用非常小的数据集手写字符识别

Vinoj Jayasundara, S. Jayasekara, Hirunima Jayasekara, Jathushan Rajasegaran, Suranga Seneviratne, R. Rodrigo
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引用次数: 48

摘要

由于缺乏大量的标记训练数据,许多本地化语言难以从字符识别系统的最新进展中获益。这是由于难以为这些语言生成大量标记数据,以及深度学习技术无法从少量训练样本中正确学习。我们通过引入一种技术来解决这个问题,该技术从现有样本中生成新的训练样本,并通过向其相应的实例化参数中添加随机控制噪声来反映人类手写中存在的实际变化。我们每个类仅使用200个训练样本的结果超过了emnist -字母数据集中现有的字符识别结果,同时达到了三个数据集中的现有结果:emnist -平衡、emnist -数字和MNIST。我们还开发了一种策略来有效地使用损失函数的组合来改进重建。我们的系统在缺乏标记训练数据的局部语言的字符识别中很有用,甚至在其他相关的更一般的上下文中也很有用,比如物体识别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
TextCaps: Handwritten Character Recognition With Very Small Datasets
Many localized languages struggle to reap the benefits of recent advancements in character recognition systems due to the lack of substantial amount of labeled training data. This is due to the difficulty in generating large amounts of labeled data for such languages and inability of deep learning techniques to properly learn from small number of training samples. We solve this problem by introducing a technique of generating new training samples from the existing samples, with realistic augmentations which reflect actual variations that are present in human hand writing, by adding random controlled noise to their corresponding instantiation parameters. Our results with a mere 200 training samples per class surpass existing character recognition results in the EMNIST-letter dataset while achieving the existing results in the three datasets: EMNIST-balanced, EMNIST-digits, and MNIST. We also develop a strategy to effectively use a combination of loss functions to improve reconstructions. Our system is useful in character recognition for localized languages that lack much labeled training data and even in other related more general contexts such as object recognition.
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