A Hybrid Language Model for Handwritten Chinese Sentence Recognition

Q. He, Shijie Chen, Mingxi Zhao, Wei Lin
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引用次数: 2

Abstract

In this paper, we propose a hybrid language model for handwritten Chinese sentence recognition. This hybrid model is integrated from several independent language models, each of which is trained from a distinct type of corpus and models specifically the linguistic behavior for that type of corpus. By inferring the type of the string which the user has already written, we can make this hybrid language model contribute more precisely to the recognition engine. Our experiments show that the hybrid language model performs consistently well among different types of handwritten articles, and the overall performance is significantly better than a single standard language model. We also propose a candidate re-ranking process after recognition by reducing the language scores to improve the recognition accuracy. The experiment result also demonstrates that this re-ranking process effectively improves the performance of the recognition engine in terms of accuracy.
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手写体中文句子识别的混合语言模型
本文提出了一种用于手写体中文句子识别的混合语言模型。这个混合模型是由几个独立的语言模型集成而成的,每个模型都是从不同类型的语料库中训练出来的,并对该类型语料库的语言行为进行了具体的建模。通过推断用户已经写入的字符串的类型,我们可以使这种混合语言模型更精确地为识别引擎做出贡献。我们的实验表明,混合语言模型在不同类型的手写文章中表现一致,总体性能明显优于单一标准语言模型。我们还提出了一种通过降低语言分数来提高识别精度的候选重新排序过程。实验结果还表明,这种重新排序过程在准确率方面有效地提高了识别引擎的性能。
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