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Study of speech features robustness for speaker verification application in noisy environments

机译:噪声环境下说话人验证应用的语音特征鲁棒性研究

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This paper presents a comparative study and evaluation of the performances of four speech feature vectors, i.e., MFCC, IMFCC, LFCC, and PNCC in a speaker verification system based on speaker modeling through the Gaussian mixture model (GMM) under clean and noisy speech conditions. The TIMIT and NOISEX92 dataset were used in implementing the tests for speech signal and noise, respectively. The evaluation results show that IMFCC and PNCC provide superior performance in the presence of noise. In order to enhance the performance of the system under noisy conditions, the application of spectral subtraction algorithm as a pre-processing stage was investigated. It only improved the performance for the speech signal contaminated with white noise.
机译:本文基于高斯混合模型(GMM)在干净嘈杂的语音条件下基于说话人建模的说话人验证系统中,对MFCC,IMFCC,LFCC和PNCC这四个语音特征向量的性能进行了比较研究和评估。 。 TIMIT和NOISEX92数据集分别用于实现语音信号和噪声的测试。评估结果表明,IMFCC和PNCC在存在噪声的情况下具有出色的性能。为了提高系统在嘈杂条件下的性能,研究了光谱减法算法在预处理阶段的应用。它仅改善了被白噪声污染的语音信号的性能。

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