Publication | Closed Access
Convolutional Neural Network Committees for Handwritten Character Classification
536
Citations
25
References
2011
Year
Unknown Venue
Convolutional Neural NetworkEngineeringMachine LearningAutoencodersNist Sd 19Image ClassificationImage AnalysisData SciencePattern RecognitionText RecognitionSparse Neural NetworkCharacter RecognitionNist DigitsMachine VisionNist LettersComputer ScienceHandwritten Character ClassificationDeep LearningNeuroscience
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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