Research of speaker recognition system based on GMM-SVM
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摘要: 针对同类语音数据的相似性和不同类数据具有不同几何距离的特点,提出了一种基于GMM-SVM的说话人识别系统。该系统结合了GMM和SVM的优点,解决了GMM在语音数据较小时不能区分数据间的差异性及SVM在处理大量数据时识别率下降的问题;采用改进的K-Means算法实现模型参数初始化,提高了参数精度。试验结果表明, 基于GMM-SVM的说话人识别系统较单独采用GMM或SVM的系统具有更好的识别率和鲁棒性。Abstract: According to the similarity of speech data of the same type and characteristic that data of different types has different geometrical distance, the paper proposed a speaker recognition system based on SVM-GMM. The system combines advantages of GMM and SVM, solves problems that GMM cannot distinguish differences between the voice data while the data is small, and recognition rate of SVM drops while handling large amounts of data. The improved K-Means algorithm is used for initialization of model parameters to improve accuracy. The experiment results show that speaker recognition system based on SVM-GMM has better recognition rate and robustness than the system using GMM or SVM alone.
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Key words:
- speaker recognition /
- GMM /
- SVM /
- recognition rate
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