Feature Dimension Reduction Based on Genetic Algorithm for Mandarin Digit Recognition
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    Abstract:

    The dimensions are higher after combining MFCC with LPCC, which affect the performance of recognition. To solve the problem, genetic algorithm parameters for initial feature dimension reduction, to improve recognition performance. Firstly, we extract MFCC and LPCC of the speech signal. Then we reduce the dimensionality based on genetic algorithm. Finally, recognition is presented based on SVM with the low dimensional data. Simulation results show that compared to traditional PCA, the genetic algorithm recognition can increase the recognition rate by 12.2%. Meanwhile, recognition rate was reduced by 1.23% compared with the initial feature,but the recognition time increased 4.5 times.

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高文曦,孙小琪,镇丽华.基于遗传算法数据降维的汉语数字语音识别.计算机系统应用,2016,25(1):150-153

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History
  • Received:April 23,2015
  • Revised:June 15,2015
  • Adopted:
  • Online: January 15,2016
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