGlN\/wAr1iFqVkEZBE8i1qOzoGu6C7dbCYB0YGvLSqhHq1PjVOIsqYlsokNFSCklC05TkHuDg+B7jXr1jW2ljc8D0aXaceFDn\/q69MwAx4aWd0PwaXb+Qp\/6uvTMPDREYGjA1OoKkpxyIGewzoiDxHjriFIV4Edu2qZrHlEMV3dF7ZTaCkpua4qYrNx1IcjS7bRgkCS4kjqSFEYTHQQo9yooCTpvVtxIqbaXLtva4ak6lxToTGmKpzKc9+AbjFHJA8AHFLOPEnx0RPBUgdyQNRybzjIzr5Gb+b2X9thvBeFmek25aQujVd9EBESaqLyi8uTJUUY6nqKTknOSDnWb8nX\/AEoF80m8o1o7w1uHX6FPdS1Hq8xDUVcdR9UJW60lKAjJT660nB8SASpNvV5WcY73DqC+rWBowNYS1bupN2w3ZEBam34rnRlxHgEvxXMZ4OJBOMgggglKgQpJUkgnOauWBRga4lbY8VAfPrkfDVabzXKzSIMClTauik02YXpdWmKkJY4QI6Qp1IcP3gWpbSFKBBDanCFJIBDlWveGN6inKj3jaVw1GfSaDcVPqMyl9Pz1mLIS6qNzKwgOBJPEktuDB9qFD2azHq6oTYOtybhvu6KwuIaXAXCh02m0p2OY8iG1EkSwovNEAtlwyElLRHqths+K1BN8laE\/fKA9nc6H2Vsby9ocVyJQO5IHz6gLbV96oHOqOuK96ve0lyq0y5pNFs6nBTgficWlVJsJPJ5cg5WhjBCmw0W1qCQsrLawNPO0dNrsK2lzK87U0uVOU7MjRahIeeehxiEpabUp4l0KKU9VSFqJQt1xAPFKQMLJmSOLWm65WQgjlPWBowNA8NTrMijA0YGp0aIvBVq3RKBTpFYrtViU6BEQXJEqW8lpplI8VLWogJHyk6xNk7jWLuPCk1CyLlh1dmFIVEldBRC474GS24hQCkKwQQFAZBBHYg6T5EX3\/XvKnVEKdolpyfNafDU0Q3JqSEpLkwnOHA0VBlsY9R1D6u6g2UefYWC3V37v3ZabAYvmsB6nLQQpLtLiMoiRXgodlJeDTkhBH8h9A9g1Dwas3JzX4kbdmDc+\/hXlha0OKtzA0YGgeGp1MBWKMDRganRoijA0YGp0aIowNGBqCtA8VpGPl1hbtve0rFpqKzeFyU2jQXX0RUPzpKGUKeXnggKUQCo4OB49joizeBowNYy37moF1UtmuW5WoNUp8jPSlQ5CHml4JBwtJIOCCCPYQdZTx0RRgaMDU6NEUYGk7dwD3gVPt7WP1hvTlpO3c\/iBU\/nY\/wA9vRE4Dw1OoHhqdERpT3Z\/Bbd\/5Bn\/AKuvTZpT3Z\/Bbd\/5Bn\/q69ETWPDU6geGp0RU15Q26Fw2caLaVly4UGtVxEmW9UpjYdaplOjBHXf6ZICllTzSEBR45UpRyEFJR9l9+rij3iiytwrvp1xUisU2RUqLcwSxFPOMAuRFfS3hokNKLqVJCcIbWFDwOmDf\/YO7N274o0yj3ZHolEfpjlKrryWyqa3HDweSI2QW8uEFCufYAA4X97rVjygtprN2lup20Lenza80zRo9aNPqzyOMWa9K8zZcKmUI5IcQ5JDiFeqeI5BSTx1njaxwIPK0Z3TMf1j9IWy0zyyKdUZciRt5tdcl1UCAtQlVltbMRt9CcclREPKCn8Dl990wceOCFauyyL1oG4tp0y8bYlqkU2rR0yGFqSULAOcpWk90KSoFKknuFJIPhrRfcnyV\/KIs2NHu2mV9q8VQiFmPRG1xpMEfCzGUopcQOwKWylRHYNK7jWye38hjyaPJlp83ctYbk0SK9JmR2FBa1S5Ulx0RGvYtwuvJaTjspWMdtUkYwAdBV8UsrnESCgl\/yotkttYe2m4O7MmNUW59EolQuOPFaqr7EJVTjsLeZfLKVBBX1kIXj71SwFKSokkqW0Vq7GVil1i89ztzSZlar1Sfm0KoXUYtNCkSFspCoYcQhaVNNN8g4FJVgZHs1Wl91uh3gv3z+UvVRVahLIfhWg0txyBSWQrk235sCEKeAOFvPAKUSQMABIVEbp7RU1QYomyNGTGR2TmNGbP9yWlY\/v1nbC9zKtaEkkDZhI0Dg\/yR\/RfR63LotK4GFG1LipNUabA5eYS23ko\/6hOPHWc1847Mqm0N4V2O5QKS\/Y91skKp9SpboiPhYIVxQ43hLgyBlpxJS4AUlKgcHcHYTdCq3rEqlpXkqP77bVLLc9xlHTbnRnQox5yEfyEudNxJRn1XGnQPV4k68kJj5UjBktn4Tpuh+DS7fyFP\/V16Zh4aWdz\/AMGd2\/kKf+rr0zDw1iWyp0n33MqE16nWdR5LsWVWeqqTLa7Kiwm+PWWk+xaitttHwFfLB4abz4aq03XSIc7c6\/GPuy7QjopUhIyojzWH56oY+E+eY+XiNE52VeW1uh5IvkrQKvt7btXjUl2HUpL9TixY0qZIXKWsqUp17iorXggesskAAezVi7Nb97feUNTapVNuqlKciUiYIMsSI5Ye5lAWCEnuEEHsr2kKHbGvj7DvlVchzqnV5IkTai6uVIeWcqW6slS1H5Sok62A\/wBGFfsqkeULctmtpccp1wUBUl8oQVJZejPJ6al47JBS+4Mn4U6t6lnMNNJPZfTa4bKtC7KcqjXTbNKrEFY4mPOhtvtkfBxWCPDVIUfyEPJatbdKDuVRtroUeoMkORYodWqBHkoPIPIjEltK\/aO3EFOQAe+tiG5DLqebTiVp+FJzrV7yifLctnaetIt20aB77KlTpKRVQ3JDTMXH3zQXhXJ3v3HgnwJ5erqtLEHuAoFXpfEdNvRXr+p0cmZSGFOy0Mp9aXDR6zrSgPvlBPJSPaFAAdlKBaYE6LU4bFQgvofjSmkPsuoOUuNqGUqB9oI7\/wBuqp2d8ovbHyg7Fm3DZlU+6RmzHqVMk4TKhurSeKFoB7hXfipOUq9hyCBg\/IjvWXenk80JFVDzdUtx+ZbtQjPoUh2K7EkLaQytJGQpLIZyPl1VUra1fJ8NYmr0Ci1hUWVVaTBmOwHOvEXJjodUw77FoKgShXh3Tg6y3s\/s15Z7DkqnyIrUlyOt5pbaXm8c2yoYCk59o8RorTwqJbm1hW4itzLfuS3qVT7jabpceBNhOurqhY6rjUlCxJbSlxxlCzhLSldJtBUVcOKem9tzbwuqZQNtmrGcLly+cKkT6fUoz9PkxmU5Uw2+6W1ZWFJLieny6IeCOZHJKFfG\/VrbQTLSsG+7IrL9cqi26ZIYpUZmR5oAEpbldMuJcdiLAXxeaStKempC+Kxw0w0mqWrSb+teHSYkRqzdu3HW3JNPCExKXIejqjMoUG08eCUPPdTGOkFtLVhHJQzdLXMNKMGRK2QNeOVbFr7YTC5GqF6VBiQqM43IYpsIKEVt0AHk4tWFSFBY5JJShA4o+58kBerHSAkBI8AMa4IcSpHNOCPHOdcwQoBQ8CM61Y42ximhSpcXGyuY8NTqB4anWRURritXEZx2z31y1X+9G8trbJWmLouaHUp5ecUxEgU2MZEqUtLS3XOCB\/JQy066tXsQ2o9zgG172xtLnGgEAvhJW2D1Sd2NTXYsgyqlVolSrKVBJHORJeffAwT39ZwJz2yEjsM6eNgF0RexO3SraVypJtSk+Yn\/AJjzRvhn5eONaq7A+VpsTblu1Si3FudZ8CPFrtR80Q5WWFYpzzyZMVKFcUZShE1LSuYC+bTwwekriobTboVD0m13YnabykmIVvU+orftNuM\/TJDcOC8yh9uIGnIrgmMIdfDKOnLbc44SlKQ3kef6fqDNCky8jLaegnq6gCdr\/wB78+y25GF4a0L6LaNV7s3f9TvS3Xod2xoUO7aFLXTa9DiFXSbfTkoebC\/W6TzRbeQcns5xJ5JUBYOu7xsmLLibNC4Oa7cEcELVILTRU6NGuDquKcgZPsAxk\/36zqi564qzxONUTem\/O5NrmU89sHXIdPpbTlQqVTn1CMYjMBplTrriVMrXlwBCgEHGTj4cazFJ8p\/baTVYNKr0eu2r7ptqXCl3HTlU6LJUEpUW0OukJLmFZ45HYH4NWdV7K4tLQCUu+VLfV32nJsWm2ZdES25laqkll6rVBYMKPHairdcS42rCFrXxSEcj6qvWGcYKfsxXN2vKL2SvOBu1MptJV5+7DtqvU4mO9146jxkp4kf6qQhHB1HHnxV6oAyX3eTcujXBRXLct6kXfVjGr9NYqTlFolRcT5siY0qWlEhhvCvuXMHgruMjv4aQKeu2oLTrbu0VKnKUy46tyZthXOT0wu4ClKWw6SCyEgq5KVySPEeGqMeb80ZjJ8nSAG1sDZJN8m1nZO1kfQGDqsHq7ijf0372ClTyVNrt\/rSp8jc+h7p0m5W6u+8i4bdqa5Ky7UIy1MPITLWpXB5DjSkB3iULSlJIIwRtraO41uXbmHEkiJVI44y6TMUludFcH3yHGsk9u2FJylQIKSQQT49q7js6t0RdPtOLEgOUrptVGnR6a7AEWStAWR0HUIWkHlkEp7j2nB1VO578uVvXSLntt2tXE5aM6MiVRqfbhWiMtbbjbyxUcJSFiPLC1MKcI9VOQCRrZjibC3pZx+6uzs2bUZzkT11HwA0fs0AfwtiwcjU6S2L9rbjKXI20t3qa9bBUqnNEY\/2Vy0q7+ztrutvcaLcNyzbSftqtUip0+IxOebnJYUkMvLcQ2ebDricqU05hJIOEk4xrItRN2k7dz+IFT+dj\/Pb046Tt3P4gVP52P89vRE4Dw1OoHhqdERpT3Z\/Bbd\/5Bn\/q69NmlPdn8Ft3\/kGf+rr0RNY8NTqB4anRFxUB4keGvm1vC\/VtwN5N9ILJC5TNOdj09HipPmaIoCU\/JzQtWPDK1Ht3OvpKs4GvlbuZcFatLygb9qlGmKizmrjqAJKQoFC3CeKknsUkFJGR\/NI8AdbGMOpxC0c93RGD7r6YWRedEvu0KReNEfS\/Dq0JqY0pPfAWgKKT8CkklJHsIIPca1E8oPdam3bcvvofdTIs+zJLka3YiVjp1qtBJQ7Mx\/KZYBU2gjsSp5XcKb1rfTb3aphkojW5HZYqCy5MjU+pVCDHlrV98XWGX0tOZyQQUYPhjWKuC8nb2p7d91it27Q7fi5p1KhmY2xybR2IixuRWpAIIAQhS1nwHEJ5Z2Y4id1Fa0uYZo+hgN915qtVZ9dqcms1SQp+ZMWXXnD7VH2D4APAD2ADXnZYkSX40SMyFuy5LMNkFSUhTzy0obSVEgJBWpIyewzryxpfnaVvNxn22f8Aki+gtLd+BXA+sgf9LCvhSNL9xRHmI8tmXFlzqVMPNa46S9JirCgrPTOeqjkkEJAURlQKSkjjtvcen5FHMaHyBr08XFb1ds246jatyQ\/M6tSJPQktJcCwlWApCkqHiFIUhaTgHioZAOQL\/wDIovS56x5Ra4lVqjsxt+zpjTq3VZUoMSohZB+Hj1Xu57\/dD461gpF20q7A7UKluZb82oJQyzJk1SsxIDzgaaQy3ybfcQrKW2209xn1e+Tk62d8hS3Zcne5V1UeTCq1Ij25UYkuoUyQmXEYkKfhFthUhvkyXSkLV00rKgE8iEgpzrvfcA6yOpbeMzoyLYD02t49z\/wZ3b+Qp\/6uvTMPDSxudn0ZXZnx9wp\/6uvTOPDUap1CvA\/NqmbcWKZvxfO28ijNqpFepsa8FvLyRIfdSmC6yQfVKUphoVj\/AJ35Bm59KF8xZtNdhXrR4C5cijpcblxmk5dkwXOJdQj2laShDiRnuUFP8rOhT6LQ3df\/AEXdalbpMSNo7uptHsmtSFOSY80OLepGcqKGUgfdkdjwCloKcgEnHI7h+Tv5Me2nk3W+7S7JguP1GoBJqdXlkLlTVDOORAAQgZOEJAAyfE5JsRNfoVVoKLhpdWivQFMeeNS0uDpFrjy58vDjxPc+wfBjXktDcaxL9ied2Vd9JrSEpCliFLQ6psf7SUnKT8hA1b0rIZnOHSurcym1SZt\/c6LZlOQa0ujzEwJTPZxqR0VdNQ7dyF4PfXwhtfc1Uymux6i+XFvD7qVq5KUv+UVZ8VZzn5dff+TKaab4q9da+yUDuVH4NfO6d\/ocbNqF01O4jvfXoEWoTnpnmEWlMAMJWsq6aHFLPZIPEKKfZkjVyxpY\/wBFbZ8qrbwXzuQlJNNptFbpKsg8VyZD6HRg+HJKWFf4ny6+iu3VHplPp1TqtOpqIaq\/VpdUkcf+XWpfTQ98HrtNNH\/f7Tqr9ldn7D8n2zn9h9q6m7JqLsgzqjJkvocmttupSFSXwgDj2TwbTgAlIwCAsi9YURiBFZgxW+mxHbS00kEnihIwB3+ADRF3Hw11kgIyRkfBrsPhrokL6UZx0gkNpKyEpKjgdzgDuT8miLUjfubT7k3ApE+jU5EqgVy5aRbFf9022FMzzClOrQISFDn6ji5CHnFENlDbiUJWeSg4VebHkWzbdr7csR4jN4t8o8jzRPTi0zo9R1\/pqHEKKC20gLQUpcfaUtCkJWhVAbuXhT1RJNSiS6hHtu4KyuHaM2Sy5Hi0uQZSJk5Ex\/hwYD6cGO6rmnoJPEt+sV2lUd1aPcbNv7i2BEqE1dI84j+50SmSpSXEH7nJhOqiNOhhSVoa4n73kwgBRQSrWxEBWyiMt7hIOofROx2425t+nx4iaG49JjxUR2JciW\/ImJSgAIIfWvqoICUkFKwQQcY1Yez90z69S6jSKmt56Tbs33OVJdUVKfQWGX21FR++UEPpQpR7qKORAKsCg7v3guRFL98U7a647bpiy217p3I5Aiw6eHFJQHH0JlLkABSgAkN+sVAEpGSHryXpdadrN20t26KxU6TSngy2ZdMDLcmcXnkTHkvKZQpRS+y40ltK3W0NoaKFlK0obTAdITCdK6Y9R28LYQeGp1A8NTrXUuoPhrU7y0psKn7l7ES6kZK6e5csiHVGW3OKDEe83bStz\/mxLVBCvhSspPZR1te6sNNLcKVEISVEJTknHwAeJ1pPfFYv7yrJnmNP2arlIZgQqlT6axcVKnUxSFy09EzJkh9hDTaG0IDiGIhkulwsK5o4KKYfXQZMGSBrSS8FoABJs7XtxXNmgskX6gT2Sj5c8i4Np9l3JNvuiFEuO4pDlwTobCVSHGnHklCV8\/vkphoUgp8MR0JPqAg9+52yNhU\/yaq7bW2rEFihXDGauS2a6ElRiVMoaW2px88VoS+ltttDqsABxaHCE8EqyO9zF4XPs\/WNid76VDavmmRYdYptUQyZFLuFmLLjpXKZJSMLBcCHo6wFJ6wUOSFhWrZqG2d423a3vs8nyBBqVtXHTzNcsWpyAywwZLfLnT3lZTHB5jlGX9wPfh0cqKvFNL9O60\/A+A35cnGlJe0mhI09Ja4HjjYXsRYUm+aNrvYhU55Cm+1d3ktywLurTyhc7VcqFo1Z5bo6tSpsemrlpW72HU6bzjASsjKeooFWXlqVvw2sLBIz2ONfK\/ydtlLnkbUotqzLKqU6txaGxLcDK4jcijVp6dJjS3WnnpLDkWQgUmOULQVgOJVySpOE63H8l+d5Z0l9TPlKW\/b1NhMwHElcV6OuQ\/MDjfSU35utSA30+tyCsHkG+PbkB6z6ZjGKyaCONzYxI4tvgA9h7A\/so+cbg2tjNQQD2IB+fRoJPs11NrAvDW6TT65R5tEqkZD8KoMORpDSh6rja0lK0n5CCRrWcX7bd2WZSbZ3EhGdWLYcdp0l5mU9HV59HS5EfUFNKSoJXhzKc4IWO3bWz8h1tLeXHAlI7kkga+bPlh7JXBb193Vu\/Yt3U2ZSajJRUJ9JptRV7oQlKaAefU0n79vm2VFSTkcz6uBnVH5kWE0ySR\/E9gQCtzTdGGv5bcAZjMZzuHvFtvs0+L88BW9bUqyqA3Ao7VrmDATGKpZp9x1RtKHxhKQhBf7p4JSDn5vAdxF9xY9NXIbh3bHlJf4IjR7wqgAax493lZ75GcfzT6o7DQyDuJesUsri3pXEB5vrMJdmOlLjfhzQlw4Unt2IBHbWTb3o3DjvCML4e6p8EOIYUo\/2KTrQHqvRD8ropWnfs0\/f7LvP+7\/6zlYJsXUcSRh4Ie4A\/sK\/lbsG7oMevVau0qXe7FTaiNRUzE3DKUqShJcWlspd5JUErWo+CsBZ8CeOmezd4ZdrUNEKJFll2S87OmOyng6+9JeWVuLWsISFHJwMJThKUjAxrQpO9257KUj32Hiew5xI4zk+GemPb4f7teuPvhuqp1EdipImPvOBpphFNbccdcUcBCEISCpROAAO5JwB7NSGN6u9OF4trzfYtHn2P2UNqH4AfiPjRueZsemiyfinYeTY+63BuXdvcRW4NNu+JW5z7TLqYlOozK1Hzp54hHQS0niFrVj1SsqCSoqPFKNbR7YWhVbfpT9VumWzNuWtvCbVX28lttziEpjtE9+k0gJQnOMkKWQCsgVP5MGxl2W9Ch7jbyebvXe80sQ4LCUhqjsODBHqkhT6k4C1g+qCUJyOSl7GoASMAe3W9m5GPM68Vpa335\/2Xn+n4WZhhzM6QPeDXy\/poeD3vz4XLSdu5\/ECp\/Ox\/nt6cdJ27n8QKn87H+e3rSUinAeGp1A8NToiNKe7P4Lbv\/IM\/wDV16bNKe7P4Lbv\/IM\/9XXoiax4anUDw1OiKCkE5OtX\/KT8kBzdGsPX\/YFTi065XmUomRJvJMOpKQkIQtS0BSmXQkJSVhCwpKEJKRjlraHUEZ1c1xYbarJI2yN6XcL5lK8j\/wAo5DymTtuXAgn7q1V4PBWPank8FY+dIPyaxtP8hreqjyFS6TsvEiPuHkt5ibS0Lz84fB\/36+o4GNTrP+akWqMGMcWvmbE8jzyipTpad2\/EXP8AysiqwuA\/w3lq\/wB2spG8hbyjpElCFxrIjx1ffrkV2QFJ+ZKIqwfmyPn19HtcePy6HLlKoNPh7haX2X\/o4rckS25+8N3Lr7KSlRpNKjGFHUMes29IKlPupz\/9H0MjsQQSNbdWraVtWTQ4Vs2lQoVHpNOZDEWFCYSyyygexKEgAay+NTrXc4uNlbUcbYxQSxuh+DS7fyFP\/V16Zh4aWd0PwaXb+Qp\/6uvTMPDVFkU6ggHx1OjRFRPlAeT5XNxrKq9F28uxy35NQc87cguLWmDMkAk\/dOHdsLUcrwFJJ9Yo5ZJ+Xe83k1+WFYlfROibWXQ29HXlur20tUhtJHgtLkc80D\/pBH9nhr7ckZ1CkBQAPs76oRayxSmI2Ba0+8gLd2\/KntIi2t8V1ly7aXPeZZlS0rmSpcRXrNlzp81JKCSj1+PZKT376vLcWPvBfCUWrtzPasynvKxUbllMh6a237UQYx7Bwj\/lXiAj2NueyzynOO57a5aqsbndRtKe3e21uba0FNDoSJLy3D1Zs+Y8X5c98j1nn3Vd1rP9wzgADtps0aNFRQfDXBTYWkoOcH4NdmjRFRW\/G0t5XUqjRdvLZtOTT23Hn6k1UJLtPcW+Xoy0LD8ZpbvDDKlKSgoKnGo5KilBSenbbyULbtEKfrNfrkoiK3BYptPrNRhU2Kw0VdJDbPnK1jgFFAHPiEgYSDnN9anVQSOFjdG15twtVy7sHtvLmxZVUp1QqbUNZebh1CpSJMUu4IStbTiylZSCePLIBIUByCSHaj0Sl2\/TYlHosFqHBgsIjRo7SeKGmkABKUj4AABrIaNCSeVc1jWbNFKB4anRo1RXI11llBOe4+Y67NGqEA8otct+vJ83A3sv+mo981MpFlopqIMx9rqqqqW1Sw9NYjp4dJAkJYhILyllSAy5xQeoSNh2ozLbDcdttLbbaQlCEjASB4AD2Y1241OsMeOyN7ngbu5962H8KtkikuW9t5Zdp1qu3FbdvRKdUbmkIl1aQwjiqW8hPFK1+zIBPhjJUonJJJYgAOw1OjWYNA4CE2jUEZGNTo1VUVabp7cXDfUlj3PriGIbTeDFcCglS8\/fEjx7YHcezVWTvJsuSQ4kyIFJlFB9ValhRHt\/lJ1s7qCnPidY3QxONuaCVE5OjwZTzI4kH2K1SrfkvVW4mBFr1q0epMI+8RJLTiUD\/Z5DtrGo8kxMKmrpMfbi3xDWoKUw3Hj8FEeBKcYP9utvumPl\/v1PAfCf79W\/l4P\/AGwsI0QMYI2zPDRvQdtfnjlaZseSNBhczH2moieqClXCHF7g+I+bXTTvI\/g0ioM1Sj7ZR4M+OsLjy2HQ29HWPBTbiV8myMnukg47a3R6Y+E6OmPh1cIMcbiNqzjTp6LfzUtHn5zv9dlQ1qbbbyUWe3Jbu+opQlHDhUaq7NbA\/wCgsqyflzn5dXrCTJRFaRMdS4+lADi0p4hSsdyB7O+u4JAGNAGNZSb4FLZxMMYgIDi76m1Ok7dz+IFT+dj\/AD29OOk7dz+IFT+dj\/Pb1RbicB4anUDw1OiI0n7xMIlbT3nHcU4lLlAqCSW3FIWB5uvwUkgpPyg6cNKe7P4Lbv8AyDP\/AFdeiKBtlb2P\/Gl1dzn+NdU+0aPRlb340ur9K6r9o02Dw1OiJS9GVvfjS6v0rqv2jR6Mre\/Gl1fpXVftGm3RoiUjtnbw\/wDKd1fpXVftGo9Glu+2p3V+ldU+0azlfuGg2vS3a3ctag0mnR8F6ZOkoYZaBOByWshIySB3Pidaz7zeW1SrSuhu19q4FFu7zaO1MqdRNTHmTSXORQy241zC3eKeavAISpskHl2wz5EWMwySuoBa+RlRYrDJMaAV9jbW3Cf\/ABndXb\/+q6p9o1Po0t38Z3V+ldU+0a0ee\/0ie4u5sZFX2rs6l2zQEkN+dVvlOmvvpI6oS0y6htDYIUEqUpSlDCsJzjWzvkqb4XDvdaFdnXXTYMWq29WlUl9cALTHkDzdl9DiUrUopPF8JUnJwU9ux1rxajjTZDsWN1vbyFhi1LGnyHY0bre3lWL6Mre9lTur9K6p9o0ejK3vxpdX6V1X7Rpt0a3lvKr9