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A Study of Discriminative Training for HMM-Based Online Handwritten Chinese/Japanese Character Recognition

机译:基于HMM的在线手写汉语/日本字符识别的歧视性培训研究

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We present a study of discriminative training of classifiers using both maximum mutual information (MMI) and minimum classification error (MCE) criteria for online handwritten Chinese/Japanese character recognition based on continuous-density hidden Markov models. It is observed that MCE-trained classifiers can achieve a much higher recognition accuracy than that of MMI-trained ones. Benchmark results of MCE-trained classifiers for simplified Chinese, traditional Chinese and Japanese characters are reported on three recognition tasks with a vocabulary of 9119, 20924, and 12333 characters respectively.
机译:我们使用最大互信息(MMI)和基于连续密度隐马尔可夫模型的在线手写中文/日本字符识别的最大互信息(MCE)和最小分类误差(MCE)标准研究分类器的鉴别培训研究。观察到MCE培训的分类器可以达到比MMI训练的准确性更高的识别精度。 MCE培训的汉语,繁体中文和日文字符分类器的基准结果在三个识别任务中报告了9119,20924和12333个字符的三个识别任务。

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