MFCC和矢量量化在说话人识别中的应用

A. Gupta, H. Gupta
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引用次数: 12

摘要

在说话人识别中,大部分的计算来源于未知说话人的特征向量与数据库中的模型之间的似然计算。在本文中,我们专注于优化Mel频率倒谱系数(MFCC)用于特征提取和矢量量化(VQ)用于特征建模。我们在匹配之前通过对测试序列进行预量化来减少特征向量的数量,在识别过程中通过排除不可能的说话人来减少说话人的数量。识别率和样本间最小平均距离这两个重要参数取决于码本的大小和倒谱系数的数量。我们发现,当mfcc的数量和码本大小发生变化时,这种方法产生了显著的性能。识别率高达89%,失真率降低了69%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Applications of MFCC and Vector Quantization in speaker recognition
In speaker recognition, most of the computation originates from the likelihood computations between feature vectors of the unknown speaker and the models in the database. In this paper, we concentrate on optimizing Mel Frequency Cepstral Coefficient (MFCC) for feature extraction and Vector Quantization (VQ) for feature modeling. We reduce the number of feature vectors by pre-quantizing the test sequence prior to matching, and number of speakers by ruling out unlikely speakers during recognition process. The two important parameters, Recognition rate and minimized Average Distance between the samples, depends on the codebook size and the number of cepstral coefficients. We find, that this approach yields significant performance when the changes are made in the number of mfcc's and the codebook size. Recognition rate is found to reach upto 89% and the distortion reduced upto 69%.
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