ytt6Azt1dLyaldBLdFnKwq6KmoHDC+xCpBBHzjTGNsrex\/4zun9K6p9o13bofg0u38hT\/wBXXpmHhoiU\/Rlb340ur9K6r9o0ejK3vxpdX6V1X7Rpt0aIlL0ZW9+NLq\/Suq\/aNHoyt78aXV+ldV+0abddciQzFZU\/IdS22gclLWoBKR7SSfAaIlb0ZW9+M7q\/Suq\/aNB2zt8A\/wDCd1H\/APyuqfaNLKvKb2SeBNKvJdaZ74k0Omy6pHJHiA\/Facb\/APi1rHvT5b123Bd8yx9kJLNOp9LkMMzKg+0UVOaFNpW4Y7D6PuDQ5hourbUoqCyAhKAs6b8\/GbdPBI7AglX\/AA3gWQa+i26esC1o6C4\/V7nbSBnkq7qoB\/eZGuMSxrPnoDkCvXHIR\/Oau+prA\/tEnXz5vmg7D7mwFy91bKumoy4ccpFWXdcuoSEI\/npRLU4nPfwAI7gDxA1V1f8AJpds+25e73ksbkV1h6hBblWhpjmk1yEltRDvLgkFSUEKCxgEYUMKKVAamPrOPOel1tN1uNv3tZ2Y4kFBwvwvrCNs7fIz7p3V+ldV+0aPRlb340ur9K6r9o0veTZulD3m2TtTcKGueo1CEWJJnqbU\/wCdR3FMP81NIQ2o9VpfrIQlJ8QlPgLO1LrVIrZKXoyt78aXV+ldV+0aPRlb340ur9K6r9o026NESl6Mre\/Gl1fpXVftGj0ZW9+NLq\/Suq\/aNNujREpejK3vxpdX6V1X7Ro9GVvfjS6v0rqv2jTYTjXBbyG+6s4+HRErejK3vxpdX6V1X7Ro9GVvfjS6v0rqv2jXhhb67O1Cuy7YjblW77rwZyaY\/BXUWm3xKKwgNBClAqUVnj6oOVZHiCNPXIfAdWte136SrWva\/wDSbSn6Mre\/Gl1fpXVftGj0ZW9+NLq\/Suq\/aNNujVyuSl6Mre\/Gl1fpXVftGj0ZW9+NLq\/Suq\/aNNujREpejK3vxpdX6V1X7Ro9GVvfjS6v0rqv2jTbqCoJ7nREp+jK3vxpdX6V1X7Ro9GVvfjS6v0rqv2jTBKrNMgvx406cxHdludGOl1xKC8vGeKMn1jgHsO\/bXq6qePPuB8vbVvUPKJV9GVvfjS6v0rqv2jR6Mre\/Gl1fpXVftGsTWt6rZpV4QbRZg1Ge47LRCmSoqUFinurKQhLvJYUolSkghtK+APJfFPfVgdQeODrBBm4+U57IHhxYadRuj4PuskkMkQBe0i9xfdKvoyt78aXV+ldV+0aPRlb340ur9K6r9o026NbKxpS9GVvfjS6v0rqv2jR6Mre\/Gl1fpXVftGm3RoiUvRlb340ur9K6r9o0pbq7c0KNY1RfaqVylaCwU9S5qk4nPXb8UrfKT8xB1bWk7dz+IFT+dj\/AD29ETgPAanUDw1OiI0p7s\/gtu\/8gz\/1demzSnuz+C27\/wAgz\/1deiJrHhqdQPDU6IjUEgeOp1wczgAHGiLVb\/SJ1i1Imz1Ap9w12LCdk3ZT3Ykd7kTKU0VKUkAAjCQQslWEjiDkHGvnTfNuP0Ryu1yDJkR2Ks2lD4joUsOhbfScQpI8FDihaFY7kqST3Gnvy+N\/k7sb2Vm3aI1TZNHsTzi3YhmvrR\/DQrE15KUkDPNKWQVdsM58Cda8tXaiJSGqJFq9acdADbKp1cKWWVJGc5S5gD1fYD8AOdcdq7XZOX1RO\/T8pHne7Wj6i9J6sIYdUELxG4bmgW9N2DsbHfkfRPFpTao5GepjN4N20ww868hLVNCX5h5lPUSHApIbSQEBKeSgE+sQe2t8v9GxuJVKtBvPa5cdudTrcfj1NuuBkNPyH5inC41ICfUUtPSBSU4IbKUkdgT8y7svOn1mh0lDE1+Nccd9L8lKHXWkPrV6jq8IPAApyOaTlWPHW0n+jk8o1O0W5a9qbofiMWpf0xsRloWSINXKQlBKlKJ4PAJQcnspLeMZVrLpMYhyet56eqxVDnzdWbWL0\/6a1LJhk1aNh+E2w7j9\/JX1z0aNGusUmljdD8Gl2\/kKf+rr0zDw0s7ofg0u38hT\/wBXXpmHhoinRo0aIjWHvC2aZelrVa0K2wXqbWoT9PmNBZSVsOtqQtOQQR6qj3BB+XWY1CvDVCARRRadb6O3Jsy\/QrZom7lCpqZEVx4TLrpLYZRGYLaFFT7LzCFvkuJ4tIZGRzJ4gDNMbt2\/vjetjpuOJZtauunELbTVEW6mOxHCknEhiMtS5y0+CkuNdNIPFfUKRg\/SYspKlKKT62M\/2aC22EBBOAMY7+Hwa4p\/ofTH5wzAOmtw0AAX5JouP2IUxHreTHjuhHJ2s7kD27L4xxtymKdS0UOq1iDJVHZ81fVOkAPuYTxUXfWHrHvnsO\/zasvZOPvpd1bplS2Ys96RHDuPdAx1NUpbZP3UPS3MoWhQKuXDqOEnISo+Lt\/pA7JpG7W9CaBWERpDFBtqChgOZ5IdkPy1uKQsd0kpbZ8PHHfV4bab+UbajyLrduCp1GDMr1r0cW7EpzspCHps2K8YEZtQGVBLi0NclBJwlZV4DOpRuDiCV8bzfTuVAQxSOlAaTZ491ZtjQtvfJF2JpVEvG6YNMpFCS75zMLa0Nuy5D7j7qWGRzWeTjjnBsc18QB62CdW3T6lBqkCNVIElL8WW0h9h1GeLjagClQ+Qgg6+Se8e\/N+b8Ulqde1NSw\/asOVSY8ZpsttT5yiUqmtoKsDrJLLaU5JSAsJOHFA7wXx5S232ze2Um0LUuOl168bUai20zR+qUkzkx0+svJSVMtpStTi0EgFtxsEODiNnF1mDIMpaajjr5vO1n9guiy9DyMURNdvJJfy+N6F\/VbJpdQokJJ7fIdcs51od5EflK3LcO6lwbO3ImsXHWazUn7jmVmVIQlmHHTCjIKG2xkgdUNJDaUoQgOAgq7jW+I9upLGnblQtmZw4WFF5WM\/DmdBLyDSnRo0azrAuKjhJOtA\/Kn8pO7bs3NFgbOX2\/S6RbCXEVWVA68WWmqpXIaLSyriHGm1NNniAUr555KGBrftwckEYznGteqp5Fe11w39c193RLrtRFwyDLbp7U9yGxBfUhAccSpgoWtSigEciQMnA751FaxDmZGP8LDcGuPc9lG6pDlZEPw8UgErSK0JsCm3jat\/bswY1M9y72FTqFQH3ZKGXZipXVQU5VwLpQD25YB7d9br2r5duxdzXK1br8qt0RuW6GIdQq0AMRHlk4SC4FKLfI+BcSgeA7E4188rpeps67qm3Ra1U6hblNqT7VEE9xK3eklRSHlFKUhSjglJI5BJTn1s687jbbrS2XUhTbiSlaSOygfEHXm+Dr+VohdCaeS8lx3r3rder+h\/wje7SnT6nIWyyfMAOBfF+ftS+0CXUKSCFZyM5GuQORka058hbf6RWI69kLzqC3qjS4xkW\/KfVlUqEnAXHKj4uM9sZ7qbUnx4KOtxk4wMa9RwM2PPx25EfBXFapps+kZb8PIHzNP7+6nRo0a3FHo1xXjHca5a4OkgAjOfkGqHhFR\/lHUaFUX7clVCGxJjt+eRgiQ0lxsuLDax2VkZ4sr\/s5armBc27yY6rLsO7Z70d5KUvNvRUy5cFkjsWJbjiAxnCsF\/rq7eoO2Bmd3rgu9NaWm\/2vc+DDekSKSw0jEdxttC\/u3VyebvSUvKCUkAkhAA5qy9hUuOxAlWJW2m1KbRFkPyGlrQqoSFttuyOa+3IhRbBQn1Q2ppJ7EJHzV6x13Ucb1Fk5WnPkjDWtDgQQD26qPIHnzxS7WD4EGlRRzMa5ziSDzX1\/okOqWVuBTaBIhMWhOa+4uIRJgyG5i2FEHDhQVpddUFHkQkKUo59pzqzNuN672ve7qRCkUyhRadMYkCdDYW85IjONJPJwOuBvIS4ENqbUylSS4Mqykg5tblz06kQ2\/NW67LempalLbUmCGYrjqsuhOVd22yBxCgVFJIwTx1Td00Ni0dzaPddlXO+irPwqi0uZ1\/OgVsPx0ONSEKUetzQpltZUQ5\/A2iFpUnOoT0X6odoeU573lkLndT+kdXUBd31G+97VdcKk7navUEjAX1TTxR7cfRbghQIyDqdIO1O4VSvqny263QhTajTVIQ90XOpHkJWnKHWlH1gDhQUhQylSSAVp4uKfUnIB+TX1PhZsGo47MrGd1MeLBHcFchNC\/HkMUgpw2IU6NGjW0sSNJ27n8QKn87H+e3px0nbufxAqfzsf57eiJwHhqdQPDU6IjSnuz+C27\/yDP8A1demzSnuz+C27\/yDP\/V16ImseGp1A8NToiNcF5yP9+ueuDhAAJ0VCvhNusy0N4NysNAk3vcBJx3\/APGUgaxtk0+NN3CoaHIzS2m0SnlIWkEKwyUjsR37rz\/ZrJ7qKQ7uzuFIbIKX7wrjo\/8AeqD51z2va6l9tucv9TTZJxj4XGh9evMc6QieYj\/5f5FfTnr4Mw\/wpldVH4DB770OUr7hQY7W61QbRFaS0YzHFCUAJH3\/ALB28dZKxKVEnbl2ND82axKuyjsnCB3zMa+TXXuWkJ3Vl4J7wo57\/M5rK7VgK3k23QrwVedEH\/61rWfCkc7IxwT2b\/kov8PY2O\/CsyuaC74b9+\/dfdtPhj4NctGjXo6+eEsbofg0u38hT\/1demYeGlndD8Gl2\/kKf+rr0zDw0RTo0aNERo0aNEXB0kNqIODrRXyhvLprCbkq+2+0iHob9Mky6dJqDTbbkpx5h0suFrmFNR20uoWnqOIcKv5KAcKO9bn3h7A\/Pr4uPM+Z7t7qwpRV561eVVLraxhbSFTZBQCD3AV6yxnxCwr+VrnfU+bNgYJmhNH2\/r2XQ+mMCDUc8Qz8Umu1d3d26dVLinzrmkuPVSa08tU0+6OQGEAcXZSVqwnJGE8UDGAkaTJkCrXpNqdccpDtakVGcqd7odCLDHU5KKFNvhKXiE8lDkjKTgY8MJ53aenbNTkFJUhmMtS0jxUjGVD+4f79WZCkRpcRqRCWlUdaAW+HYBOOwwOwwO2NeRZWuZMDHZTbJea5NCgPG+9r03J07FxXMgjjGwuyATyfI9lRNU2c3KkFUmFPLoQtDzEdy5pinErQQoYVwSnIUAQcjGAc9s62EpNgWpUvJ3Yu9+3FQr7tGLEFUkddbrk8y1ID63S4pX3VT3JSlA91Dxwe2PmVKFS2\/OJ0hLSPZnxV8w9uvPCrV47jUOp7aWFHlLF1S48KQIraHHiGj1emnkeHVUORCFFIQn7q8ptkc9TukZ+b6jw3YsjQOkiiBXIrfyuP1LIOkanDOHGjue\/BXX\/o+4m5yd\/mrtpvuNGcrM2bSZzciMuUtyA04l6ctlxLiEoQ2W4bPU4r+6vMgAp5kfWsaprycvJ7omy1vNuLajOV1+IzDfcYKlMxI7ZUpERhSgFFsLW4tTigFvOrW6sAlKUXNr1vGiMMTWHagFxWZP8AmZ3S+SjRo0azrWRriv7xXzHXLUHwOiL5eeVN5PNQ2Ou5dYosda7HuCSpVOkAcjTpKyVGI4fYnJJaUfEZR4pBVSsSPKUsPTZpdUgEBDaOmgZGMkZJJ\/t19krvs+3L7t2fad2UpipUmpMliTGeTlLiD\/2HwIIwQQCDnXzT8onyXbu2KlyKpAE2tWM8o9CrNjL9OST2al8cFIHYB8eoR99wPY+ceo\/T0kTnZWKLaeR3HuF7V6F9bsc1mnag6iNmk8HwD7qq6PclUtm4qfcNsTUx67Qn0VCGs54ocSSAlf8AsLHJCk+1Kjr62bTbkUbdrb6i39QgW49WjBxbClclxnwSl1hZ\/ntrCkH5UnXx+bfh06MOhHcUlxRILSCsrUfaT3OT8J1tX5Be7QtS+Zm0tYldKm3UFz6SFn1W6k2gF1kY7DqtJ5\/ByZV7Vd8PpLUvyk\/5N99L+L8\/7re\/EvQxn4bdVgA62fqru3\/ZfQbRrij73trlr01eDo1xV4a5a4rOAO2qEWKRa8b\/ANXg3JdNPtFzpuwreKqhN9dJHnTzDjKGjjukpjuvKUlWOz7SgcDviNo7rpd0U6dDflRLqSlLDVWZhPNF1icy2GPO2sKGW3m2k9krCm1tqSORK+FyI2fssXVVLwlxHps2rS0TXW5bhcjtuoZbaSUtfe9ktIOVAkHwI1rnerNEqdzXHWpLS4r7NbmtplxXnGJTTja\/NctOtEOpUpDLYwg5V2ABJA14n6yGo+ms53qB8nUZHtjZGG9Q6aJ+a6u6O38rqcKDH1nFGnsBaWAuLia3VlXIumKpsiBGp9zUqldFRlVio1xyGzBZCSFOdRb3XKwO6QQEZ7qUPA0\/edWiqjv3PZlBjRIlIhOQaH56FthSnlt9WVI5YXwWppkkq+6FLKiSCs4fqR5LtyVejxanV78ntzuaJbMG4Fyq6iCsD7mQHpQSHUpPdTYGCSkKUByJXPJ+3ZqESbQJEyzqtT6hGciuS1SJVPXxWkpP8H6b4zgn\/lv7s51Da16W9QapJFO3EYGEguazoYaJHUCOrckcm\/YLJpD9O08uMkx6wDXJAPm+6vPbqyIVg283Q48pyZJJ606a6kByZJV9+6oDwHYJSnwSlKUjsNNg8BryUmE\/ApsWHKmqmPsMIbdkrSEqeWlIBcIHgVEZPz69mvf8aGPGibFC0Na0UAOAuUe90ji95slGjRo1nVqNJ27n8QKn87H+e3px0nbufxAqfzsf57eiJwHhqdQPDU6IjSnuz+C27\/yDP\/V16bNKe7P4Lbv\/ACDP\/V16ImseGp1A8NToig+Ok2\/70ctltqNDYC5LySrk4MoQnOM49pyNZO+Lzo9gW9JumvpmGBE4dYxIjklxIUoJyG2wVqAz3wD21XwvOxd3ozLtOjVpsNYSZa4vSDAU26s9RKlBWB0HEnA++GB2UCc2OGCQOkHyhYZyenpZyvjPUpztTrNWqst7qOzKpNkOLPitS5Diif71abNokdS6qg8nP3CnoR28BzcJ\/wD+er6u7yVvJtkVx2fRr\/vyNT56PPmfc5mSqKoOc3D0i5GKvBJVjKux7E+Asq3P9HzaNstu1SLO3CcMptvqL90gkuIBJTni2D25n4Ncplej8rJdIWyNAddb+SvUPW\/4lYfqX0afTWLE9snTG0uIHT8hBPBvetlopuZJZG6UtxZCEphsDKj4\/f8A166rVrqaZuBZlShPoD8O6KU+0cZ4qTKbIOD4+GvoD\/8Aw8doqnKNYqm39w1WS6Bl6dWJalKx4Z+6jt\/u052l\/o99nKZUYlTRtdRIL0N5L7T0h92Q6haVBSVJBWRkEZGTrdxvSoxXxSyzN+QDbnhRnp78RXaN6QHpduOXHoc0vuv1X7e62ZsS8V3VFfTJYDcqKQHOP3igc4I\/uPbTWPDWDta06fa0VxiEVuOPEKddX4rI8PmHj21ndTkpYXkx8Lg4Q9rKk5Sxuh+DS7fyFP8A1demYeGlndD8Gl2\/kKf+rr0zDw1jWVTo0aNERo0aNEXFw4QSRnWjO+9Ugbn7gVu47H2gqNRrVpuItq6afXHIcRE2M0VPsOMqD5fYdSmQpxp0thDrbxBHZC2951AKBBGdV1e2xtm3pdKb3ferFNraKcmlrlUueuP14yXFLQh1vJbd4KccKeolWOaseJ1FazBk5OG+LE6es8dQsH6rbwZ2404kdYruOVoBTbd8nW85L9Ob3MdteeFqjzbbuF5iNOjqIwWy24UlYIPZSS4FDuFEaVnNnKraNTFDtDfCx5dHewKcmXVFe6KkHACfN2m3Q+sdkgoI54Hqgk5+he3PkzbcbdXTVL8diruG5qkgRU1irsx1yY0JP3sVnpNoQhseJwnkon1lHAw33\/bNyVmy5tI2wuePaVcUUqh1AU9t9DakqBKFNqGOKwCgkeskKyO41BwelcYwATMFndzRuL9iVOZHqXLkk2eSBsCdjXuvlDubtTufaNus3dVLGuSqRJNSapzciqtLorLpWlxayYRUZ7jSG2nFlfOGQEHsdfTbY3yd7F2TgsooqFz6sllUZdRkNNoKGSeRZjtNhLcdrkASlKeSyApxbq\/XOss3ae5twp820d37mqku5LYkOoqVONxTZlPkNzYjzTT7KXCEhK2X3U80stqStDicAJwbr8jS0\/ehRtw4MOEzCpC7zcNOjsJCWUBFOgtv8AOw\/hCJAOP5QVnvrDoGs4b9Sl0fGx3RujFmxXBA5ve7sV2WvqePK\/GbmSzB1mq9iti9GoGp126gEaNGjREaNGjRFGBrqlRI8xhyLJYbdZdSUONrSFJWkjBBB7EEE9jru0aUi053w8gekVh6Rc+yMuLQKg4St6hSSr3OfV4npEZVGUfgAU34YQk5J1T9EW\/9o3rSYFP2wuWHcsapMPUx1uGp6KX23UqBMlvk108j1yVD1Scj2a+uJSk+IBxqOm2DngnPza5\/L9OYeTMMhnyOBvb+i6zT\/WWpYOK7DcQ9hBFO3q\/ddUEyFQ2VS0IS+UAupQcpC\/aAT7M5136gAJGEgAfANTqfGwXJo1BAPjqdGqosHJtKmPuOOqfqoLrhdUG6vLQOR+AJcASPkGAPYNYmFtTY8K6HLvZoafdJ57zlS1vurR1+CUF0NqUUBZCU5WEhWcnOVKJcSAfHRgD2awTY8c5b8RoNGxe9Hz9Vcx7476TVowPgGjinGOI\/u1OjWdWo0aNGiI0aNGiI0nbufxAqfzsf57enHSdu5\/ECp\/Ox\/nt6InAeGp1A8NToiNJ28b\/mu015SC244G6BUFFDaCtah5uvskDxOnHSnuz+C27\/AMgz\/wBXXoi8vpPj9\/8AwMvLx\/EL\/wBWj0nsf1NvL8wP\/Vp1HhqdESOrcyKvsqy7yP8A+Qv\/AFaj0lRMEe8u8sH\/AOwZH1aedGipQSMjcmG2lKG7KvFKUjAAoD4AH92uXpNjD\/zMvL8wv\/Vp30aKqSDudHP\/AJmXl+YH\/q0Dc6OPCzLy\/ML\/ANWnfRoiSPSdHH\/mZeX5gf8Aq1PpPY\/qbeX5gf8Aq07aNEVTbk7lMP7dXSyLQu9HOizk8l0J9KRlhfcnHYfLpiG57H9TbyP\/AOQP\/VrIbofg0u38hT\/1demYeGiJK9J7H9Tby\/MD\/wBWj0nsf1NvL8wP\/Vp20aIkn0nsf1NvL8wP\/Vo9J7H9Tby\/MD\/1adtRkfDoiSvSex\/U28vzA\/8AVqPSdHP\/AJm3l+YX\/q07ZHw6Mj4dEVeVe9KDX4DlKre3l1zob3EuMP28+tCuKgoZBHsIB\/s1hy5t2UIb9Edx8G2+klIt2QAE5JxjHwqJ\/t1beR8OjknGeQ\/v0pFRFbs3ZW5Ljbuqu7JXLNqDcFum5doswsqjtqWptK2M9JZQXXOKlJKkhagCAcaYrHqVmbb24xaVl7b3jTqTGdfeajijzHeK3nVuuq5OFSjyccWrufb27atbRq0MaHdYG\/lVJJFFJHpPjj\/zMvL8wP8A1an0nsf1NvL8wP8A1adtGrlRJPpPY\/qbeX5gf+rR6T2P6m3l+YH\/AKtO2jREk+k9j+pt5fmB\/wCrR6T2P6m3l+YH\/q07aNEST6T2P6m3l+YH\/q0ek9j+pt5fmB\/6tO2jREk+k9j+pt5fmB\/6tHpPY\/qbeX5gf+rTto0RJPpPY\/qbeX5gf+rR6T2P6m3l+YH\/AKtO2jREk+k9j+pt5fmB\/wCrR6T2P6m3l+YH\/q07aNEST6T2P6m3l+YH\/q0ek9j+pt5fmB\/6tO2jREk+k9j+pt5fmB\/6tHpPY\/qbeX5gf+rTto0RJPpPY\/qbeX5gf+rR6T2P6m3l+YH\/AKtO2jREk+k9j+pt5fmB\/wCrR6T2P6m3l+YH\/q07aNEST6T2P6m3l+YH\/q0qbpbjx5VjVJj3pXa0VlgBbtDfSkHrt+JI7auHSdu5\/ECp\/Ox\/nt6InBOcDPjjU6geGp0RGlPdn8Ft3\/kGf+rr02aU92fwW3f+QZ\/6uvRE1jw1OoHhqdERqCcanWMuK4KTa9JkV2tyRHhREFbrhSTgeAAA7kkkAJHckgAEkDVkjxG0ucaAVQLNBZBTnH2ahLyVLCO2TnHf4NawXrftevWJMk1+oSLftoJccVT40wsOlgAkqkyEKB7p7qQhSUJBIKnB302eTxstQbcQxuZOtiJT63UmFeYRxGShdOhOgEIPbPXcAQp1ROfBHgjKuN0X1rieotRkwtMYXsj\/AFSbBt9g3km69tlJ5WlyYUDZZzRdwO6vfRo0a7VRaNGjRoiWN0PwaXb+Qp\/6uvTMPDSzuh+DS7fyFP8A1demYeGiKdGjRoihXhrrPjrsV4aw9wXJQLZp7tUuOsQqZCbUELkTJCGWklRwkFSyBkk4A8SfDRCvLct7W3aKo7NbnlEmbzEOGwy5JlyygArDMdpKnXSkHJ4JOB3OB31gnd5LThltyswbgo0V3GJtTokuLGR8rjq2whkfK4U6wmytYtW7J11XPAq8Kq15VZlRJz7bqXHGoaH3PMGhgni0Y\/BaQOxUtxR9fnqzKnCYqEB+JITlDiCD8ny6oNzRVAV1zavBpsJ2pVB9tiKw2XXHVK9VKB7f\/wBv+3tqrIu5FwQqba141SpMCHc9RZp66LLp6oUqIp9ZQhLfVUlfNlQw6Fp9cBak8AEpKawbfrlKqexM\/c9i2HKZNiyqcwZaGnn6Y8g9OKkJcQ4EoeQ6E9NQKEtsDJScF8n7L1uvtNouTciXPUy2WkE0iErA4lOPu7bucg9yc575BydZOgMcQ8qvHKtlr7wZGNcsd86xdrUCFatt0q2Kat9cSkQmYDCn3Obim2kBCSpXtVhIyfh1ldWIjRo1gq9dtKojjcVznImO4KI7WMhBIBcWSQltse1aiB7BlRCSRe6t1ulW5TXqxW6hGgwYw5PSZDobbbBIAyo9hkkAfKfh1X9R8oG1KBEqFaumhXBRaFTVYkVeRCDsdhPALKpCGVLeiAJUCfOW2iARnGqy8o+76Jb1Cp6Lnuieq6K8Ut0Gj0RDj9SW7nBTTo+ApLhSriqYrCkJUooCOXHVIXxRJO2OzsCrb81O3LZZp8pyp29bji3KumiSVBTjfJtxahWKotbpdKlpUyytS1hKwEAkW9to33Zt\/QDVLKumkV2GkgKfps1uShJIyAooJwcd8HWe189adZ2726bNC3V3AtepW\/GthxdYoNsGpGl1KUVKSpU2sVfCnYCVI6i0xEryr1UqI4dRdmWTv87Rr1p8GPetSqVq0ttwV9TrL9TU8+ptfRYpzXB2e6rkOZKluENMPqWhpJbcWRbfaNLFnbl2Lf4ki0LkiVFyFw86YQSl+NzyUB1pQC2yoAkBSRnGmfREag9tTripQwdEXFx0NoUtWAEjOSdL9uXm1XJc2ny4CqfKjSXWmGnXkKMlhBGH0cfBKs+B9YY7gaTd1t87O2+rEW1am5LkVGXHMkx4jHVUhrJGVdxx8D4\/Ada\/1\/ystvGHUV6nt1tDlOkBYcEE4BB7g+t4ew\/DqNyc9kMgZf1U5i+ndUy4PjwYznNO4IBqluqDnU6wll3VSr2tim3VRZCX4VUityWlp+BQzg\/KDkH4CCPZrN6kWuDgCFCvY6NxY4URsUaNGsQm7LdVW59tpq8b3TpcZmbMilwBbDDpWG3FA+CSWnO\/+wdVVqy+uky44fEXrI6xQXA3yHMoBxyx44yQM\/Lqq713upnmqou3jprMp0rjpqcaMqTBjPJTy49RKkoddxkBAcSnkOLjjIIVrW+JLrj1xyr+ROuKj1WU7BgGs1JiZHdMVmY1JmMsofS2p0LU20MoZ4qbjyUANIehNki3botbplwwGavRJ8WfT5KeceXFfS608nOMpUnsR28QdVleF03xs7PlXnXak7dFhvS1u1VTkZpqbbjClnD6C0lKZENrI5hSeshHJwuOhJSmi643e+xUWuTrcmx2KleARc1OpTktLCxPbr0yqP0VxWVpZMuLN80Q4PuZdac7grbSq9rZ3ctbfHbtbllV8UStTY\/DzGpR21yIT4HdD8ZSsOt8gUK4qwoBYStKhySRWsw83IZQ+ytK0OJCkqSrIUD4EH2jXZpF2vqNColkWjaDkim02a3TkQI1KblhfTVGRwcjslQSp5LPTUjnxGQjkQM6etERpO3c\/iBU\/nY\/z29OOk7dz+IFT+dj\/Pb0ROA8NTqB4anREaU92fwW3f8AkGf+rr02aU92fwW3f+QZ\/wCrr0RNY8NTqB4anRFBIGqW32qjs6q0i2kqSY0ZCqlKQFkKLmeEfI8Cjs+rv\/KQ2R97q6FDOtfd3GVNbnvvrSpIfocEIUfBXB+VyA798c05\/wCmNeffijlz4fpfJkx9iaB+hIB\/p91MaBGyXUI2v43\/AMlXVxVi335UG0qhV6eX6vUqZAkQFyEdZ2NKmNMODp55EKQ4tOcY763CYGAkAYSkAD5O2tL5Nu15+4ZUhtUJunTXFrW6lxXnLCgw2hDraeHHmlbYIJPYeHfw2T2w3RjXmtdDqSEw7ggR0PzIoz03GlFSUvtKPihRSex9ZBBCvFKlcH+CuoadjwS6ZG8GVxD\/AK7UR\/8AmuPdS\/qqKZ72zkfKNlYmjUBQPt0ZHw699XIKdGjRoiWN0PwaXb+Qp\/6uvTMPDSzuh+DS7fyFP\/V16Zh4aIp0aNGiKCM6rGzKcq9LyrV\/XIww+mk1OXRrdjEZRCajOFl+RxPbzh15DoKx4NIaSOOVldnHPs1UFl1epncO5ZdFh0yn2pMmv9cTJShKeqTK3I78hlASUIaUphtPEqBUQpzCSSFgCeEKcIdSr8rcipUtD9N9w6bTIqy2mIsSzLeW6SS71OPTCGk4T08krzy7YPpl067pN5tzTWYSLUapa2XKamLykSZq3AS4tw5AbQ2kJShIyouLKjhKRpcuCfLoFzq3DoMV2rUp2OimV6NEZU7JbQ2pa48plKclwILrqXG0pKlJcC0nLXBzIM7z7Ryoqn07l222EghxDtUZadbPgUqQtQUhWe2FAHPs1Qgg7q1eeRRrXvayRVZVp+ZN1WCiU7CqEBLTwSpvPRktEHuBkFCs4OR83i2Drxq+3TCXKuqqJplSqVHYlKVzW4xFmvsNJUfFakoaCCs55lBUSckmKFOk3Pd1SvSHNqrdpJpTMNMeY2pEeoPpcU550y26AtISkhHMBKXeofvukklG3InWFa1pzLx28olHt6u0Vp52HJhMtsF6UnJTDWhnBfS45hCme5UVYSOfEjMwOkZR8q6i5bDNkFOR4HXPXTEWt2M244jipaQpSfgJHhqt96t06tYYt61LPhQJl4XtUvcqhs1B7pxWSlsuPynsesptltKldNJCnFlttJSVhQxIk7yoPKQGwk22Ic2mVH3Pud2RGcqkLoLchOtt8koS28tCCpeeyiVhPD\/Vr5dtd6HvlVtztwXtt9qJLFX3CqUN6u01+qUqUxSLdiupDsSVMRLKH5s1TTrag767TaeBYbKCQu3bS3J3EvXeG+\/J8rF+WncTFsU2mOVmue4zcN2E+\/1lPRWYa3XkSfuSWldVSglkqwtL2ca18e8mPa\/cK6qrbfkqQ6xOlPVFKK5uBUy0qhUthCUNrhRWktJROV0lPcekAElSQXkoI4kTjZ1bk+TlJl3VVbOuXcvfK820QY8We0mRXpD63HOBkKaUuNR6dlDikNJWeSGlKyoNENsG3Nh0WFVz5VHlc3dTbou6nJeVTG2xih2+pI6pj09DhxIdbSglT+ShJYW5y5JW6U9jyTt8NlJV7u2fWrd3EavKO974GZLKUzZjJSEtsOsvu9TopSFg8JqSoKI4eqDrFbB7kwfKF3Yp1K3Iuy3RX6YoRmKCiU3PapbsZhh9Trae7Tyy4soaUsdOM7F9fzqRwfJFdVcZvnygKohqvU+RAorraZ9PtNlxUb1CMtTqxIRhxlOTybZQQ6taMthIZW8azsHbTe7YzfZdJol72jc8t1FTXTbft2iphNU+NIWJCmZSV8hHipccYdS2l7mVFsc0iQt0X7LvGr3PPd2p8nFhhlDTyzXLweBfjwHFf6wtqUSZkpXcqUVYyU5UeSlN2ltttVa22lOdZo0d56oTXC9UKlKeU7KmOlSlFTjh7n1lrVjsOSlKI5KUSRLuzeyI28qtcvy5q\/LuK97sRHRWKo+6ShLTIV0ozCAEpQ0hTjiuyQVFZ7JSEoRa2oAA7DU6IjXU4rxGPbrt11O9h8Hcd\/7dFQ8LRbe6kCqXzft3v3A9BuOM75pSaIWkvPVOG0hKVPMJ7LKAUu5KQoDprz4HWvb9uRzbPmVJuOFU63UXVpXAhzGJARgfeKKVFSHCcHioYISrByCDsHvxcFuUC9Lzl1BEj36QZJZt6SWyWWoT6AXGlpCglWfOJWFKBPr9iMDGq1OjwrTW\/cdKnSX6nJc4xYTjYHud2cBWHPBwYWABgEY7\/Brlpm4bp5BNRPUeSRQJ7V3\/AIr+PY\/zXq6LT8Ruktd0Frf+lpBd0imkk2I+T1Dfq6hewB+jXkWyYDG1D9rUuprnxbeqLkJLjn37bikJddZVgDuhxxaf7B46v7Wv\/kZOUSdt5Va1QKc9EjTqsVOF5sIVIkBhoPvkBShlbnM+I+Ya2A10GHvAz6LzDWg4ahMHXfUbvm+\/8qCeIz3\/ALNaF+XP5T9q26bit+2dubSuC67bYeYNVr0GNMcpzaWUrdXGjuJLi8OORkBWFNpWVLWng2eW+hGfHXz2\/wBINs\/acStPXHU6Q4qn3MHJyagFNsGmVnpx6eUB8pKnGZTEhtx2MCkqNOLgKh1U62VGKiKBZFn7hVOxVblWZ6SbgvuHTlSI9Qr1SZlRFyHUFDCixIQPNw0+w4h0oedDaXnOLjbCnNWltNUPKH283r3H2o8m6zI14WFas3zaF7tymnhSQ0jCWGHHX2j68plaV9+RENKioKy6nIQfIY8uTb25Z1v7J+Udb9C2+lyHAwHlPJlwYjjinVNMNCOosJStxxQbbfSnJzkEnWwux23lyWZs9SKZsNc9EmJnOSZ9VuWvwHSquSXAgtymUNrwGFj70qKiWwggqKi4oi+cUrbmkXczfXlE75WZMnVWJekyhVuI+ZU9K6k6gqbZa83nRuiG1NkJy+tPF6M211lLSkZXfeLTfJw3mp2ytFrkul2buHacV+76CKw2hmgy3VuIcfjvvRlFlYZZQeqtkyFNuKSfWWjG5NS8i9pW\/V0XBs95TF3WJVK6tNcuKgtNSXGZhfUodVtaJDQLYUFhIBWWspGQOKdL2+\/k37X7GJodz06DNui4bin1HqyK7NVIm1arNQVyqala0BKnAmRFSOABU4XShRc5Y0RXB5G21\/k6VLbu0d7ttLZ906tIhOwkXPWXXp1UdUypyK+pL8kBxtKlNu4SlLQ4qx00A8Bs1pV2ssKlbX7c23t5RnC9Ft2msU9MhSAlclTaAFvrA\/luK5LUe+VLUcnOdNWiI0nbufxAqfzsf57enHSdu5\/ECp\/Ox\/nt6InAeGp1A8NToiNKe7P4Lbv\/ACDP\/V16bNKe7P4Lbv8AyDP\/AFdeiJrHhqdQPDU6IjVc7wWE7csKJcNGjdWtUQOlhAxykx3OBeYBPbKumhaf9ttIyAVZsbXFXiP7daGp6dBq2JJhZItjxR+6ywzPx5BLGaIWqLUpp9sOsq7FRQQoFKkKCsKSoHBSoEEEEAgg5xrBW7Trpsqr++qwqmxCqX3RmZGmtlxuqtokEtiS53cJDfNLa8kt9UlOQSg7IXdtPbtzTFVVpyRSqi4cuSYfHD5AwOqhQKV\/P2VjsFDSa3sZdKUdN67qU8T\/AMqKW6jA+VBeOf8ArDXze78M\/VfpbPORoD2vF2D1AGvDg6gR58rthr2BqMXw8ux527+yiJ5R9RaHm9W2lryn0pyXKZUIEiMT4nip55hwgfK0k9vDTntTuVUNz6VLr5s2bQ6aiR0ILkyQy45NAHruJDKlt8AfVCkrUFEKx2AJUqB5PQfkuP7i3SK9GC8tU2FDMCGpH814dRxx7v8AySsNkdig6uCJEZhsIjR2kNNNJCUNoSEpSkDASAPAADGNe4+l\/wDmMxdevOjuhQYN\/qTx+2y5TPOF19OGDXkr1aNGjXXKPSxuh+DS7fyFP\/V16Zh4aWd0PwaXb+Qp\/wCrr0zDw0RTo0aNEXFfIDKRnVH3ZbuzF1GpTa3al5xkl1wTk0yDWoKJi1q4rUtmKECSVZ7qUhfJI7njjV5ajj3zqoNIqLt6Bdz8tykWNfEn+DslaVV6zJ0RS0ggYU+ksMFXrDAQ0D2Jx2OmI0nf9TiVKrtmpCD2cMV9w49uEYT4\/wDS1aRHbGo4\/Lq\/4rjyq2VV6rA3VrvBm6N0YsaIVZcbolFDLyk5yUlx915GDjxDQUM9lA4OstbeyW09pVJiu0Hb6hx6vH5qFUVBbcnrcWVFbi5K0l1biipWVqUVHkck5Onrj8ujj8urC5x7qm6htPFIT37fDqtd5diLW3gkUCtVSpValVy1nnnKTUaa4kOMh9KUPtrbcSpDja0oRyCk5HEFKkkZ1ZujVEWltof6OiGL9n3ZurupUrspEyp+6yqJGhKp7ciWWW2etIc6y1k8WwfuXSPrrTkoJQWHynk1zyTfJ7ql4bR3lcESkUFqJS41BlOtTmYzMiS3GC48iSlT7KmUvZbCnHGW+mhPS4DGtsdeWpUyBWIb1NqkOPMhyEFt+PIaS426g+KVJVkEfIRoi0UtK+vJ8u3eaIzSFQLeszb+z1VO6KhU5KUTq1NnvIbZiTZBUp6WjiytbiHFrD63GcpWAnNgQ9q7Y8pKusXnb+3dNsyy3XUv+7EalNw6zciEqyOSkpSpMZRQhQ6nLKeHiVqS0\/RvIe8mKBei75pe1dKgTHSlbsaKktQ3FpPqq6CTwT2JBSkBCwohaVdsXkzHbjpS2ykJQlISAPYB4f7tEWNti16FaNFiUC3aWxT4MNJS0wykBKcklRz4kkkkqPdRJJJJ1l9GjREaNGjREa61kAE58NdmlXcqsS6DYFzVmnZ86g0qXIZIGSFoaUoH+8atc7paXeFkiiM8jYm8uIH7mloN5bt7W1L3fWxbM6LLfRDRHnKaQohElsqygr7JJ48R2zjiQe+BrVuo3bVFvNtMw2FPF3Ab8eZORg+sPh\/3a232M8n61dy9vLiva9KTWazJky3KdBRCGXGHemFrl4JHM8lAYORkHtlROlHaTyLNy13nLfvWxJU+lwytmG57oJp6uS\/VRJUFpUSpCcq6ScgqxlWPHnWaY7UGfnCwAu3G69sm9c6d6TcNAfM8mGmmmE2e9UOAduey3e8kyHGgbA2kwzLhyXFQy7JciklAkLcWpxHfvySTxOfak6t\/I1qV5E0mrW3cW4O1lQUlTVFmNupISQQ7ycaWrufBSWmiOw7DPfOdbaJ8c\/JqZwZfi47TVdq+my8s9T4f5DVpouvrBPUHeQ75gf2K5awV62bQL+tar2dc8MS6VXIT1PmsH+Wy6goUAfFJwcgjBBAIPbWd0a21BKk7Y3AqOz8Bqwt9KiWoVOZ6NOveanjT6pDQkJQZr33kWYBhKw6UoeV67WeSm2i1fJ5p23Pmy9kNw63bFHfbaEmmrcFXhyW0MpbZU351zWypDSG0JUhYSUIbCgoJTi532ESEltwAoUMKSRkEfAdI7OyO38Fx40WNWaIzIcLy4lGuCoU6IFk5UpMeM+hpBUe5KUjJ7nJ0RLyIW1OxtUVX69c0ifd1bilkvTZCplWqoS4pxfm0RoZUStzuiO0AEpaQAENNpR77PtSv3VeTe6u4tJ9zZsWI9Ct6ilaXDSozykl5x9aCW3JT3BvlgqS0lHTbUeTq3XS37Ot2147cei0xmP00FHVwVvLytS1FbqiVrKlrWolRJKlKJJJJ1mgMAAezREJSEpCQScfDqdGjREaTt3P4gVP52P8APb046Tt3P4gVP52P89vRE4Dw1OoHhqdERpT3Z\/Bbd\/5Bn\/q69Nmk7eRlcjaa8mEPuMldAqA6jZAWn+Dr7gkEZ\/s0ROA8NTpKG3M89xubeQ7nt53H\/c6PRxUPjOvL6XH\/AHOiJ10aSvRxUPjOvL6XH\/c6PRxUPjOvL6XH\/c6InXRpK9HFQ+M68vpcf9zo9HFQ+M68vpcf9zoiddGkr0cVD4zry+lx\/wBzo9HFQ+M68vpcf9zoiddGkr0cVD4zry+lx\/3Oj0cVD4zry+lx\/wBzoi926H4NLt\/IU\/8AV16Zh4aqfcvbyeztzdT3pJu93p0Wcrg5LY4qwws4OGc40yJ24qAH4T7y+lx\/3OiJ10aSvRxUPjOvL6XH\/c6PRxUPjOvL6XH\/AHOiJ10aSvRxUPjOvL6XH\/c6PRxUPjOvL6XH\/c6InXRpK9HFQ+M68vpcf9zo9HFQ+M68vpcf9zoiddGkr0cVD4zry+lx\/wBzo9HFQ+M68vpcf9zoiddGkr0cVD4zry+lx\/3Oj0cVD4zry+lx\/wBzoiddGkr0cVD4zry+lx\/3Oj0cVD4zry+lx\/3OiJ10aSvRxUPjOvL6XH\/c6PRxUPjOvL6XH\/c6InXRpK9HFQ+M68vpcf8Ac6PRxUPjOvL6XH\/c6InXRpK9HFQ+M68vpcf9zo9HFQ+M68vpcf8Ac6InXXnlR2ZTDkaQ0hxp1JQtChlKknxBHtGlL0cVD4zry+lx\/wBzoO284+O5t5fSo\/7jSgeUsjcJhty3KJalIYoduUqLTqfH5dKNGbCG0clFRwB8JJPzk6yK+5wPg0m+jif8Z15fS4\/7nR6N5\/xnXl9Lj\/uNAANgquc55Lnmye\/dMNPtyh0uozatTqRBjTakUGZJaYSh2QUAhJcUBlWB4ZPbWU0lejeePDc68vpcf9xo9HFQ+M68vpcf9zoABwhcXG3FOujSV6OKh8Z15fS4\/wC50ejiofGdeX0uP+50VE66NJXo4qHxnXl9Lj\/udHo4qHxnXl9Lj\/udETro0lejiofGdeX0uP8AudHo4qHxnXl9Lj\/udETro0lejiofGdeX0uP+50ejiofGdeX0uP8AudETrpO3c\/iBU\/nY\/wA9vXX6OKh8Z15fS4\/7nSpulYM6LY1ReO4t2SOKmD03pTBSfu7fY4ZGiK3x4anUJyEgE5OO+p0RGlPdn8Ft3\/kGf+rr02aU92fwW3f+QZ\/6uvRE1jw1OoHhqdERo0aNEUE4GsfWK\/RrfhKqNdq8OmxELQ2p+W8llsLUoJSnkogZJIAHtJxrsrMuXCpkiVT4Jmym21KZjBxLZeWEkhAUohIJIxkkDv3IHfWtNbvl3djziRWAmJCp3WgSKK7HWyuLKWhIc6\/VSFlwNKKU+q2ODzmQoLTx5L1h6sxvSOD+byGl17NAB3PgmqCkNO06XUpPhx\/ff\/TlbPJeQogBYOTjXbrXHydajdMy96pQ6le1WqFNtunMxGmKm4267O6hBRI9RCUgNBpTfIDmtTiyv71BXsdqY0XVYtawY8+EENeLF1f8cfRYMzEfhTugk5CNGjRqVWsljdD8Gl2\/kKf+rr0zDw0s7ofg0u38hT\/1demYeGiKdGjRoiNQTga4uKUnHHHf4da4eUP5ZFA2lnxbKseFTrtvCUHFSIiJ4SzSGkp7PSigKIUVEBLPqqWMnkgDJw5GRFixmaY00bkrXysqHChdPO4Na3ckq6bv3M2+sHopvi\/LetxUjJY91qkxE6oGMlHVUnkBkZxnVH1H\/SIeS3Sq7Lozt+zJceE4WnqtBosyXTuoPFCX2m1JX\/0k5R\/ta0Q8pHeSn74blIvhVq8p1KoESkVdp5aEwoDyXnl4Q8tRUvqF8er0wocEjCsg6qVw7o02Yy9To9EqFMcYWsxmoyoxjq9iUciFKGfhAz38O2ubyfUgY8iFra7FzqvbxVg+xpcfm+rxFJ0YzWkbEFzunq2ugK2PsaX2cuPygdn7WsKHubV9waWm26mEGnzWFmR58pQJCGENhS3V4CiUISVDirIGDj17Wb17bb00WRcG2t1MViJCkeZy0hlxl6M\/wSrpuNOJS4hWFA90\/wDYdfF6PFqFXoi6dIvK56WuKX3mmptNQI4dfLaXi01x9VThQ2DhXI4GSe+mfa2+792Y3HjVWhXBIjVqkT2JM+M08qKxclPSAVNSkjmgeKmg4Unj2IA7DSH1PC6XpeKHfn9+Nxv2\/ZXxesYHziN46RW\/Njj5twLbv2s8GuV9tEnKQfhGdTqpdhvKR2936smHd1vTk0516a9SX6XPdbblMT2f9axxCjzIBSoFOcpUD7cC2UkKAIOc66lrg4dTTsuza4PALTYU6NGjVVcjXEqA9uuWqK8pW9d37MprVTsGFNXTWUAyHafHjmQl9TiW0FxckKZTFBcSXPVDgHrpPBDhS+qqB1Gkz1vd5ymXcmltQWl0eNUWaVMlqdKVh90pSFJSU8ShC1oSo8gf9Z2HAc2q7b+tqyILU645zzQeVxbZjxHZT68Y5FLTKVLKU5HJQGEggkjI1peYd1V2fUZddq82dUUTWJkx1mQqAFTm2UnmG2wGXQVNMpAUylPAZUpagpJZrK3GvK5L6qVJr0KuXNWIsJhDQYhtFxGEoKmy40kR2hzcSrmviDzUAcJBODHzMfKkEbditswMNb1tutxoM6JUYjM+FKbkR5CEutOtqCkrQoZCgR4gjBB+XXo1gbNpXvftelW8tTfKlwo8MhHYDg2lPbPfB4nGs9rOeaWoRRpGjRrrU4UnuoAD4dFRC3AjxOBper+4NmWxMZh3Fd9Hpb76cssTZjbLjvrcfVQohSu+B2GqV348qihWNditsaVQxXppjFVV6c9UVMVC0+q2HEAqDpyCfDCSPHJ40JtjL2PTcE2690aVXm5q0R1xo0eY66w1IQoLW4lxpSXieaUlIX6iQSAO2dSTdG1KWNs0WO9zXg0QLFgbX3onxeygMj1RouPPJiT5TWSto041e4sXxYF\/fYreuj3patwOrZoV0U2orTnIiyUOhPE4V3ST3Sex+AkZxkZziF8u3fw1856ZvfthstvnKvG0l3W9RanyZkUxfSdklKmypRy5I9YJd4rCnfX9ZY5YASdt7H8pW1rsdjGfT5VEj1JlEmnvzFIKHmnFNpZSopUeLyy6FBCeYCElXLseOlPBLiOEeQCHULsEb0Lq9yFI4up4WoPcMKQPaODYJI87Eq5NGoSeSQr4RnU6xLeRqCfZnGoWeKFKyBgE5OtNt1\/LbfpV2T6VZkltVHjsxksyXInm\/N9alBXJ5\/kkhXJoNpDfrHPrd8J08zNjw29T7JPAHJ\/\/AItrFw5cx\/TH+54W5QIOuLjrbQCnFhIJx31qhs15aZuJ6bTr6pj0vrFMqiTKRTFJTJjYaCkOpU6oJcQXRleUoPrJACkYUwX9v7bN7VOm7d06qzqA3IltyKxPl05LjTNNTyKsOhakMrcIS1l1JHBxw47ZGtBreBkBvTKAXdiaP7HdbE+kZ2OXB0RodwLH78LZBDiFgFJPfwyCNctYi3Y0eFS2URaq9UUOlcgSnn+sp7morKgrw4+t2SnCUjASAABrLJORqUDgeFG96U6Tt3P4gVP52P8APb046Tt3P4gVP52P89vVUTgPDU6geGp0RGlPdn8Ft3\/kGf8Aq69NmlPdn8Ft3\/kGf+rr0RNY8NTqB4anREa4qOPDXLSFf28+323ri4lz15MaYmKJiIqI7z7q21FQQrg0hShyUhYHbvwVjODix72xt6nGgrXuaxvU40FX3lG+U4jZmQq2oVnTapWH6WqqxHVDEVaUuKQpKeOXHXEcUqUhCRjqNZUnnkfP69tx9wb\/AK\/OhTt02pVPRLU8JNrvuNNzHnubiuT7aULynCkgeqlKUtpOSBixLz8se5bzjin1WxrJvieqA5UWqfX6Gl5u36glCPuSG1AKUonqt8XFBWSFc8JKF68Ue7L6mN1F6XCpiX35i3G\/dGM5ELriz1HODbZHH1itRCUcEg4QlKew5D1THHIPhPc17hTm7im2Oe4J\/wAhahMrOy34M02nTAOtraBpwDr4aDbga3I4+6s\/ZvylI\/k2X8xc1+wriueDIachsyJ9YkdeE2XUh0x0OOKbkFYbSeK+KsBGFpBOvqft7f1ubnWjT74tKWqVSaohS4zxbUjkEqKVdiO+FJUMjscZBIwdfIGHee5toTYt00arMw\/4I+2lVFgtSlJ6yUcVnzht\/kOPIEoCCArHZK153V2f8vNkbeUybulttW4slEhqjOVClriOR5EzzcOhJYU404wpTYCuIQptJUEhZ8Bv6NNDh6ZHNNNG3qcR02OoEeRtz\/K2dN1Zubgxmd4MrQ7rJcXE0bs3xQIFey3N0arLYzfq2t+6FPuC16VUIcanyhFWqUWVJcUUhY4qaWoZ4lJIOCOSe2CCbN10EcjZWh7DYKkWPbI0PabBSxuh+DS7fyFP\/V16Zh4aWd0PwaXb+Qp\/6uvTMPDV6vU6NGjRFqH\/AKQjdC7LXt+0Nu7eqsmhwLzlzPdirx5BYcTDitoUqMhwYU2XS6MqBB4NuD260Odq1PoVFZg2m3S3y9KTFgsU37k0tbnqjmSojPwqwf79be\/6Su3LwbqO3m5OWl2bbrkuBICUnMWozFNIYeeGe7RShTee3FawD9\/kaW1edyrNGn1qoKfapspupzS23xCGSFhpzCR\/q0qGT4nilRyca829XMlnz2sfZjDbrsTvtx32HPdeReuo5sjVGRvsxBtgb9JO9jYcnYc96peSj0dbL89iRDjpYoa1V6pLbdUUqecS5xCMpBWoJSogq7DsB3OdbSWF5PlqRqxuNakWF55ftj0zqxrfA6EO4qnKpQlxUpeUttbwbWXULSVYOEqKkJUUjXGqNVqXJrlNs1qCiqPpjMyZEk8mzDIfI4N5wo98e0ev38NXdZdJ2j3Wp9Cqe\/3lSPUCr0uAaO1b01HTlREZALcZ6QVNyEqASkuJaWpYASSMcRj0H4OQ9zp2BziGkNLh4skg9r8X9Atf0x8DNkc7JjEjyGlrS4CuCS4E7gnigduQFQty1G3FXJVaE8+YP8LXBp\/Gcp1nq8G1OtMvpUQ8GXSppLvI80spIUcnSDW6xcVOoVHkXI+zVa7blZRFeI7uyWXQekOXiokHPcZ7d+41c1w3BtbuNfUW39ptq1Uqx7QeUtVWq+JFRrk5scA5yUVBplI6hS02Q2VKCinKUpTRq61TnbhvJMKlOVKlRKg3PE5pzpusFagh0IcI\/kq7JxjACsEeOrnRxMz5IYqPTTnAbhpca6Wn3B3Hftws0mPBFqcsEIDg3pc4DhvUS3pafcHcd+3CyO3NgS2bqupdNuMKqNHnpqlNVFOJMKUHEuodSpScIWChIOPHj38Br6neQ75WdS3to0jbPcyI3A3FtOHHVNc6iA3WmFBQ87YSMHIISHQBxClDGArin5nbXRodoV66rdpkSa4Gg09InMNFUpzqAnBDhIUR7FAcfWPbPfV8+RaqiPeWvaHn8qpQ3G7bq6qW0vClSZRRhxt9QUe3R6jg8RySnw1I6LqWSdVdiuNxua0i9js0G67X4UroGsZTtbdhk9Ub2tIvY7MBuu1+F9ZQSR31OuDf3uueu6XpSNYq53KW1Q5RrbLb0BaelIZcaDiXkrPHplBBCuRUE8cd841ldeCtUaDX6eul1FtTkd0jqIDikcgP5JKSDg+BGcEZB7HRFrZudtPc9uUSfc9hXTR41vwobkwN1lp59xtviCG2loWFOe3iFgq9ZCeR8E4XyX6wi2L1qPvzYEWo3DCCID0iSlyVKeaK3X0FtscCpaQVJS0pQCY58Ow1Y++VmUSjW5Q49NTOisKrLKExmqpLRFSltl15KExkuBniFstkJKCkAdhnBFO1qrO29IplxxjLU9S5bUtAipCn3OC0rLY+AKCeJyQOJPI4JOoTJLMXKZ0DlbLAXsNrbWkUqdIqb1wyalMZbkhITTTw6beBjkrty6ihx5esQOCAMesVsWlAvbjyHW5bUKhRYieXVgreeckL8cYfSAlBxjI4LAOcKIwdM1OnN1KE1NaacbS6kK4ODC0H2pUPYoHII9hB1NrWXp1We8tS3Ko9Acmbc0tdSlFQQWGm2its5KuqouLGWxgAhAKzkBPHPNuyirHiNVNvbcty06LHo9Hb6TVSdDKnQpJLzZS4HkKHihITxIWP5RSPb309Q1KDSMWTPyP0RguIPcDevvwgx3Zh\/LsJBdsCORff7L5+VOS7C90LtuWDUGKjND9QlPT2HEKfcBKioqUkD1u5AGPHwHca8tErFVky24tWkMJWIiXXWzxS406fFAx7AAo5+TV8b8ViZQaPTZLVJiyqaZfCWmVGTIjBIQpSQ4zjJzxACgR4qHbIIwe2e3sK6qTLrl02lSqe5Lb82idCCWes1gEPKQp1WDy54wEDBPbBGIvTP+0bkR6NDruqYbWQhxYBHILNHgsO\/CiZfwO05uhZwaRLkTlojlk\/VFRt1Ab\/ADcX\/CT6Pt1bNYpVHrVzUWBLk1+ou0+FNfWHHWnFLWhsuJUkAtDpgEcilIwcJBUobZ2lS7El3w1YEColEhBVUFQozhUhUKD0Eht7GUpHWkMAJPcpjj5SaMudm3ICGrAiw1OQbeYdqMxLichSlJ5IIUFZBPUWoHsc+HhnXssWbWNsK7Sd04sZ40alwoMCuRWmSVIamLcKlj2DDrQJ791BpOR21w\/oj1NJ6m1yVzgf\/EPkezqO4abLRXmqH3U5kaBF6Y0aOUcRtY11D6NLvp3IW9ralEdwBrnrF0KtU2vQI1TpElEiHKbDjDyM8XEEAhScjuDnsdZTXrFEbHlYGuDhY4XFwgIUT4AHXyl8oWzL6snfW6qVIsqbKZumYqRTzEgPOsz2HHFlPTS0OJdSngkpA5jpp7Y4qV9U6jKTCgyJamXngy0twtstlxawAThKR3UfgA8dU9bHpt3MpTqbiQ1Y1FlSV9N1jKq3JhDshKkFIaguLABUfuqwFEAMrwUauVjNyG0eQt7CzH4Ty5ou1pns+ZVu0iqV+4WmI8iYWAiBGaQ0WQgBhiOlHqpS4eKQU9glxage\/IlhbqlNocpT1RsdyO28OpIebmsSlsqHj1kdTkSO\/dvqYJUSQCVayXlZ7XUraq7KLXbSnw6BQ5TMVbMJbiejLqEZ9T6uRcVyLqwG\/unLK+OFE8RpIpdz0KtwWqlTqk07HfTySorGSP7fE\/D8xz37a+evUeLkaPlSNkZ12eaIA2FV\/fZe36Fk4+rY0czXhm3BIJ91sV5Me4ZYvlyyW3HGaRWIzsiDFJBbZlNgKX08dglaOoo47Ep5eKiTtcjw1pf5ItGcujc2RdMFrrUe24jzCpqP9X5+6EJDCT\/KUlkuKUB97ybz98NbnpPHI\/t1656COUdEiOXd71fPTey8s9Z\/lhrEgxiK2uvNbrnpO3c\/iBU\/nY\/z29OCVcvZpP3c\/iBU\/nY\/z29dmuWTgPDU6geGp0RGlPdn8Ft3\/kGf+rr02aU92fwW3f8AkGf+rr0RNY8NTqB4anREarfeDaG39zLbqcY0elpr7tLkwqZU32jyiOLQQ2eSfW4pUeXtwe4GfGxl59mtUvKe8ryds5Wp9n0yPS4L7UVlXupUHioNKWMkpY9XJwRxUV45diggHOnnTQQwk5G7T2q\/4WrmTQwxEz\/pO3F\/5Km92PJwe2g26lbg3pdcJFTcqbMRql0tIeZcDy+JUFvJQ46pIIdIbQjgltwnqAE61ms64a7Wq5U50CpxqbIjtqYiofZAUxGdV91bWOQUrHQYUTnAJPiFJ17l1mde0hFwVJ6BNgOxpEaXUGipbtXU4R1XXhwACipJKgCSSTg4IGkzcCNEs6npU3GXHaekyW5sqW0H1tSmylvpqU8FcSClxJ+VAHwa84l\/IZTXQRxljyAAP1Ct7v3O23hQunYUL\/UMON6emDJflDJT8rWuoucHF42dvXk8LI2lekOiUuPTLijSXJiEGS35uUr87QpZUQErKQghRUBnKcYGfEa222k8lvafdyNTp0TcWpsXVTI7cqrx108rSlh5a+i4z12GSlwpQAoEOttryAnHEq1UtJ2oXBblMrE+nwGKvyTDVLlILbbTK3AhTyg2hSwnpkrKEIJOCEpJITqy41h7obaTpNTRJqsiqER2QLVrFTltyKQpsOtTkvMceUPlhPJXgQrJynjqX0rHgLZ5JIS9w7Aih5NEggEeOVE4MD\/zOQ90PxC3q69wdwfmI3Fg8jm19QbCsu3NuLWg2hbUVcem09Kw2lbxcWtS1qWtxa1d1LWtSlqUfFSidNA8BjWlvkR3pBn1qsU58XFVK3VWuUqa2+XqbHZbUstdYLWVIkKC+BUeXMoABSBjW6SfAZ+DXYYGQ3KgbI0UPHj+F1+DO3JgbIwUPHhLO6H4NLt\/IU\/9XXpmHhpZ3Q\/Bpdv5Cn\/q69Mw8Nbi21OjRo0RYy4qRSq7R5NHrdGjVSny2y1JhSWUOsvNkd0rQv1VD5D218WrzrtYuSo1\/cafQfcubOrrq6pTVIAVFjhzoNU8N\/fcmmuCAjAALaQB3A19tXEcwBjw186\/K28nzc2N5RVW3LtnbisXXb90x6c8BSGA+uNUY7ZZPVbCuQPBLSg4Rx7nJBTrn\/UeLNkYlwN6i0g9I\/6h4XLersTIysAHGb1FhB6Ry4eFpRU7rt6i2zGjzY9SkzaS30YNSgspcfSkKw0VjIW2tPZKgtIBx8uNZO6r4rFCosaq3Pb86Qmpt9RmZSoHSdilSc+uha1AK7+I+AjvpxuC3xZm61wbd35FjUaq01iKlyE5IacK2346HkLUpOQs\/dEpIBITgj26wl2W1ui21TaLZt9eawnnSyh1yKlS2GwhRHrjJIASB4A9x37Z159\/hMyWwZDOh12eskbEXQIG2\/I49l5XI6GLMZjZUfw3X1HrLhsRZDSAaIO5A2PFLA0eVWl2i\/KlVN6kUid99Nqj\/KUWyMAcU8W2e2eKRnGfm113LdZf2wqFSt2hsN0yayp+Y\/8AeqeQHSgpSMeKscitXgD4E+E0XZq66\/VY1V3RvVyt02muO\/wKSjgnmhZSFFOcEEDJBA8QO4zq1dh9hav5Zd51+wrer6LU22tFlhiqTocQOvTVuqP8GYUcIScNrJV3Ax96oKxrfw8aLUc0RY9SFrupxFhjR47Fztu4rZSmn4UWq6g2DEIkLXB7iLEbRxVmi5x53FCtlWdvRUR66iJZFDr91XXfLaHIsalqcXMdb++wOJAbZSAkEk9gPgBxvf5EHkWbh2JuCPKC31RDgXC1Aep9Dt2PITINLad7LdeeSShTqk8k4SVDDiiTnAFx+S\/5EG1XkuyZlbtubWbguCdH8yVV6y+lx5mGCkpjtJQlKEI9RJPYkkDvgAa2JCR447\/PrudN0aLBcZ3HqkO1nxxQH0XpWk6BDpr\/AMw89cpFdR7DsAO22ykAjx1OjRqZU+jRo0aIkreGzaPfm3tWtitMqU1MQlDLrTimnYzylBKHm1pIUhSSrOQfDIOQSDUbXkz0uJuNQY1S3HvOpRGm5FWbhuOQmmnfNnowDTxZjIU4hRf7o7dkkEnVn7wSdzHaL73tt7PYqkqsNusLqEqY0zGphAHFx1BWHHASTjpgkcckHsD4q3d1yJ3cty1aNZNXkR0ofTVqw7GcRDixnGVOBLbxR03V9VuOkpCgQCexOSmx0LJCHOG4V4c4CgVl3buuE3MqBBtxDtGZqKKU7JDyg\/1Sx1VvBISUhlGUIypQJV1MD1UBzK2C8iTbiZjWC1LmTZTCwoKDjLsp1xtaSCQUqQpKgQcYI1LtmwnXpSuvJTGnuqflQwsdF5akpSeWBywQkZSFcTk5BydZ9ppphtLTLaW0IASlKRgJA8AB7NXqxV\/vXe8+wLElXRBdbYER9kPuLI5JbUrjhsKBSVlRSkBXbuSfDWoO9t87rUCoyqzdgVIuWq0lUaDS4ywlmkrLaXOmFc+68rj8\/WHIg4UrijO7l72RRdwbemWrcsRb0CYlPIJXxWlSVBSVJPsIUAfDHsORka1L3q2LuCxpEKo0yq1G6abGW4+TX5HWJ5JbQWFupKAlCRHbKApSASpWFApCVRXqCDFysBuPltuMvBeOLaLIHVv0jqDeonYDna1GzyZ8ExycUX0t+Uc738xLeXfLwLB570q62pZvXcWzqHT4U6mQkUvzpbsKo1FTD4kpkgxgG\/ukgJbCSQVhPI8SCQARaFDbqltwaDHr1fEoy4MtanGylTKUMOobbWFlKVHmlQXgg9+WCNUvNk7fyEO0+sW\/WaVUGOJlNNuNrLef5qFhCY6SDnAjuE4GCc6wLNOp9NuKkw0z4swRGH0B6Mpp5spVTFrKeTQ4npqVjA8FJPwa82yvw1xs3TNRyjE9gDHPZ1xM6Wnq6nFskb3NeSNgaAA7K7C9fTOzoYJmscZHhh6HuBaTxcb2hw\/dNY3Hs4T6vT6lDm112rNBVScjNNKSltXNsMOKLieZSEEEJ8M+AwdXx5N1zUHcmVclDYD\/AJtWqcUOtPJQFI81fKHG1pPNJCxLRkHkFIUMghWtXI7dGtu9Uu3BTI8xymVJyczGfe9WZAddU4ggKISoEL7A5SFpwcdxq1vJ43GsXbG5J131l12n0u56hUnqcxHjqd5tKUgktpb5ZT1AB2KhkAA47a6LF9F4fp3I0\/Nwep4lYxwfYLSXAhzA0CwWAAn225XQf8+YGt4s2lyQmKeJzmydR+Wmn5XCxw8cb8q7bKmU7Yjd+RtlHcdn29cADtJKCFvUx\/lzdirUpWemA8X\/AGYDnLClLWtWxUSU1Misy2c9N9AcRnxwRka17t207l3c3oi7p1az5NuWpRI8hqCxPa6E2qyHGiyt9xo+shHTKUjn3IZbx2JxsO0jghCMdkjGvSc4hzmuJtxHzfX+tVfv7rmtKBZG5jRUYPyf\/Xavtdge1LngaOKcY4jHza6Z06HTYb1QqEluPGjNqdedcOEtoSMlRPsAGsMi\/wCyHHmo6brpfVfKQ0gyUBSyfDAJ751pKVVS7w+SbQN5N0aNuLXLnnMRoNMVSptIQCWpTWXlIcQ4lSVMupW+pQUM\/ep7AjOq2258gaJSN06zuRu9dcO\/nZNSVJjCfT0uGVHW06gty0Ly2tSVKYUlQBI83SBxSeI3D11uJURhKc9\/h1hfBG\/kWszciVgpjqWj1lXpK2a2ZqVq0CrChLiXtIpQmx2GQY7LcBMgpQl1CmgVltSPWScArV2Izq0fJW3nvDcefVqTd9QnSnmWjIZbnRWWJMRSHek+y6GUpSSFFOAU5GFdyCNV7Nu25fJ+v+94182Aqr2xWaw5UI0iXGcRFyp951pxt7praUoNvIQpJ4qSpoHXPyMLmpt37t3jX6bU6dK87FSnvNwZJeQyZk8PIQokA8h648P5OfbrhYcrIGpY8TZHAglrmUemgHb2RRs1VFddNiwO06eR0bTYDmvsF1kt2q9q3W6DfYY0o7ufxAqfzsf57em9AxnShu5\/ECp\/Ox\/nt69AXFjdOA8NTqB4anREaU92fwW3f+QZ\/wCrr02aT94n0Rdp7ykOJcUhFAqBIbbU4rHm6\/BKQSfmA0RN48NTpSG5tu4waddXifC06r9n1PpNtz8W3X+iVV+z6ImpQJ0iSIFkVmtsXTXdtlLrNPJYiVCTb\/XlNJyc9NwIUpCM9\/EZz8+sj6Tbc\/Ft1\/olVfs+j0m25+Lbr\/RKq\/Z9UIB5VKVB3j5EtrblXFV7rO4N30tmrPPy\/M1xmVKakuLUtXJT7SlLZyrs12KUjiFhICU0fuf5Gt77VoptF2rsy4r4p64zZkS2ZERKxJ5L6qS2642GkEdIpSgFAwckHOd7PSbbn4tuv9Eqr9n0ek23Pxbdf6JVX7PqLyNFw8lpa5tWbJGxtRmTo2HkscxzK6jZI2N\/VafbPf6Nq3BZEOs7i3Nd9Cu6qpcfqUKlTIfm8bk64pto8o7gWtKHAFK5KBVywSnGr38nnycKxsHKrrKt0qpc1Fqqm1w6ZJgpZRCcBVydKgshbiwUhSkpRyCRyB7Ysr0m25+Lbr\/RKq\/Z9HpNtz8W3X+iVV+z624sHHhIcxtHz3+\/lb7oWPl+O4W+gL7kAAC\/sEyiO2oZW2MgEf3+Ou4eGlT0m25+Lbr\/AESqv2fR6Tbc\/Ft1\/olVfs+tkCllpdu6H4NLt\/IU\/wDV16Zh4aq\/cvcm3ndubqZTT7nCnKLNQkrtapoTksLAypUcAdz7dMidzrcIz7nXV+idV+z6qibdGlP0m25+Lbr\/AESqv2fR6Tbc\/Ft1\/olVfs+iJs1wWjIwn2nSt6Tbc\/Ft1\/olVfs+j0m25+Lbr\/RKq\/Z9ESLvd5J2w2\/T4re5G28KrVqLGLEaoIeeiyQkZKUFxlaFLSCokJUSBk4Gvl5SLN8p\/bi1lUK7PJuv95y3UmM9PiUtUpCyVEIU0pBPUTggckFYHiTr6+Hcy3D\/AOTrr\/RKq\/Z9QdyrbP8A5Nur9Eqr9n1G6lpGJq8Yjy22AbHZRGsaFg67E2LOZ1BpsdjfHK+bnk4f6Pfczfaj1O+PKVr132NS6koe49u06QiPM6eclySlxtYQkjCUoIC8hRUEjHL6EbC7CbceTrYjO3u2dHchU9LypMh59fUkzJCgAp55zA5qKUpHgAAlIAAGNZwbl22nwpt1\/olVfs+p9Jtufi26\/wBEqr9n1twY0OKzogaGj2W\/jYkGGwRwMDQNtgmseGp0p+k23Pxbdf6JVX7Po9Jtufi26\/0Sqv2fWdbCbNGlP0m25+Lbr\/RKq\/Z9HpNtz8W3X+iVV+z6ImzRpT9Jtufi26\/0Sqv2fR6Tbc\/Ft1\/olVfs+iJs1xLaSrmR30q+k23Pxbdf6JVX7Po9Jtufi26\/0Sqv2fRE2aNKfpNtz8W3X+iVV+z6PSbbn4tuv9Eqr9n0RNmsfVKNTK2wIlWp7MxkLDgQ82FpCh4KAPtGex9msH6Tbc\/Ft1\/olVfs+j0m25+Lbr\/RKq\/Z9UItEvXP5P8AtfdbL0aoW0lpC3C7wjgIa5kAFRawW1HtnkpJOfbqt1eRlbsSa5KoNfERJacZb84gKdWyFoKFFHTdbbB4qUMhsEAn4dXT6Tbc\/Ft1\/olVfs+j0m25+Lbr\/RKq\/Z9RmRo2Hkxujeyg7miW39aIv7qrSGvbJ0guabBIBo+Rd0VTEHyR11FDTe4F6orCGSpaEw6Ky0UKKsg8pJfB7ADCUp+fw1Z+2O08Tbl2pPt1ORUnZqkoaekNhLjUdOeDRIyCRk5KQhJ7YQMd8x6Tbc\/Ft1\/olVfs+j0m25+Lbr\/RKq\/Z9W4Oh4GnUcaICrrbi+aWzPmT5JJldd8+\/wBaTOhJC8kHXbpT9Jtufi26\/wBEqr9n0ek23Pxbdf6JVX7PqWWoBSayAfHXEtoPs0rek23Pxbdf6JVX7Po9Jtufi26\/0Sqv2fRVTZo0p+k23Pxbdf6JVX7Po9Jtufi26\/0Sqv2fREzqRlZ7HXFthDf3qcd\/YNLXpNtz8W3X+iVV+z6PSbbn4tuv9Eqr9n1SgEpNYGNJ+7n8QKn87H+e3rt9Jtufi26\/0Sqv2fSlupuLQZVi1FpqnXMCosAF22Kk0nPXb8VKYAA+UnVUVsDw1OoScpBxjI1OiI0p7s\/gtu\/8gz\/1demzSnuz+C27\/wAgz\/1deiJrHhqdQPDU6IjRo0aIjRrg44lsAqzgnGqwuHfGAZkuh7bW1UL4qcFxTMpdPebZp8N5KuKm3prhDfUSeymmuq6nI5IAOdYMjJhxGfEncGjyVc1jnmmi1aWjVDQNzPKUjvLl1zaOxpMFBCvN6ZeUgzCj28evAbaWv4AXG0k+KgO+uqveWhtZaVRYt267Y3Ep1xSjxjUYWhOlvyVY8GXYyHI73zodUPl1p4us4GYSIJWkj3V7oJWfqaVf2jSXtNuxZ+9NkQ7\/ALGky3KZLdfjlEuKuNIYfZdU06060sBSFpWhQIPwZGQc6dNSQNrFVJY3Q\/Bpdv5Cn\/q69Mw8NLO6H4NLt\/IU\/wDV16Zh4aqinRo0aIjRqCcao\/ymdzL9tSPau3u1LbCLy3BqiqXTpsgAs09ptsuyJSgQoHptgqwQQcHsewNrndItWucGiyrx0a0Urx8oTyRdwbauq5t15l\/2dd9ZRCrHnr7o83ecwT02HnHAykIS6pAZKRlASrA++2mtrfPb+5txLo2wptVbVWrQDK6mC+0UNBwDiDhfIKySCCBjHygatjk+JYIohWRSGSwRRCsXRrzImJU4EltxIWMoJ8FfN\/26406qQaq0t6A+HUNvOsLOCOLjayhaSD8CkkayLKvXo0a4qUE5J1S0XLRrUfym\/LcnbY3wztHtBaCbrvQrbRIQ4h15lh1xIUhhLLJDj7pQQopCkhIUCSc4ChTPLZ8oDa2t0v8A\/ek2S9wbaqrqWU1amw3mvN1K9qkqdeS5gZJbCkOcUqICiOJ3m6fO6P4lDfgWLP0HK0jqEAf8Oz9a2H1K3n0a8lLqMKrwWKpTZLcmJLaQ+w82oKQ42ockqSR2IIIII+HXr1pfVbgIIsI0aNGiqjRo0aIjRo0aIjRrHXCK0ug1Ju2pESPV1RHkwHZjSnI7ckoPSU4hJSpSAviSAQSM4I1pfQd4N1tt9xKRUfKW8qDpUeZIeZRDt6yGo9uuPt5C2DUpCFPuJB9XkgJGU4K851Y97Y93GlY+RkYt5oLeHRrUPZDfnda49wotBoNYTuZYNWcceRWqrANArdIigqHWW2pttioRgtJbDjCELSpSQ4B6pVt0n59Va5rhbTaNe14tpsLlo0aNXK9GjRo0RGjRrqW8lGcnwOqE0i7dGsVTLloNacfZo9agznIqy0+mNIQ4Wlg4KVBJPFQPsPfWTQoKGRqjXB3CoDe4XLSdu5\/ECp\/Ox\/nt6cdJ27n8QKn87H+e3q5VTgPDU6geGp0RGlPdn8Ft3\/kGf+rr02aU92fwW3f+QZ\/6uvRE1jw1OoHhqdERritXHxOuWlzcW7I1hWJcN7zEFxmgUuVUltjxcDLal8B8p44Hykao40LRVbe9zVTdW8axtfb9Qm062LcUhi6KlEdUzImS1todTTIzqSFNpDS0LfdSeQDiWkFKlLW2zUekUugUqLRKHTY1Op8FpLEWJGaS00w2kYSlCE4CQB2wNK+3NMiWDatu2ZW6lCTcU2O5Km8VJQqoVNf3eoSEJPdRU+644rHhzHgANOgOe\/b+zXz96l1uXWMx1n\/DaaaO31910mJjNhZY5KD4Y14q86+zRpi4yiHUsLKe+PZnH+7Xt0tVy51R7vpNk+4VQfbrMSU6Z7TYLEctpzxWc5AIz3xgKLYOeYGub6C8EN5pbRruvb5KVMpNM8nLbk0ZoJaqFtwKo8vGC\/JlMpkSHlf7S3XXFq+VR1bQ8NUD5Db80eTbQKPPcUt236lWqCkq9jUOqSo7SR8gbbQkfIBq\/tfT+M4OhYW8UP8AJcm8U4pZ3Q\/Bpdv5Cn\/q69Mw8NLO6H4NLt\/IU\/8AV16Zh4azq1TqD8+p1g71uyjWLbNRu24JRj0+kxlypCkp5KKEj71KfFSicAJHckgDx1a9wY0ucaAVQC40F7p9Vp9MiOT6jUI8SKynm48+4G20J+EqVgAdx\/frXXe24Nmr6uCy7ypHlAWvb1xbfVZdWhSjIalxpDKmiiTEdAcR2dayMpXyGOwV3BrG7biq1+zpV57jyFNxmQqRHpK5JVCpDCRkAoB6bjwAJU+QVZKgnijinSLUAzclElV27UvRreSw4+1SUkspEZIJKpCU93FKAJ6Z9VIKQUlWSfIM38V4GZbosOHrjaa6r\/UfDBW577n\/AEvvML0FNkQh08nS4iwK4+v+yVfKl8sBW\/M+0LcsC1pdPo9Gr7VS87rIaSZ01hta0xShC1BAKUuJJCld1gHBSRqwd+vK1vfce17gf2HuqhWjQqVTqU3WKioJl3A89ODKn0QY7TgUPMo8kLWscl9RKkowUk6RaPsfYSbWepNRs+lx3pzzktYaYQvzN1a+aUMFQIQlBAGAOKsHIIUc+ehWyqFSZVEokCE+3TnDCnUJ9sBlRACgphxY9VK0KSpKV80DlxBTxJF0f4o4znSCKMkggbkAeLsX328eSFXE\/DXNa8uycgU4Xs0\/6nwrt2Kszeq3bUs3eXaW1ZB90mpFPvCyKtXZrEapBtxbbNWhKnFa2HnOCXCh0eshzBwoZVs7tJbt6Uz3y3NfcSDTqndVVRUvcqDLMpqntoiR4yGy+UI6q1CP1FKCEpBXxHLjzXqxsfv9UdtEMMTqjLqFiPK4Px5XJyRQiCUqW2VEr6SD9+wc8Epy3jHBe8MeWxLYbkxX23mXkhbbjagpK0kZBBHYgj269E0LXsXX8cz4xojZzTy0+D\/oVzGs6Jk6FkfBn3B3aRwR5H9F364LAIIOuQOQDqFICgQc9\/gOpoi1EL58eTnEp9G\/0h+58S9GgmsuqrD1G85xlZdksuoLefFZiLBGO\/T6nszrZ7yv1Wmrya9wDdAYMcUR9cUPAf8AHsfwQJz\/AC+v0uPtzjWL8oryRrS31qkG8KbcFQs+9aWlKYtfpnZxSUEltLoCkqVwUSUqStKknwVjtrW7dbyI\/LEvxiPFuDfGlXpCp\/8AxWPUZ8mMnkOwX0ektsuY7c1KKu5799TLXQZkzJHydFAAg+3j6qGe2fFhkiZH1XdV7+fotpfIvemP+TBt85Of6rgpXBKs5+5pdcS2nPyICR\/Zq69fNywd4fKG8gehRLS3t23dq1jTJLiabIiTWnHI7xJWttlxJKSFZUsNOhs9llKsA6uqxPL7b3f3Epu2m1m0FXdqVQBdW9XZ7MJqKwlsOLeWGQ+SAgpIA7q5px2VnWDKwpPiPkj+Zlk2OK\/vlbGNmRfDbG\/Z2wo82tuPDx1HUR\/PGktdI3MqjCmqjfdOpfI+NGpI6iO\/cdSSt1B\/whpTlu2FOmR2lXHdl9VKMtTCmqXUn3GeqnxTJTDLUNtXsw8Ej2ajlIqyq1eFp24B74LmpdNz4CXLbaJ+YKIJ1iWt07LkOMBE2oJZkPNx25TlImNxVOLUEoHnCmg0ApRSkEqwVKAByQNYCh2rcjClv2zZNq2CzKB662ojcme5n+clngyhQ8clbyT7RrPwduKMqQ3ULll1G45zZbKXas8HGkrbXyQ4iMgJjtrCgCFobCuwyToibtGo8Ow1OiLB3tLMG0q1LTUUQFNU99SZSwSlhXA4cOO\/qnv279tfHKu2jeF\/0q06fXrqvN02vEnNNwaq9ENMglQSIzMMNKUt1Pq4W66AeGAACMa+rflGU+t1PZ+5olAaddlLjIWW20lSltIcSpxKQPE8Art7e4187SmsJeUFOw1jztI4qbXlLHEc0n18Kd5ciFdk\/ejj2OeO9S6nPiSCGOgCO65\/WpXtd0A0CFbHkV0ncepXht\/CRddwVW2dv6LPYnMVSjoiIpzz5WlMRElPeQkjoKAyoJDROe6Rr6CoPfBPfWsHks1mg7e7OVq9rwq8KlUyTUnHkyZLgQlTaG0oGM9z64WABkkjtq7dsr9a3Hoqbop1JrEOnyioxzUoZjLWgKICkoV6xSoAK5HthScdwrE5pEzpcVjpT8xF1\/AUzpuFktwRlPaek7E9rrYD7J10ageHfU6lVnRo1CshJI8caXb8vWl7eWXW75r7pbp9Bp8ioySkZV02kFRA+U4wB7SQNUJAFlVa0ucGtG5TAFjw1qF5ZdmSqTRpNYpO7twRn7ikdFm0HJsiU3VXyQS3EYBVg4yS2UlvJT3aHc0JD8pvyiN1qbVL5oe8vvUnkLfpVCg06G7CZQB6jTi3mVuOqxjKyccicJ4jA5eTx5ZVrw9y7hu7yjKLXKxdzUBtiDWYsFMpMNlACXI7cZgcY\/NalLLiey8EEpI9aEzsiDOZ+W89+w\/Yqd1H0fqkMYuMuB5q9vrslWR5PXlF+7ds0CTS4ls1S5JMhFJjLlIM4tsMl16QSgkNJQnin74KKlJHHxOtpfJG8oafIl0rZG6402RLQHm6fUXpC3XzwC3SzJ6hKuQShwBef5PEpTgFWP208p\/Zjdvymvfi\/dTFIgN2wijWymsjzVUt92QVylNlfqpXlLTYBUFKA7AjV70\/Ya2aZvareaiuCO5JhPsTISWkqbcmLUgedJV4oVwDqVDwJXnseXKNw9KdiPZLpr\/kDiHA72P62uT\/AOHTYbx023c3feuf5VrA50n7ufxAqfzsf57enAADw0n7ufxAqfzsf57euuW8nAeGp1A8NToiNKe7P4Lbv\/IM\/wDV16bNKe7P4Lbv\/IM\/9XXoiax4anUDw1OiI1VHlToce2Du6I0spMqMzGJB\/kuSGkKH9oURq19Up5StwmQzZu1VN4uVO8bhiSHU+JYpVOfamTX1DGOGGmo\/ftzlt61M+ZuPiySvNANJ\/hXMaXOAC4VerViBVGYbpjSIL6pfnVQQ8lMmnKICmUoZ4KC\/VUoFRUCAkEhQONZO2Lopl0RHZVOExKY0l6I6JcZbC+o0soUoJWBlJUlRSoDBGCO2M0rd1UhouekuXbTpEISKpNrUmr0h1camxmobZDTtSeJR2XHDYIc5JKkFOShtOudHuGq0unRK1XH0yJkdmGyxcNNhJcYlmXISkpaaQpxYbyGeZV6uCFjslRT8hS649koc1lxk0PJ3LSRz1b9rBrcAjddszFtnO62AOACoewZ14apVYVOhTpsl9KW4DCnpGfBKAlSsn+xJOklvcSp5nxKnS24XXmGHSZUHqTcp6AV1n0BI6RS4HQQSQOKcqBUNeJioyN7rkO3dJaLlt0p1Bu6oAZbWU4UKWlQ9VTjv\/LJST02cheC80ddHo4GuZbMLD+ZzuaugO5J4AHB3525WnPcDC9\/ATz5LVtS7Y2ItWNUIjsWfVWHa\/PjughbEuoPuTX2jn2ockKR\/7ura1wQ2EZA9uuevqCGIQsbG3gAD9lyjj1ElLG6H4NLt\/IU\/9XXpmHhpZ3Q\/Bpdv5Cn\/AKuvTMPDWVUU6obysqotNKs62MqDFWrvXkdyAtMZhx5tJx7Q8GVj5WtXzqmvKot+TUdvodzRGi4q0am3WX0pHrGKG3GZBHY54NPLcwO6ulgdyNQXqeGbI0bKix\/1ljqrzSktHfHHnwvl\/SHC\/wB1q1fzin3LeoPHMeq1VIlAZ9Zpll2QE\/MXGWwc9iCR7dee+Qt23XoXNtPnkmJDUXBkFL0httQx7fVWrXoux1tq4LRdUch+bJjpx3BKobqwf7mj\/frwX4tSKZTnPugSa3S+QbVxPeU2AM5HbkRr5Ew2lrsWNwrv9+pwJ\/gD7L6CY4GKV3v\/AKD\/AHWdQSE98ZOM4+HSxPBgX5AcQ4eNXp7zDiceK2FIW2f+q46P7B8GmhR5esPh7fLpcuTKbhthafvjOkJIH8zzN\/J+bPD+\/WHT3EyuB7td\/kVJzCgD7j\/MLwS20Uu7WS20UMVxlzrEfeGQ0AR\/7y2yrJ9oZH9u2nkh3TJrG3c61pSXM2ZUlUaO44rkXIhZakR8fAlCHwyB44Z1qbeiVmRbz7OOozWG1Ae0pUy6hQ+bCyT\/ANHWzXkepdci3lKacUYyKhEilBTgCQmOFrUD7codZ\/u163+GGU\/\/AIoxoOz4z1fVp2P7bLhvxDgY\/Si8jdjxX\/6G4WyCfAfNqdcUZ4jPwDUOZKCAMnX0FwF4il6+dwbM22ozlx31c9OodNbIQZE15LaVKPglOe6lH2JSCT8GqAuL\/SNeTPRFqagVmu1xSfbT6O6lOfnkdIH5\/DVKwKIx5XXlxXRb+5brsu0duW5rEKkh4obdMaQ1HKSAc8XHStxwpwVBDSD6vY215Wnkn7LzdlLlue1rDoVr1q1qXIrESTR4LcMOCO2XFsupaCQ4lSUFI5ZKSQpJBHeUjx8WKRkeSTbquq2vhRUuTkyxvkxgKF1feuf7KonfjfK8PLohQNqtiNn65IgUuoN1WZPnFhCkOJQtDQUoLLLKfui1ZU6VKwAlOM59lj7ReWHY\/lF27upfNlxTEYjKpdTrFvMsVAqYW2tJfXGDyHlrLiwpRSlXEAcEFKEta2e8hOiUSkeTDZ0ijwER3Kky\/LmrCcKfkF9xK1qPt+9AB\/mhI1fwGNMnLERdjwsAaLHk++6uxsYytbPM4lxo+B+ypCpUzZy6mhSr5vutPzi6HWW69Odpq0ufySmGtLLC8Z8FMqz7c404Q6fftAiJ97VVod0U5sNpixpyBBdCcjKvOI6FNKwPBIjo+VQ09vRmpCFNvoS4hQIKVDIIIwe2laRtPt+62+iFbUekuSVc3ZNGUumyFn4S9GLbh\/62oxSa617nUymEpu6kVS2sL4daosDzU\/ArzlorZSCfALWlX+zprhTolQjtzIMlqQw6kKbcaWFJWPhBBwRpVXYlchIZat\/cevRWWBhMaclme0v\/AKbjqPOFf42lf0WXSitxJ0KbbtG6U5M6ROoUeTAclesCtD0UOqZfK0gp5OlfHlyCQoAgitnRqB4DOp0RY2vSKdFpU2TWZjMWA0wtch910NoabCcqUpR7JAGck+GtPLEZ2u363Zl1qCuXKck1c1CN5uhDkFylsJQEqWR7FlIz491pHwnV1eWDTPdvyfbwoj3VMWfGajTA0spX5up5Ac4n2Ejt82tR\/wDR8XDadoXiLapUKoIh+Yvw21vfdFNlbiXi4sgdkHgofISkeHfXJ+pjgSGCPJkLXNeHHYBvQAeXX52quFjk07Ly2OyY4eqGMtD3Vs0vNN\/cigt6UbMbWu1Vi4Zlh0CTVmEoCZzlOaLuUgALyU\/fAADPjgadGGW2QEtjCUjAHsA1Xu5G+dg7XU7zutVREmW62VMQYykqecHfBOeyE\/7SiB8GT21TkHyym5luyblVEpXnDctIj0pJcUt2JlIKxI+85esf5OMpxjvkbef6g07Si0SO\/UQPlBdzwTQOyyTZpc0fFeS1uwskge3gGu3K2q0ZHhnShtnulaO69rR7ss2px50N4lpzpPJWph5P37a+JICgfl9oPgdZZiosz7lfgMrCvcxltTwxkdR3OE5\/nBKM4+BwfDqeDwQPdWNe1wBB5WZV96cfBqnPK5teq3n5Od92xRWFuz5tLX5u2g4Li0KSsNj5VceI+fVya6JURiawuNJbS404kpUlQyCDqr29bS3ytiCZ2PM2ZvLSD+xtfnxo13Vu0470eHKcZIJSUEEYI7EYPgfk0\/bE7wos+TMTOSlSqs4XH3VpB6mRjiT8AHs19Rtx\/IP2K3IrTlfqlCDM15XN5xhxxkvH4XC2tPM\/9LPbWhnlO+Q\/ee3N1yajttQXqhbyxz6DAy7FIHcJT984k4KhxyrJUMY1zcumzYzS5hte14HrjT9blZi5Tfhgjeztf1VW7jQ7Mlz3KtQozDXnYUpxpv7wKV3JCfAd8+A9p19Rf9H7el0Xr5NdGlXU+\/JepkyVTIsp9RUt+M0v7mSo91cMlrJ7np98nJPy7208nzdzcOtR6Wi1KpS4pWA9LqkJ6OhtOcFQS4EqcPwJT4+0pHcfZbYqyYe3G11BsmmxVMRKTHDLQX9+vOVLcWfata1KWo\/Co6v0bHmbK+V+wK0vxH1bSpcDH07C6S9pskVsCPI8lP8ApO3c\/iBU\/nY\/z29OOk7dz+IFT+dj\/Pb10a8cTgPDU6geGp0RGlPdn8Ft3\/kGf+rr02aU92fwW3f+QZ\/6uvRE1jw1OoHhqdERqud2NkLf3aXS5k6v1+gVKkpfYZqVCmpjSlRHygvxVLUhY6TimWVHACuTSClScHNjaNY5Yo52GOVoc08g7g\/ZVBLTYWrVY8hhuA\/MqG1W\/N\/WzImgh+HVpYuGmOkj1lKjzeS+SvaQ6Pb4aXFbS+WdbtcW21B2gu+ntoDEee3LnUSXwznC2y1JQkfIlR1uRqNc7qPo3QdVN5eKxx81R\/cUf5W1Hn5MX6Xla0WZ5M9\/ToKIl8XRRbXpDjrsmTRLLQ6lx95x0uOdSoPBKuK1KWVdFhlwkgpcTjvf1qWfbtj0KJbFqUeLS6VBSUR4sZAShAJyT8pJJJUckkkkkknWa0a39K0HTtEYWYEQZfJHJ+pNk\/crFNkS5H\/mOtGjRo1LrCljdD8Gl2\/kKf8Aq69Mw8NLO6H4NLt\/IU\/9XXpmHhoinXTJjNyUFt1CVoUkpUlQyCD4gj5dd2jRFp1vR5NN6WrDFR2npLVco9NltVGBSA4hEyn8FevHY6hSh5pTSnUJSVJWjkAOoMcanvaS3WLKqztH6UiVTx50lh3KVIkxlh3pOpPrNqC2uKgRlJ8R219GnEBYAIBAOfDSvW9rNt7nqzVfubb626tU2AkNTJ1KYffQEnKQFrSSMHuO\/bXm2ufhvgalkMysQ\/Ce13VsLabIJ22r7HuV2ekes8rTojBM34jSKG+4WktOqlPrdNj1aky25MSUgONOtrCkqSfl\/wC34PDx0qTKi5U9wAmLSazPZoURccGDSZMpK5jxBW2FNIUnmhtsZT4jqD4dbu3P5NOzd21pyv1ezOMuQ6p+QIVRlQmZLijlS3mWHUNvKUe5UtKic986sCiW\/SLapMahW9SIdMp8RHBiLEaS002nOSEpTgDuSfnJOue0\/wDCGODIkdkz2wghvSKO\/m77KdyvxIe6Nggh+Yc2dvtX9V8+GrF3UuG7o\/Pa+6Go8RJFLZkUl1kSHXAAp9x9YDTCEoJSEuKSv1l8kghIVu7sztwdsbFiW6+6w\/UXVrm1OQ0MJdluEFeOwJSkcW0k9+DaM6d+kOx6Y7DXbga9A0D0jgennmXHsuIDd+wG+23c7lclrfqfN15jYsig0Emhe5P37dkahaSpJCSASO2Rrlo11VLnF88t9Ntt6fJg8o+o+UjtBbUi4Ler5dfqTDDKnwyXlJXKjvpQC4lC3EB1DqeyVHChhOF9Nz79eUh5aFHG0m3Wzz9m0arLQxXqzJkuvtIjZytJeWy0lCTj1kJC1rGUjHc6+iJSknJQD4agtoUrkUAkeBxqQ\/4hbWl7AXN2B+nF+VHfkOkkMeQ07kfXlLW2dh0vbCw6FYFFUpUKhQWoTTi\/v3eKfWcV\/tKVlR+U6aNQBjU6j7J3KkAA0UEaNGjRVRqNTo0RGjRo0RYi57bp12UKo29VmiuHUo64zwBweKhjIPsI8Qfk1o\/cXk67u7V3E5Ns6my5rAWroVGjJw6pCs\/ftp9ZKsZB7Ed+xOt99cFIBP3o7ahtY0TF1mPoyB\/f7Fa8+P8AHb09RH0Nf3\/ovmDYvk4eVDudflx29fNnigWpJJEOrysNrSnknB4k9RxRBUSCkDknGcd9bWQvIb2zhbXO7eomy3JyuuoVtYAfPVBBQpKcJLeDjiMfDnOTrZIIA7cRga5YHwazjScIOEjYmtNAbChsAL+pqyfK2IXzQ4DtL67gc4OLdq6gK6vN1tyvnfYHkp+Ud5OVTYtvZKRKYgTagH58sTWXWH0kJRlSXE+qAlIPdGQScZAGd4dtLKlWXbjUKp1VyqVWS4qZU57pJVJlLACl4PgkABKR7EpSNNoQMk8R38dcgAPAY1ljxXDIfkyyOe5xu3G+VW\/8KOKhTLrbfc3ue\/t7bKdGjRrdVEa8k2mQqijpzYjTyfgWnOvXo0VCAeViolrUCCvqxaTGbX8IRrJoTxHEeGuWjRV4RpO3c\/iBU\/nY\/wA9vTjpO3c\/iBU\/nY\/z29ETgPDU6geGp0RGk\/eFtbu095tNvuMrXQKgEuNhJUg+br7jkCM\/OCNOGlPdn8Ft3\/kGf+rr0RcU2dcuPW3XurPyRqVj9T1y951yfGvdf0alfYtNY8NToiU\/edcnxr3X9GpX2LUGz7jHjuvdf0alfYtNuvBWqxTaDT36tWKhFgworanX5Mp5LTTSB4qUtRCUgD2k41Rx6RaccrAe9K4fbuzdY+eNSvsWp96FxfGxdf0alfYtahbh+W1V6fvJBplEuymUygSH0s0ei1BhDL1fYQvi7PE1SVphtOKUttgOoSl0MFfNKXErGyEbfiBXtv13xY1Bdqq4M56n1enyJKI71JejoWuS0\/jn91Tw6aUo5JWt1rCumouDTgz4MhxYw2R\/I4seRe1ixeyyvhfG0PcNjwm33n3H8a91\/RqV9i0e8+4\/jXuv6NSvsWlSveUNalpN1K4btAo9mwGpARX5RWlEiSy+lhbKGijkordUpLQSSt0tOFKCjprcWdmPK2pO9N+zrHpu196W6IrC5MebX4SIqZbSHVNrW22FqWEpUEBRUAUl1oKAKxrYdPG14jLh1HgXusQ3FhWl7zrk+Ne6\/o1K+xaPedcnxr3X9GpX2LTXkeGp1lRVfuVaNxN7c3U4vdK6HUpos4qQuPSwlQ6C8gkQwRn5DpjTZ1y477r3X\/ZGpX2PXduh+DS7fyFP\/V16Zh4aIlT3nXJ8a91\/RqV9i0e865PjXuv6NSvsWmzRoiU\/edcnxr3X9GpX2LR7zrk+Ne6\/o1K+xaa9GR8I0RKnvOuT417r+jUr7Fo951yfGvdf0alfYtNfJP8AOH9+jkPhGiJU951yfGvdf0alfYtHvOuT417r+jUr7FpryPh1OiJT951yfGvdf0alfYtHvOuT417r+jUr7Fps0aIlP3nXJ8a91\/RqV9i0e865PjXuv6NSvsWmsqSPEgaXGdx7BlXAu04t8W+7W2lFC6aipMqlJUPFJaCueR8GNULgOSlWvP7zrk+Ne6\/o1K+xaPedcnxr3X9GpX2LTWCD2BB1OqolP3nXJ8a91\/RqV9i0e865PjXuv6NSvsWmzRoiU\/edcnxr3X9GpX2LR7zrk+Ne6\/o1K+xabNGiJT951yfGvdf0alfYtHvOuT417r+jUr7Fps15p9SgUxjzifMZjtlaUBTiwkFSjgJGfEn2DxOiJc951yfGvdf0alfYtHvOuP417r+jUr7FrI1K77fo8tqHVK7TIjjw9VD8tDbij2wAgnkc59mvO3ejU1t5VFoFaqKmTxKUwVxgr5ULk9JCx8oUdEXl959x\/Gvdf0alfYtAtC4j4bsXWcf\/AFelfY9clVC\/pf8ACYFtwYja0cPNqlO4OoOfvyWUOpI\/2eXs8dY81y9bUbblXZT6dJpDaOMiZT1uKciAAkuuoWBya7AFSPWSTko4clIcoTS9\/vPuP417r+jUr7Fo959x\/Gvdf0alfYtZ6JUY8oHpvtulOAotqBAJAI8PkIPzEa9oxjtqpFKgIKVPedcnxr3X9GpX2LR7zrj+Ne6\/o1K+xaayQASTgDXgrldpNuUuTWa1PZiQYjanX33VYShA8Sf79WkhosqtWsF7z7j+Ne6\/o1K+xaPefcfxr3X9GpX2LS1K8orbOJFM5ypTTGQSFuimyBjDimz6ikBavWQoYSlROCQDpqtfce0LwS37iVgKW831W2ZLLkV5aP5yWnkpWU9vvgnHy60YdTw8hxZFK0keCDz9Flfjyx7uaQuv3nXH8a91\/RqV9i0e865PjXuv6NSvsWmsEEZBGp1vrElP3nXJ8a91\/RqV9i0o7q2ncTFjVF1e51yvoSWCW3Y9N4q+7t9jwiJP9xGra0nbufxAqfzsf57eiJwHcA\/JqdQPDU6IjSnuz+C27\/yDP\/V16bNKe7P4Lbv\/ACDP\/V16ImseGp1A8NToiNUn5VdGo1csiiwKghapsq5aOzBDaiFqKZzEh8DAOQGIzqyCCMN57YBF2a1m8rzcPauLT6Val1Qrxn16nyma3Abtyoe5bkDmVxUS35jrjUdtkqeU2UuKVnmSWyEqKY3V7dhSsa4NLmkAngEihf3WSKusEi91ojfOz+\/16XpeFThbdS