Improved Handwritten Digit Recognition Based on CNN and PSO-SVM
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TP391.9

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    Abstract:

    In order to solve the problems in traditional convolutional neural network -based handwritten digits recognition, such as the computation overflow and high demand of computer hardware caused by the exponential function operation of Softmax, a support vector machine (SVM) handwritten digital recognition method based on the feature extraction of convolutional neural network is proposed. And, in order to improve the recognition accuracy of handwritten digits, a particle swarm optimization method based on the fitness function in the sense of K -CV is designed. Experimental simulation based on Semeion and MNIET handwritten digits shows that the method proposed in this paper can achieve higher recognition rate than the traditional methods.

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杨刚,贺冬葛,戴丽珍.基于CNN和粒子群优化SVM的手写数字识别研究[J].华东交通大学学报英文版,2020,37(4):41-47.
Yang Gang, He Dongge, Dai Lizhen. Improved Handwritten Digit Recognition Based on CNN and PSO-SVM[J]. JOURNAL OF EAST CHINA JIAOTONG UNIVERSTTY,2020,37(4):41-47

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  • Online: May 11,2021
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