Convolutional Neural Network Committees for Handwritten Character Classification

Document Analysis and Recognition(2011)

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摘要
In 2010, after many years of stagnation, the MNIST handwriting recognition benchmark record dropped from 0.40% error rate to 0.35%. Here we report 0.27% for a committee of seven deep CNNs trained on graphics cards, narrowing the gap to human performance. We also apply the same architecture to NIST SD 19, a more challenging dataset including lower and upper case letters. A committee of seven CNNs obtains the best results published so far for both NIST digits and NIST letters. The robustness of our method is verified by analyzing 78125 different 7-net committees.
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关键词
handwritten character recognition,image classification,learning (artificial intelligence),neural nets,MNIST handwriting recognition benchmark,NIST SD 19,NIST digits,NIST letters,convolutional neural network committees,graphics cards,handwritten character classification,trained CNN,Committee,Convolutional Neural Networks,Graphics Processing Unit,Handwritten Character Recognition
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