5VxXROkNu1SoqZYgQ4mS200hwryttLKUgcUqKj7CT2sSX5Qtm7I0x6h0yuSK+xUaRTqXVJMeG4ov1yjyEKVMQcDzhDzKJiXXUhWPMmgThSOWe2\/wB46BtBOhNbyXbXrSiXPH40KgXRUVVeVFEdxTapMiWhhLccLHTCG+RQACtS8qJCP5U9IsqhXlYlgWLDodLpaqVXrjfjU5tAD7z8ZMaO5xSPWBK1hOMgjOMBOdeWY3rHVc\/XcLS8yNvwMdjmwuhaRE5rWn4hLjZcQQBttfc7LtNTmk1jGijNMY0dPTW4B7\/Unck+Nlld+tx61Dtml35U36ZS4cKRFta0aApTUxq0Yb8ZwonTmu+Z7rTISkKPBtLpThYCyvjtFu9d\/vOrlauW5JLm4W0tLl1ii3AlKFmuUp5GVxX2lEJdSXWmEuYKVH7iUKQs8jY9dtvyb6LuHckOXPiXLccugSUS7JbWxLTJZjnzlQTF44845IUpKXVg81uFKU8idK+1+ytY3zcpM\/Zvba3NvrFYnw5lRnTa21UJUhMeSX1U5MaK+75v1VJZ6zThaKOn6wWoJ4X6Fq7PVeM6E4kgyxIyVuTsz4bTzH0k2WEdQBaKceTZ2wF2Fg6e\/HnjHXfykHkeCKo3QPkL6J2hJr021qRMuqDHhVp+BHdqMaOsqaZlKbSXUIKu5SFlQBPcgDWY11R0uIaSl1SVKAAJSMAn5vZ\/edduvYlxyWN0PwaXb+Qp\/wCrr0zDw0s7ofg0u38hT\/1demYeGiKdGjXFfs0RdUt1thovOqCUIypSicAADuSdatbweWHIo6pMDauiJqLbDpYdrkppa4YcHilsDHP4ORUB27A+Ovd5XW5FdRDZ2ksiPJfqlVYMmpeapKltQs8eOR4cz2P+ykj+VrTty6roZoK7JXOcRTw6SqKptIKVhWeOSOQ9YZxnUDqeomJxhZY9x58f1XsHoL0HDqMI1LPAcCRTCa+X\/wBRrn2B2KuK3\/KP3aqjFSrlS3hiU96GOUemyKcwUSexOE4SD4jHbJ79\/h1buyvlkQbrmxrZ3Ggx6VUZC0tsTo5IivLJ7JUlRJbJPbOSCfaNaiN+8X3nLCk1L3yF31CCPN+PPw\/6mflyPg0Uau29Bt+qUqo2u3NnTAfNpxdIMfKQM8cd+J9b5fA6jYdRmhexpeOLN2b\/AKFeg6r6G0jUseUDHLTdNLWhpaPIquofVfVlDiXE8h4HXbrW\/wAj7eJ++rUesq4ZnXrFvoT0XXFZXIhnsgnvlRQfVJPfuknJOtkNdVjztyYxKzgr5x1nSZ9DzpMDJHzMNfUdj9wjRo0azKMSRvHSrgrm3Neo9siSudMjpZ6cWQWH1sFY66WXAQUOqZ6iUK5Jwsp7jxGi927s7c02fJsUGk0iFDw0u3KzCEEtp4gFsxZQQoADI7Jx4EHW8u8O6ttbO2XLvG5kvvtpW3FhwIqAuVUZjp4sRI6CRzdcWQkD2d1HCUqI0L3m3I3HveBCXvxR2W6bVqqYxt+iON1VmlRi2FI6kZxvhMkJWnkt0NyQ2ApbKUpKtec+vcDByxC7JneyQE9DWkfN3J6bBNefsLK6v0rkyY073fAbIyvm6uB9\/wC\/dX15He95qdyVLZypXCKtGTEXVrXkOSzKfbhNqbRIhuvEqLnRU\/H6a1ErU25hRJbydswcgH4dfNDbCPtpYlegs0qlR6K\/RWzS6ReYMODUH1hwBTDSmwgzenxCV9VCkLCSg88r1u1be8bqrHk1irW\/PrFcobsaNVoFAiF51SHXEpTMYZWrmtktkvFKVOLAQ62Oo42UmQ9J+pYdSaNPe5xlYOXCi5vZ314scg8ha\/qHS34k5yGxhsbjsGmwD4vb7K1tGvLS6nBrVMiVimSESIc5huTHdQcpcbWkKSoH2ggg69Wu2XOI0aNGiLiskAY+HVVMUSpbkMzatX59RpvQluNQokeepMZpbDjjTiXmkECQlS0FRCyQUqSEhBSVGz5j6Y7RcUcDIGdVxAuJdJvmZbbpYahVVTk2HgHkt5QQSkY7HKkSCrOACWhnk6kHIyMuF9lhfMGmu6ZrHapiqa4uLQKdSn2pC40hmK2lHFxBwc4A8T3T45QpCv5WA0JHEY1VdeTfsK43YtpIgQYdaUw89PU11XESW0lC+TYGVBbaGUhYzx6RyACknPrtiqzW0isXbWpRzyUiO+mE3n4AWEpXj4MrV8+nwzao2cEAptqFRhUuK5NqEhDDDKCtbizgJSO5Ok+Xu7twXXYabkizlstpeebgtrmFCF5A5JZSojIB7Y8PHGRr1M2LbnnbNReosaVOYTxbmTU+dSED4A87yX7B\/K1Wu8dHeo11xroRwVCq0VEGWMklt5pSuksp8OKg8pBUfBQaT4rA1sYuMyaYRvdVrT1DMkxsd08Tb6eyz22cuJHgKMIvhhyQ+mL12FMrVEQ+4I+UKwocWekgZAPFKcjVstnkgH5NURZ84B1CfBIAGAMY1ejRyhJ+QHWxqmKMV7WBaehZ5zo3PKJUhmLHdkSHUNMtIUtxxaglKEgZJJPYAD261Zp7ta8pXch2Q7Vn6batEZZfZYQCeQeZdTkBaQlTqioK5FKghKEpwCo5fvKV3D97NJptopip\/wDCR4Mvvvpyw3HQtCngsZHNJQVBScjKOXj31l9jdq6TYVl2+70JSamKY2ZIedUEpecAW7honilWSEZHfihKf5OuJzgdSzRhE1GwdTx5vgfTm\/K7CJpxsf8AMVu4032rkrMMbKbZMwzCdtKFLCk4UuYkvrJwQVZWTg9z4Y7Ejw7ap7f\/AGUm0qki7trqxKpU6nvNOuR5Sn5TUhXPAcC0qLyFNjKiCrpqBxgE62YdksMp5uuJSnIGSfaSAP8AeRrympQJE1dJElsyksh8sk+sWiSkK+UZBH93wjW3k6Rh5ERhLGjuKABBHBCwRZk8UgkBJ83vslHZi+p18WaxLrZgmsQlmJUDBkB6O46AFJcbUABxW2pC+P8AJ5FOTxyX4HOtdbLoDe2G+sm3aVTkwKBU3Spks9VDKnTHUtAUEktBQK3W0ghJKUoBCiEKGxKFck51l0zKdkRFsn62EtPuRW\/35VMuJscls\/SRY+\/9Fy0nbufxAqfzsf57enHSdu5\/ECp\/Ox\/nt6klrJwHhqdQPDU6IjSnuz+C27\/yDP8A1demzSnuz+C27\/yDP\/V16ImseGp1A8NToi4qONfLLymLun1K6bzulFJm1mvztzI1BtenqkLZYaYpMN9ouunGHGer56oBJStKyVpcQpOdfR\/dvcakbR7c3DuVXWnnoNuU56e8yyMrcCE5CB7AVHCcnsOWTgA6+dNhVei3TtjCtKuWFudX4dWmzq9IvG3rSqCWoNScecAlMqSx1VlYU8vnhZLbwSsICi03zHqTJkxxjubC+VnxGl4j\/V0CyaO3t9eFuYTQXOJcAa2vysjaVMgeULeb22+6NAt+pItOhoedl0GDIpvuS8842I8RpwSFFaVNtuEoUMfcULTxP3tXVd2fc3lR1d2HS1ItygzbbtCjhxhK0MUtqrJacfSs9+l14klnnyyS4gZPbVv+Tw5a9HsBO0OxCa\/PvuvzONYm1ynSIsyA69zS7UJnIJ4CM23kICvWUltAUVOclXnvdsftBsxttF3Fp9tojqtdi3KTVam+t195uiwakzIJKByBUXm23HFhPJRSVKOBnXG4WFJmZ+pali4zsfFY1zMeI3d18zwDZtxHjdSxznQMiic\/qdvZ8Xt\/qf4Wqtca2j2U3Jv+6qZZ121KrxZM8yayxNjKeoj0yOXHHm4yCw6tBS\/gLW4XCkAIUkqSpTl5Mdzu0TfLaC4o96QalTtx6bX48yoJirYXUGuSVw0SnltIEmU040loqUrmCvATlwrd6t9bQp1zbnU6\/dnNy7IjV6ciJS7ihVGWHY9QiuOluK+kN5LjqVOpb4oPrBbacgffZfZbb\/bC0\/Kh2YtGDPFUhR7QrU2lTFvuBMqoKksyuohIJQlWOuvik54gJVkBJVX03n6VmN0uXHfL+ce0iZsgJrojcBTiPlBJBDQaPJHdY9RdkO+L8Si0V0kV5H9lfRhOuWoGPZqdesKBSxuh+DS7fyFP\/V16Zh4aWd0PwaXb+Qp\/6uvTMPDRFOutweHfXZqCkK8RoqEWFrNcvkybgXTe9wbhektNHqdSdcREaYiqcDcUYS2hZKhn1UIJGMBWTk6T9r\/JH3HpdyzLhuK5KZAkR3XW2yWDO87Ch3d++QUg58c8vHOPbuRwT8H+\/R00Zzjv8+tJ2nwueHm7Bvnuuvx\/XGtY2M7FjeOkgN\/SLAHa64WkE7yLr\/rm4M5mpXRTGqa8fPF1JmOQVlajlAj8vVIIP8rGMHxOBmo\/km7k7fVcM2XWaDW4VXAiy36lELZhowfXCAs8x49ge5xkY7626SG\/dVeR36CMf3q16i2gkEpGR4axM0rHjcXtsO8rcf8AiLr0jWxveCwCunpFH3\/s\/ZaybX+Spcm0N9Uq8aPfbFQab5MVKIqIWOpHWkhQSrkoHirgsAgZ4+OtntceKcEY8fHXLW3Bjx4zeiIUFy+qavma1MMjOd1PqroDYcXXhGoPhryVSpQ6RAkVSpzmIcOI0t+RIfcShtptAJUtSldkpABJJ7AAnWrm4XlkXEp4N7Q2tTJNOCylys3A88ykgAHm1FbQFqTjI+6uMqyD6vHCjrZ+q4elsEmZIGA8X3+g5Kx6fpmXqknwsOMvPt\/XhV55XO4dGvTeCdt8+qTLXaVKWmnRgp5iKzUlttyXZrshPENraQYTaFNuBxCX5OUlLmRR+2UuoIrMSRb8dmk02FSWUy40tKZM59SweC1v8u7z5AceyCfuLCfE8W2uwNgby8ondO8and268W36pKWuqu02LSZS4NYhycpSoBM9srDClONKQtKuKXWSVK6iQE+peTfulbW\/Xo8sai2lflbs6mOVx+elx2FUCXX2SWepJWsKkpZfSpAW+W0ocSSsEJA871nScrXhJmYrg+OUUziuCKokc\/Swd+QV3ujZWn6O5uLljplYR1WD5BO4B2F\/Sk2R6BttdkSj3lc6Jb1cu7LEN1E+ShEJP3R1ERpDJS12Q3ycLqVhbvMKHFKUayljeUjUtrUxNxapT3K1HoVQm29WUw1NodmwQ8toOBKlBPJLyGJGOwR1H0pwHFHVWwq5dtIpdRfoFdmWtR51Slpkis0VTkeFNDykSUx5aViPyLnJXBK3E5UVD1VYPRNuK3aBb6rUgVmkuQWID0ua\/MSZoWlTyMqeS2QVdR18rUtR4pAWrBwBrj8GDN0vUInfNbXDpBB+VgsOFVxRAoF1kXa69+k4WZgzdTmuBB3Dhu7t32P1qhsvrXbUalQqBTIdDYDFOZiNNxGgCAhkIAQkA9wAnHbWV0h7M7lwd2dvqNfMGEuEmoB5l2MpYWGn2HnGHkpUMc0hxpfFWByTg4GcB819AscHt6hwV4O9jo3ljhRBpGjRo1erVgrudUzRnHEk55p1StxVmrxqzTqzT0dZcFwhLRScFRI7KKe5QsApOQQlXSdwC1q8Lki+eUtbKR4qB1Udfoi2lqVxOM5Hb+7U7pTIpYjHJ3XJa9JPBM2WLtSsu17joty05ioUx8KD6OoppeA42QtSVJWn2ELQtPwZQoDw0yJShWOwz82teaNdDthS5VfTBTNjutqMtlHqupISAHgrB9iEhYGSUpScEoAN\/wAWQl1CXAsELAUkjwIP9p1o52K7FkLO3ZS+mZ8ebF8RvPceF6QkD2DWLuK2KDdFPdptcpUaaw+04wtLqe\/BxPFYB8RkH2HxAPsGsqM+3QQD460FKkAilrlS6VUbQuZ+06m5zdhcVMPcgTJiqKg29geBOFIUMD121YHEpOth2yAwk+wJGkXdemRxEpVxuJUHqfUWY4WkZUpqS4lkt\/8ARLimVf8A4Y08xyHYja0HIUgEH5NSGdlHMijc79QsFQ+m6e3T55WM\/SaI9vZateU5cr9Uv2mUGnci3QxFDy3ojimOs\/KjqWnmnGVpbMfsFDIfIOeXZZk3NeFZe6lx3zWHyEOMP9CYqI2tIVltSURynv6384hODjv4Pm+L1Vpe4yJ0+K3HiTofmcMp4rTOZQlKn23ULUE4PWWgesg+qn77AGq6fap9aq0mLVbbjuvNFph2S0pannGQlZacIbaK0OjJBVnCxxBSrA4+B+q25Y1GZkGWY7qxv4AHH93a9S0hjJcWPqiDgLrjzfdeebUWHZDS36\/PeLeU9V+c48qQjHgsqVxIGMDIKgBkEesFJVVnvl552kXuG2W5BdKGnXElg\/ygT1OJ8O4UnGcYTk6bxaFmTFzo06gylJfWSXafNklbTqOKsoaSQtCfXQFN4UAr+UMaXKtYlvqfZnRbCpdSU0oR2lKJ5EAFSlPsLbGFjg2OfURkrxySCeXJtxc1juqTLJvxf9V0UDsY7Nh3+yx1ubh3JNrdPmU6dMraaW+gsF2oOqgpcbWl9kPOEhDeFoBSnkEkLPqq7DX0Mt6oe61FhVMo4GWw2+UHGUlaArBx8\/wnWjMymPVCBXJNYYcfRTqWt9syHU8ihbTqVMKktrW4pSuIIClqTxACsE41vZSWPNadHjfdPuTaUfdCCrsAO5HYn4ce3OvWfQj5TFKyR5cBW59wuL9TCL4jHRsDTvdL2aTt3P4gVP52P89vTjpO3c\/iBU\/nY\/z29d+uYTgPDU6geGp0RGlPdn8Ft3\/kGf8Aq69NmlPdn8Ft3\/kGf+rr0RNY8NTqB4anRFh7otOh3jTTSLgjvPxFK5FtqS6wScEd1NqSojCj2zjw+DWSERlKEoHLikAD1j4Dw7+Ou7RpSUusMNg5x3\/\/AG+oaxtVtaiVuQ1IqkZyQGm3WSyp5fQdbcSUrS6yD03QQfBaVY8Rg6y2jVKCKjLi8h7yTrokGZVNirXbfKw51YEXzBYUPAgxi2Qfl8dVrVv9HJtNRNxLG3G2iqdy2lJsyrM1BuntVx5+GttJT1UpTIS8pCnEIQ2rioJKABjsNbe6gjOqdDbukNlCdTo0auRLG6H4NLt\/IU\/9XXpmHhpZ3Q\/Bpdv5Cn\/q69Mw8NEU6gkDuTqdQRkYzjQognHs1iq\/c1JtpiJIrEoRkTpsenMKUhSgp95YQ0jsO3JRABOBkjXv82WfGW9\/8P1a8Fdtmk3NSJVBuCM3UadNbLUiLLZbdadQf5KkKSQR8+sDnS9gqiu6WoNbmSN5qnRUTurCi2zAkqYTgpbedkygFn2gqS1279wg\/Bp55\/7J0tWhtvaNhR5ESz6SzS2pTgdf6KQVvLAwFLcVlayAAByJwBgYHbTB5sr+lvf\/AA\/VqgMo7fyhpdvP2cTrlroEZQP\/ABp7\/wCH6td+srC4\/qCovBW6TDrVLlUmoMB6LNaXHfbP8ptaSlQz7MgkZ+XWoW2fk1RqTX48Tc+qrua0KES3TYy6HO84qqk\/6tVRaUyEcW0gZSkqS+4OauIHS1uXqOHy\/wC7Wrladi5r2STsDiw22+xW3jZ+ThsfHA8tDxRruFpPSrGqux3lJ2OxRKM8zbFWnyKZSZRju8fcyXHdcVAJV\/qnGpEeMpKFAKU0whQJ4OBOz9u7O2bb2490bqwUS1127Uxm5qnXuTTSWWW2QGUY9Tkllrke5JQn2ADTquPzI9cjBz4Z12IQGxgatwsCPBa6OP8ASXFw9r3Nfe1XMz5c14fJyGhpPkDz9qVcbNbH27s3b9dtmlVCfU4VcrMmruIqAbUGg6htsMJCUpBbShpAHLKj3JJzrw1zyVvJ9rsR+MdrKDS3ZD3XVMosRFMl88YJ68YIcOQSCCoggkEEdtWvo1t\/CZ0dBArwtcTSB\/xA49XnusDZVj21t5bNPs+0YKoVJpbZbjMKeW6oAqKlKUtwla1KUpSipRJJJJOs9o0avDQ0UFYSXGzyjRo0aqqLqebDjRQrwOky74SYtNkzkw3pBjtlfSZTycXj2JHtUfYPEnsMntp3x2xrxzoEec0piQyhxBIJStIIJByOx+UDWaGUxO6gtTKx2zt6XDZULSKDeV3xYVcodFZp8CY0X25FRdwVoUPua220clH2EpWEE+Hbx0+bY+6luCRYFTc86NICXo8puP0Wkw3D9yaCOaijioOtpGVeoyMnOvebNrFCqr9UtCY20iWQZNPlpK4zh9YlTZBCmVFS1E8cpJUo8OSio4tFr7oPXBKrj1wUuIKiI0Z1qFHIcjRmeocIedS4l1RU6s92mxhWM+r32p8yTJAEh4WliYEOESYQQTyrAqNYhUaA7Uai8GmGRlasE4\/sHfWBRuVRZRbVR4s2ssvJBZkU1gvR3Vd8pD\/ZoEYH3ygO4xnvgpu3lJYqAqtTefrMlriphypkSFR1\/wApbZUMNk9gQgJGB4aZlRUKVyKR4Y+X+\/WkekFSnz9O3KRaqblvtLVKqFvCk0luWxKWX5CHJLy2HEuto6bfJtKS4hBKuorKQRx75D8hKW2ghACQkYAA8BrgiMhPgn+3Xbx+XVHUdgqMa4WXFUpvxtZel71mkV22J7LjVOjrjuwFlSFrClhSlJIWhC88UApWQAASkgnOqFqdoXfa9RXUatZc1xERjuZEJXm6cHuQtbRaTguJGA6nklB++4g63kKM5BPjqOkAMA41yerelMXVJjkFxa881wa4U9g63NhMEXSC0futB2bhpkGtrkqFPlteb9NTIdblRlLJH3RJcc7BITxAKsgZBHHjj20hL9adZFFpUSfydcVFjNIeUhGQRlbKVK7Dw4jI8Dxz62t6vN2\/5qe\/j6upDKAOwA+YY1BN\/D5l2+ckf\/Uf1W5\/zG8btj3+q1lsTay8LpqLarlhLj03plipeeNIQuQ1hfBCWumlaDh1fbCAOXfqd87ONjCAMYxqAjHt1yAxrsdI0eDRojFBZvknkqGzM2TNf1yKdJ27n8QKn87H+e3px0nbufxAqfzsf57epZaacB4anUDw1OiI0n7xSY8Tae8pMp5DTTdAqBUtZwlI83X4n2acNQUhQKVAEH2HRElo3o2mUkKTuNbygfaKg19euXpm2n+MS3\/p7f16cgABgDGp0RJnpm2n+MS3\/p7f16PTNtP8Ylv\/AE9v69OejREmembaf4xLf+nt\/Xo9M20\/xiW\/9Pb+vTno0RJnpm2n+MS3\/p7f16PTNtP8Ylv\/AE9v69OejREmembaf4xLf+nt\/Xo9M20\/xiW\/9Pb+vTno0RVRuXvFtY\/tzdMdncCgrceos1ttCZzZKlKYWAAAfaSNMaN6Np1JChuJb+D\/APaDX16cyARggEH2HQAAMAaIk30zbT\/GJb\/09v69Hpm2n+MS3\/p7f16c9GiJM9M20\/xiW\/8AT2\/r0embaf4xLf8Ap7f16c9GiJM9M20\/xiW\/9Pb+vR6Ztp\/jEt\/6e39enPRoiTPTNtP8Ylv\/AE9v69Hpm2n+MS3\/AKe39enPRoiTPTNtP8Ylv\/T2\/r0embaf4xLf+nt\/Xpz0aIkz0zbT\/GJb\/wBPb+vR6Ztp\/jEt\/wCnt\/Xpz0aIkz0zbT\/GJb\/09v69Hpm2n+MS3\/p7f16c9GiJM9M20\/xiW\/8AT2\/r0embaf4xLf8Ap7f16c9GiJM9M20\/xiW\/9Pb+vR6Ztp\/jEt\/6e39enPRoiTPTNtP8Ylv\/AE9v69Hpl2n+MS3\/AKe39enPRoiTPTNtP8Ylv\/T2\/r1B3l2nP\/pEt\/6e39enTRoiSxvLtOP\/AEiW\/wDT2\/r1Ppm2n+MS3\/p7f16c9GiJM9M20\/xiW\/8AT2\/r0embaf4xLf8Ap7f16c9GiJM9M20\/xiW\/9Pb+vR6Ztp\/jEt\/6e39enPRoiTPTNtP8Ylv\/AE9v69Hpm2n+MS3\/AKe39enPRoiTPTNtP8Ylv\/T2\/r0embaf4xLf+nt\/Xpz0aIkz0zbT\/GJb\/wBPb+vSnulu7tfNsmfEi3\/QXXnVR0obRPbKlHrt+ABydW\/qFJSrspIPzjREJIIBHgRqdGjREaNGjREaNGjREaNGjREaNGjREaNGjREaNGjREaNGjREaNGjREaNGjREaNGjREaNGjREaNGjREaNGjREaNGjREaNGjREaNGjREaNGjREaNGjREaNGjREaNGjREaNGjREaNGjREaNGjREaNGjREaNGjRF\/\/9k=\" width=\"303px\" alt=\"ai image identifier\"\/><\/p>\n<p><p>YOLO stands for You Only Look Once, and true to its name, the algorithm processes a frame only once using a fixed grid size and then determines whether a grid box contains an image or not. RCNNs draw bounding boxes around a proposed set of points on the image, some of which may be overlapping. Single Shot Detectors (SSD) discretize this concept by dividing <a href=\"https:\/\/play.google.com\/store\/apps\/datasafety?id=pl.edu.pg.chatpg&amp;hl=cs&amp;gl=US\">Chat PG<\/a> the image up into default bounding boxes in the form of a grid over different aspect ratios. In the end, a composite result of all these layers is collectively taken into account when determining if a match has been found. Combine Vision AI with the Voice Generation API from astica to enable natural sounding audio descriptions for image based content.