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DragonPaint: Rule Based Bootstrapping for Small Data with an Application to Cartoon Coloring

机译:DragonPaint:基于规则的小数据自举及其在卡通着色中的应用

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摘要

In this paper, we confront the problem of deep learning’s big labeled data requirements, offer a rule based strategy for extreme augmentation of small data sets and apply that strategy with the image to image translation model by citetpix2pix:16 to automate cel style cartoon coloring with very limited training data. While our experimental results using geometric rules and transformations demonstrate the performance of our methods on an image translation task with industry applications in art, design and animation, we also propose the use of rules on partial data sets as a generalizable small data strategy, potentially applicable across data types and domains.
机译:在本文中,我们面对了深度学习的大标签数据需求问题,提供了基于规则的小数据集极端扩充策略,并将该策略与图像通过 citetpix2pix:16应用于图像转换模型以自动进行cel风格卡通着色培训数据非常有限。尽管我们使用几何规则和变换的实验结果证明了我们的方法在图像翻译任务以及在艺术,设计和动画等行业应用中的性能,但我们还建议将部分数据集的规则用作可推广使用的小数据策略,可能适用跨数据类型和域。

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