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Recognition of Multi-Fontstyle Characters Based on Convolutional Neural Network

机译:基于卷积神经网络的多字体样式字符识别

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Convolutional Neural Networks are popularly used in OCR and document recognition. This paper applies stochastic diagonal Levenberg-Marquardt method into a convolutional network, which is presented by Simard. The relations between the sample class number, global learning rate and the network''s convergence speed are discussed, Experiments on different train sets showed that class number is an essantial factor to the neural network''s convergence. We have successfully expeanded Simard network into recognition of multi-font style little character set like Baidu CAPTCHA and got a recognition rate as 98.4% in single Baidu CAPTCHA character, and 93.5% as the overall rate. Experiments in this paper has confirmed that Convolutional Neural Network can be successfully used in recognition of multi-fontstyle little character set.
机译:卷积神经网络广泛用于OCR和文档识别中。本文将随机对角线Levenberg-Marquardt方法应用于卷积网络中,由Simard提出。讨论了样本类数,全局学习率和网络收敛速度之间的关系。在不同训练集上的实验表明,类数是神经网络收敛的重要因素。我们已经成功地扩展了Simard网络,使其能够识别像百度验证码这样的多字体样式小字符集,并且单个百度验证码字符的识别率达到98.4%,总识别率达到93.5%。本文的实验已经证实,卷积神经网络可以成功地用于识别多字体小字符集。

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