<\/p>\n<\/p>\n<p><p>Generative AI technologies are rapidly evolving, and computer generated imagery, also known as \u2018synthetic imagery\u2019, is becoming harder to distinguish from those that have not been created by an AI system. Three hundred participants, more than one hundred teams, and only three invitations to the finals in Barcelona mean that the excitement <a href=\"https:\/\/chat.openai.com\/\">https:\/\/chat.openai.com\/<\/a> could not be lacking. &#8220;It was amazing,&#8221; commented attendees of the third Kaggle Days X Z by HP World Championship meetup, and we fully agree. The Moscow event brought together as many as 280 data science enthusiasts in one place to take on the challenge and compete for three spots in the grand finale of Kaggle Days in Barcelona.<\/p>\n<\/p>\n<p><p>Though the technology offers many promising benefits, however, the users have expressed their reservations about the privacy of such systems as it collects the data without the user\u2019s permission. Since the technology is still evolving, therefore one cannot guarantee that the facial recognition feature in the mobile devices or social media platforms works with 100% percent accuracy. To learn how image recognition APIs work, which one to choose, and the limitations of <a href=\"https:\/\/www.metadialog.com\/blog\/ai-in-image-recognition\/\">ai image identifier<\/a> APIs for recognition tasks, I recommend you check out our review of the best paid and free Computer Vision APIs. Faster RCNN (Region-based Convolutional Neural Network) is the best performer in the R-CNN family of image recognition algorithms, including R-CNN and Fast R-CNN. The conventional computer vision approach to image recognition is a sequence (computer vision pipeline) of image filtering, image segmentation, feature extraction, and rule-based classification.<\/p>\n<\/p>\n<p><p>While different methods to imitate human vision evolved, the common goal of image recognition is the classification of detected objects into different categories (determining the category to which an image belongs). Keep in mind, however, that the results of this check should not be considered final as the tool could have some false positives or negatives. While our machine learning models have been trained on a large dataset of images, they are not perfect and there may be some cases where the tool produces inaccurate results. Our AI detection tool analyzes images to determine whether they were likely generated by a human or an AI algorithm. Agricultural machine learning image recognition systems use novel techniques that have been trained to detect the type of animal and its actions.<\/p>\n<\/p>\n<p><p>Given the simplicity of the task, it\u2019s common for new neural network architectures to be tested on image recognition problems and then applied to other areas, like object detection or image segmentation. This section will cover a few major neural network architectures developed over the years. Visual search&nbsp;is a novel technology, powered by AI, that allows the user to perform an online search by employing real-world images as a substitute for text.<\/p>\n<\/p>\n<p><p>Beginning in November 2021, hundreds of participants attending each meetup face a daunting task to be on the podium and win one of three invitations to the finals in Barcelona and prizes from Kaggle Days and Z by HPZ by HP. It\u2019s estimated that some papers released by Google would cost millions of dollars to replicate due to the compute required. For all this effort, it has been shown that random architecture search produces results that are at least competitive with NAS. Detect vehicles or other identifiable objects and calculate free parking spaces or predict fires. We know the ins and outs of various technologies that can use all or part of automation to help you improve your business. Choose from the captivating images below or upload your own to explore the possibilities.<\/p>\n<\/p>\n<p><h2>Impersonating artists with AI-created music and art, hurting their integrity and earnings while deceiving fans and platforms<\/h2>\n<\/p>\n<p><p>Today, in partnership with Google Cloud, we\u2019re launching a beta version of SynthID, a tool for watermarking and identifying AI-generated images. This technology embeds a digital watermark directly into the pixels of an image, making it imperceptible to the human eye, but detectable for identification. The use of AI for image recognition is revolutionizing every industry from retail and security to logistics and marketing.<\/p>\n<\/p>\n<div style='border: grey dotted 1px;padding: 11px;'>\n<h3>6 &#8220;Best&#8221; AI Powered Photo Organizers (April 2024) &#8211; Unite.AI<\/h3>\n<p>6 &#8220;Best&#8221; AI Powered Photo Organizers (April .<\/p>\n<p>Posted: Mon, 25 Mar 2024 07:00:00 GMT [<a href='https:\/\/news.google.com\/rss\/articles\/CBMiNmh0dHBzOi8vd3d3LnVuaXRlLmFpL2Jlc3QtYWktcG93ZXJlZC1waG90by1vcmdhbml6ZXJzL9IBAA?oc=5' rel=\"nofollow\">source<\/a>]<\/p>\n<\/div>\n<p><p>The combined model is optimised on a range of objectives, including correctly identifying watermarked content and improving imperceptibility by visually aligning the watermark to the original content. This is a simplified description that was adopted for the sake of clarity for the readers who do not possess the domain expertise. In addition to the other benefits, they require very little pre-processing and essentially answer the question of how to program self-learning for AI image identification. However, deep learning requires manual labeling of data to annotate good and bad samples, a process called image annotation.<\/p>\n<\/p>\n<p><p>This allows real-time AI image processing as visual data is processed without data-offloading (uploading data to the cloud), allowing higher inference performance and robustness required for production-grade systems. While pre-trained models provide robust algorithms trained on millions of datapoints, there are many reasons why you might want to create a custom model for image recognition. For example, you may have a dataset of images that is very different from the standard datasets that current image recognition models are trained on.<\/p>\n<\/p>\n<p><h2>Model architecture overview<\/h2>\n<\/p>\n<p><p>Organizing data means to categorize each image and extract its physical features. In this step, a&nbsp;geometric encoding&nbsp;of the images is converted into the labels that physically describe the images. Hence, properly gathering and organizing the data is critical for training the model because if the data quality is compromised at this stage, it will be incapable of recognizing patterns at the later stage. At viso.ai, we power Viso Suite, an image recognition machine learning software platform that helps industry leaders implement all their AI vision applications dramatically faster with no-code.<\/p>\n<\/p>\n<p><p>Image recognition can identify the content in the image and provide related keywords, descriptions, and can also search for similar images. Google Cloud is the first cloud provider to offer a tool for creating AI-generated images responsibly and identifying them with confidence. This technology is grounded in our approach to developing and deploying responsible AI, and was developed by Google DeepMind and refined in partnership with Google Research.<\/p>\n<\/p>\n<p><p>Detecting text is yet another side to this beautiful technology, as it opens up quite a few opportunities (thanks to expertly handled NLP services) for those who look into the future. What data annotation in AI means in practice is that you take your dataset of several thousand images and add meaningful labels or assign a specific class to each image. Usually, enterprises that develop the software and build the ML models do not have the resources nor the time to perform this tedious and bulky work. Outsourcing is a great way to get the job done while paying only a small fraction of the cost of training an in-house labeling team.<\/p>\n<\/p>\n<p><p>It launched a new feature in 2016 known as Automatic Alternative Text for people who are living with blindness or visual impairment. This feature uses AI-powered image recognition technology to tell these people about the contents of the picture. Computers interpret every image either as a&nbsp;raster&nbsp;or as a&nbsp;vector image; therefore, they are unable to spot the difference between different sets of images. Raster images are bitmaps in which individual pixels  that collectively form an image are arranged in the form of a grid. On the other hand, vector images are a set of polygons that have explanations for different colors.<\/p>\n<\/p>\n<p><p>In current computer vision research, Vision Transformers (ViT) have recently been used for Image Recognition tasks and have shown promising results. ViT models achieve the accuracy of CNNs at 4x higher computational efficiency. This AI vision platform lets you build and operate real-time applications, use neural networks for image recognition tasks, and integrate everything with your existing systems. While computer vision APIs can be used to process individual images, Edge AI systems are used to perform video recognition tasks in real-time, by moving machine learning in close proximity to the data source (Edge Intelligence).<\/p>\n<\/p>\n<p><h2>How to use an AI image identifier to streamline your image recognition tasks?<\/h2>\n<\/p>\n<p><p>It doesn&#8217;t matter if you need to distinguish between cats and dogs or compare the types of cancer cells. Our model can process hundreds of tags and predict several images in one second. If you need greater throughput, please contact us and we will show you the possibilities offered by AI. Image Recognition is natural for humans, but now even computers can achieve good performance to help you automatically perform tasks that require computer vision. While generative AI can unlock huge creative potential, it also presents new risks, like enabling creators to spread false information \u2014 both intentionally or unintentionally. Being able to identify AI-generated content is critical to empowering people with knowledge of when they\u2019re interacting with generated media, and for helping prevent the spread of misinformation.<\/p>\n<\/p>\n<p><img decoding=\"async\" class='aligncenter' style='display: block;margin-left:auto;margin-right:auto;' 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\" width=\"304px\" alt=\"ai image identifier\"\/><\/p>\n<p><p>One of the most popular and open-source software libraries to build AI face recognition applications is named DeepFace, which is able to analyze images and videos. To learn more about facial analysis with AI and video recognition, I recommend checking out our article about Deep Face Recognition. In all industries, AI image recognition technology is becoming increasingly imperative. Its applications provide economic value in industries such as healthcare, retail, security, agriculture, and many more. To see an extensive list of computer vision and image recognition applications, I recommend exploring our list of the Most Popular Computer Vision Applications today. A custom model for image recognition is an ML model that has been specifically designed for a specific image recognition task.