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Unsupervised Learning of Stroke Tagger for Online Kanji Handwriting Recognition

机译:用于在线汉字手写识别的笔画标注的无监督学习

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Traditionally, HMM-based approaches to online Kanji handwriting recognition have relied on a hand-made dictionary, mapping characters to primitives such as strokes or substrokes. We present an unsupervised way to learn a stroke tagger from data, which we eventually use to automatically generate such a dictionary. In addition to not requiring a prior hand-made dictionary, our approach can improve the recognition accuracy by exploiting unlabeled data when the amount of labeled data is limited.
机译:传统上,基于HMM的在线汉字手写识别方法依赖于手工字典,将字符映射到诸如笔画或笔画的图元。我们提供了一种无监督的方法来从数据中学习笔画标记器,我们最终将其用于自动生成此类字典。除了不需要预先制作的手工字典外,当标记数据的数量有限时,我们的方法还可以通过利用未标记的数据来提高识别精度。

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