Toward high-performance online HCCR

Pattern Recognition Letters(2017)

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摘要
A novel training strategy, namely DropDistortion, is proposed to improve the online handwritten Chinese character recognition.The path signature enables effective feature extraction from online characters and greatly improves the performance.Spatial stochastic max-pooling performs feature map distortion and model averaging in an effcient way. This paper presents an investigation of several techniques that increase the accuracy of online handwritten Chinese character recognition (HCCR). We propose a new training strategy named DropDistortion to train a deep convolutional neural network (DCNN) with distorted samples. DropDistortion gradually lowers the degree of character distortion during training, which allows the DCNN to better generalize. Path signature is used to extract effective features for online characters. Further improvement is achieved by employing spatial stochastic max-pooling as a method of feature map distortion and model averaging. Experiments were carried out on three publicly available datasets, namely CASIA-OLHWDB 1.0, CASIA-OLHWDB 1.1, and the ICDAR2013 online HCCR competition dataset. The proposed techniques yield state-of-the-art recognition accuracies of 97.67%, 97.30%, and 97.99%, respectively.
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关键词
Online handwritten Chinese character recognition,Deep convolutional neural network,Spatial stochastic max-pooling,Character distortion,Path signature
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