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Application of Support Vector Machine with Modified Gaussian Kernel in A Noise-Robust Speech Recognition System

机译:辅助高斯内核在噪声强大的语音识别系统中的应用支持向量机在鲁棒语音识别系统中的应用

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To improve the generalization ability of the machine learning and solve the problem that recognition rates of the speech recognition system become worse in the noisy environment, a modified Gaussian kernel function which may pay attention to the similar degree between sample space and feature space is proposed. In this paper, used the modified Gaussian kernel support vector machine to a speech recognition system for Chinese isolated words, non-specific person and middle glossary quantity and chose the improved noise-robust MFCC parameters as the speech feature, used "one-against-one" method for the multi-class classification problem of SVM, and analyzed the influence of Gaussian kernel parameter ?? and error penalty parameter C on SVM generalization ability. Experiments indicate that the recognition rates of SVM which chose the best parameters and modified Gaussian kernel are much better than those of traditional HMM model and RBF network. The robustness is better too.
机译:为了提高机器学习的泛化能力并解决语音识别系统的识别率在嘈杂环境中变得更糟的问题,提出了可以注意样本空间和特征空间之间类似程度的修改的高斯内核功能。在本文中,使用了修改的高斯内核支持向量机向中国孤立词语,非特定人和中学词汇表的语音识别系统,并选择了改进的噪声鲁棒MFCC参数作为语音特征,使用“单反逆”。 SVM多级分类问题的一个“方法,分析了高斯核参数的影响?和错误惩罚参数C对SVM泛化能力。实验表明,选择最佳参数和修改的高斯内核的SVM的识别率远远优于传统的HMM模型和RBF网络。鲁棒性也更好。

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