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Deep Knowledge Training and Heterogeneous CNN for Handwritten Chinese Text Recognition

机译:深度知识训练和异构CNN用于手写中文识别

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It is well known that the handwritten Chinese text recognition is a difficult problem since there are a large number of classes. In order to solve this problem, we proposed a whole new framework for unconstrained handwritten Chinese text recognition. The core module of the framework is the heterogeneous CNN trained by deep knowledge. The experimental results showed that our proposed method could achieve much better performance than the state-of-the-art methods (96.28% vs. 91.39% of CR on CASIA test set). Moreover, since the proposed framework is general, it can also be applied to other time sequence problems, such as speech recognition and video analysis.
机译:众所周知,手写中文文本识别是一个困难的问题,因为存在许多类。为了解决这个问题,我们提出了一个全新的无约束手写中文文本识别框架。该框架的核心模块是经过深厚知识训练的异构CNN。实验结果表明,我们提出的方法可以比最先进的方法获得更好的性能(CASIA测试集的CR率为96.28%,而CR为91.39%)。而且,由于所提出的框架是通用的,因此它也可以应用于其他时序问题,例如语音识别和视频分析。

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