Multi-stage Feature Extraction in Offline Handwritten Chinese Character Recognition
Convolutional neural network(CNN)has achieved tremendous success in handwritten Chinese character recognition(HCCR).However,most CNN-based HCCR research nowadays focus on complicated and deep CNN module,rarely analyzing the whole feature extraction process which has a crucial impact on the final recognition rate.In this paper,the following two questions are answered:(1).Information loss is inevitable on the training stage of complex learning problems,but at which layer does the information loss mainly occur;(2).Different layers have different effects on CNN,what is the best place for multistage feature extraction that influences CNN most.We make use of the proposed module in typical CNN and analyze classification results on CASIA-HWDB1.1.It is shown in this paper that,(1).Multi-stage feature extraction achieves better performance on HCCR than single stage feature extraction.(2).Multi-stage feature extraction should be designed at the convolution layer rather than the pooling layer.(3).Multi-stage feature extraction designed at shallow layers outperforms that designed at deeper layers.By analyzing the structure of multistage feature extraction,we propose an appropriate CNN approach to HCCR,which achieves a new state-of-the-art recognition accuracy of 91.89%.
Deep learning Convolutional neural networks Feature extraction Handwritten chinese character recognition
Xianglian Wu Chang Shu Ning Zhou
University of Electronic Science and Technology of China,Chengdu,China
国际会议
第七届全国模式识别学术会议(The 7th Chinese Conference on Pattern Recognition,CCPR2016)
成都
英文
474-485
2016-11-03(万方平台首次上网日期,不代表论文的发表时间)