<\/p>\n<\/p>\n<p><p>The residual blocks have also made their way into many other architectures that don\u2019t explicitly bear the ResNet name. Two years after AlexNet, researchers from the Visual Geometry Group (VGG) at Oxford University developed a new neural network architecture dubbed VGGNet. VGGNet has more convolution blocks than AlexNet, making it \u201cdeeper\u201d, and it comes in 16 and 19 layer varieties, referred to as VGG16 and VGG19, respectively. SynthID contributes to the broad suite of approaches for identifying digital content. One of the most widely used methods of identifying content is through metadata, which provides information such as who created it and when. Digital signatures added to metadata can then show if an image has been changed.<\/p>\n<\/p>\n<p><img decoding=\"async\" class='aligncenter' style='display: block;margin-left:auto;margin-right:auto;' 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\" width=\"301px\" alt=\"ai image identifier\"\/><\/p>\n<p><p>AI-based image recognition is the essential computer vision technology that can be both the building block of a bigger project (e.g., when paired with object tracking or instant segmentation) or a stand-alone task. As the popularity and use case base for image recognition grows, we would like to tell you more about this technology, how AI image recognition works, and how it can be used in business. For this purpose, the object detection algorithm uses a confidence metric and multiple bounding boxes within each grid box. However, it does not go into the complexities of multiple aspect ratios or feature maps, and thus, while this produces results faster, they may be somewhat less accurate than SSD. You can foun additiona information about <a href=\"https:\/\/www.tweaksforgeeks.com\/can-artificial-intelligence-assist-businesses-in-operating-service-centers-more-economically\/\">ai customer service<\/a> and artificial intelligence and NLP. This article will cover image recognition, an application of Artificial Intelligence (AI), and computer vision. Image recognition with deep learning is a key application of AI vision and is used to power a wide range of real-world use cases today.<\/p>\n<\/p>\n<div style='border: black dashed 1px;padding: 14px;'>\n<h3>Meta&#8217;s AI for Ray-Ban smart glasses can identify objects and translate languages &#8211; The Verge<\/h3>\n<p>Meta&#8217;s AI for Ray-Ban smart glasses can identify objects and translate languages.<\/p>\n<p>Posted: Tue, 12 Dec 2023 08:00:00 GMT [<a href='https:\/\/news.google.com\/rss\/articles\/CBMiYmh0dHBzOi8vd3d3LnRoZXZlcmdlLmNvbS8yMDIzLzEyLzEyLzIzOTk4NzgwL3JheS1iYW4tc21hcnQtZ2xhc3Nlcy1oZXktbWV0YS1tdWx0aW1vZGFsLWFpLWZlYXR1cmVz0gEA?oc=5' rel=\"nofollow\">source<\/a>]<\/p>\n<\/div>\n<p><p>In this case, a custom model can be used to better learn the features of your data and improve performance. Alternatively, you may be working on a new application where current image recognition models do not achieve the required accuracy or performance. AlexNet, named after its creator, was a deep neural network that won the ImageNet classification challenge in 2012 by a huge margin.<\/p>\n<\/p>\n<p><p>The terms image recognition and image detection are often used in place of each other. From brand loyalty, to user engagement and retention, and beyond, implementing image recognition on-device has the potential to delight users in new and lasting ways, all while reducing cloud costs and keeping user data private. One of the more promising applications of automated image recognition is in creating visual content that\u2019s more accessible to individuals with visual impairments. Providing alternative sensory information (sound or touch, generally) is one way to create more accessible applications and experiences using image recognition.<\/p>\n<\/p>\n<p><p>To submit a review, users must take and submit an accompanying photo of their pie. Any irregularities (or any images that don\u2019t include a pizza) are then passed along for human review. To see just how small you can make  these networks with good results, check out this post on creating a tiny image recognition model for mobile devices. The success of AlexNet and VGGNet opened the floodgates of deep learning research. As architectures got larger and networks got deeper, however, problems started to arise during training.<\/p>\n<\/p>\n<p><p>The most popular deep learning models, such as YOLO, SSD, and RCNN use convolution layers to parse a digital image or photo. During training, each layer of convolution acts like a filter that learns to recognize some aspect of the image before it is passed on to the next. The terms image recognition and computer vision are often used interchangeably but are actually different.<\/p>\n<\/p>\n<p><p>User-generated content (USG) is the building block of many social media platforms and content sharing communities. These multi-billion-dollar industries thrive on the content created and shared by millions of users. This poses a great challenge of monitoring the content so that it adheres to the community guidelines. It is unfeasible to manually monitor each submission because of the volume of content that is shared every day. Image recognition powered with AI helps in automated&nbsp;content moderation, so that the content shared is safe, meets the community guidelines, and serves the main objective of the platform. Today, in this highly digitized era, we mostly use digital text because it can be shared and edited seamlessly.<\/p>\n<\/p>\n<p><p>This technology is particularly used by retailers as they can perceive the context of these images and return personalized and accurate search results to the users based on their interest and behavior. Visual search is different than the&nbsp;image search&nbsp;as in visual search we use images to perform searches, while in image search, we type the text to perform the search. For example, in visual search, we will input an image of the cat, and the computer will process the image and come out with the description of the image.<\/p>\n<\/p>\n<p><p>The most popular machine learning method is deep learning, where multiple hidden layers of a neural network are used in a model. As with many tasks that rely on human intuition and experimentation, however, someone eventually asked if a machine could do it better. Neural architecture search (NAS) uses optimization techniques to automate the process of neural network design.<\/p>\n<\/p>\n<p><p>Artificial Intelligence has transformed the image recognition features of applications. Some applications available on the market are intelligent and accurate to the extent that they can elucidate the entire scene of the picture. Researchers are hopeful that with the use of AI they will be able to design image recognition software that may have a better perception of images and videos than humans. To overcome those limits of pure-cloud solutions, recent image recognition trends focus on extending the cloud by leveraging Edge Computing with on-device machine learning. Image Detection is the task of taking an image as input and finding various objects within it.<\/p>\n<\/p>\n<p><p>This final section will provide a series of organized resources to help you take the next step in learning all there is to know about image recognition. As a reminder, image recognition is also commonly referred to as image classification or image labeling. To ensure that the content being submitted from users across the country actually contains reviews of pizza, the One Bite team turned to on-device image recognition to help automate the content moderation process.<\/p>\n<\/p>\n<p><p>Image recognition is a vital element of artificial intelligence that is getting prevalent with every passing day. According to a report published by Zion Market Research, it is expected that the image recognition market will reach 39.87 billion US dollars by 2025. In this article, our primary focus will be on how artificial intelligence is used for image recognition. Deep learning image recognition of different types of food is applied for computer-aided dietary assessment. Therefore, image recognition software applications have been developed to improve the accuracy of current measurements of dietary intake by analyzing the food images captured by mobile devices and shared on social media. Hence, an image recognizer app is used to perform online pattern recognition in images uploaded by students.<\/p><\/p>\n","protected":false},"excerpt":{"rendered":"<p>AI Image Recognition Guide for 2024 Facial analysis with computer vision allows systems to analyze a video frame or photo to recognize identity, intentions, emotional and health states, age, or ethnicity. Some photo recognition tools for social media even aim to quantify levels of perceived attractiveness with a score. And because there\u2019s a need for&hellip; <a class=\"more-link\" href=\"https:\/\/welcome.hexstruct.com\/index.php\/2023\/06\/14\/ai-detector-to-check-for-ai-in-images-audio\/\">Continue reading <span class=\"screen-reader-text\">AI Detector to Check for AI in Images &#038; Audio<\/span><\/a><\/p>\n","protected":false},"author":3,"featured_media":0,"comment_status":"open","ping_status":"open","sticky":false,"template":"","format":"standard","meta":{"footnotes":""},"categories":[47],"tags":[],"_links":{"self":[{"href":"https:\/\/welcome.hexstruct.com\/index.php\/wp-json\/wp\/v2\/posts\/944"}],"collection":[{"href":"https:\/\/welcome.hexstruct.com\/index.php\/wp-json\/wp\/v2\/posts"}],"about":[{"href":"https:\/\/welcome.hexstruct.com\/index.php\/wp-json\/wp\/v2\/types\/post"}],"author":[{"embeddable":true,"href":"https:\/\/welcome.hexstruct.com\/index.php\/wp-json\/wp\/v2\/users\/3"}],"replies":[{"embeddable":true,"href":"https:\/\/welcome.hexstruct.com\/index.php\/wp-json\/wp\/v2\/comments?post=944"}],"version-history":[{"count":1,"href":"https:\/\/welcome.hexstruct.com\/index.php\/wp-json\/wp\/v2\/posts\/944\/revisions"}],"predecessor-version":[{"id":945,"href":"https:\/\/welcome.hexstruct.com\/index.php\/wp-json\/wp\/v2\/posts\/944\/revisions\/945"}],"wp:attachment":[{"href":"https:\/\/welcome.hexstruct.com\/index.php\/wp-json\/wp\/v2\/media?parent=944"}],"wp:term":[{"taxonomy":"category","embeddable":true,"href":"https:\/\/welcome.hexstruct.com\/index.php\/wp-json\/wp\/v2\/categories?post=944"},{"taxonomy":"post_tag","embeddable":true,"href":"https:\/\/welcome.hexstruct.com\/index.php\/wp-json\/wp\/v2\/tags?post=944"}],"curies":[{"name":"wp","href":"https:\/\/api.w.org\/{rel}","templated":true}]}}