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System and method for automatic creation of templates
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Training neural networks for image processing using synthetic photorealistic containing image signs
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Detecting bar codes on images
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Training classifiers used to extract information from natural language texts
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Automatic determination of set of categories for document classification
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Reproducing augmentation of image data
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