New features extracted from Nyquist filter bank for text-independent speaker identification

Nirmalya Sen, T. Basu, H. Patil
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引用次数: 7

Abstract

This paper introduces the use of a new method of feature extraction based on frequency-time analysis approach for text-independent speaker identification. The impetus for this new feature extraction technique comes from the filter bank summation method of STFT using Nyquist filter bank. The focus of this work is on applications which yield higher identification accuracy without increasing the computational effort. We have proposed this transform from speaker identification perspective. The proposed transformation can be used for both uniform width filter bank and non-uniform width filter bank representation. A complete experimental evaluation was conducted on a database of 61 speakers with Gaussian mixture speaker model. This new feature extraction technique has been compared with Mel-frequency cepstral coefficient (MFCC) feature. The average accuracy of MFCC feature set was 88.05%. The average accuracy of proposed feature set with uniform width filter bank and non uniform width filter bank was 90.24% and 90.42% respectively. The average accuracy was 92.26% after score level fusion of uniform width filter bank feature and non uniform width filter bank feature of the proposed transformation. The discrimination capability of the proposed feature sets have been evaluated statistically using F-ratio and J-measure. Experimental results show that the proposed feature sets have higher discrimination capability compared to MFCC feature set.
从Nyquist滤波器组中提取新的特征用于文本无关的说话人识别
本文介绍了一种基于频率-时间分析方法的特征提取方法用于文本无关说话人识别。这种新的特征提取技术的动力来自于使用奈奎斯特滤波器组的STFT滤波器组求和方法。这项工作的重点是在不增加计算工作量的情况下产生更高识别精度的应用。我们从说话人识别的角度提出了这种转换。该变换既可用于等宽滤波器组表示,也可用于非等宽滤波器组表示。采用高斯混合扬声器模型对61个扬声器数据库进行了完整的实验评价。并与mel -频率倒谱系数(MFCC)特征进行了比较。MFCC特征集的平均准确率为88.05%。等宽滤波器组和非等宽滤波器组的平均准确率分别为90.24%和90.42%。将该变换的等宽滤波器组特征与非等宽滤波器组特征进行分数级融合后,平均准确率为92.26%。利用F-ratio和J-measure对所提出的特征集的识别能力进行了统计评估。实验结果表明,与MFCC特征集相比,该特征集具有更高的识别能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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