Publication | Closed Access
Handwritten Character Recognition by Alternately Trained Relaxation Convolutional Neural Network
120
Citations
28
References
2014
Year
Unknown Venue
Convolutional Neural NetworkEngineeringMachine LearningAutoencodersSpeech RecognitionImage AnalysisPattern RecognitionRelaxation ConvolutionText RecognitionSparse Neural NetworkCharacter RecognitionData AugmentationMachine VisionOptical Character RecognitionFeature LearningComputer ScienceMedical Image ComputingDeep LearningDeep Learning MethodsRelaxation Convolution LayerHandwritten Character RecognitionDocument Processing
Deep learning methods have recently achieved impressive performance in the area of visual recognition and speech recognition. In this paper, we propose a hand- writing recognition method based on relaxation convolutional neural network (R-CNN) and alternately trained relaxation convolutional neural network (ATR-CNN). Previous methods regularize CNN at full-connected layer or spatial-pooling layer, however, we focus on convolutional layer. The relaxation convolution layer adopted in our R-CNN, unlike traditional convolutional layer, does not require neurons within a feature map to share the same convolutional kernel, endowing the neural network with more expressive power. As relaxation convolution sharply increase the total number of parameters, we adopt alternate training in ATR-CNN to regularize the neural network during training procedure. Our previous C- NN took the 1st place in ICDAR'13 Chinese Handwriting Character Recognition Competition, while our latest ATR-CNN outperforms our previous one and achieves the state-of-the-art accuracy with an error rate of 3.94%, further narrowing the gap between machine and human observers (3.87%).
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