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Mean Hilbert Envelope Coefficients (MHEC) for Robust Speaker Recognition

机译:可靠的说话人识别的平均希尔伯特信封系数(MHEC)

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The recently introduced mean Hilbert envelope coefficients (MHEC) have been shown to be an effective alternative to MFCCs for robust speaker identification under noisy and reverberant conditions in relatively small tasks. In this study, we investigate the effectiveness of these acoustic features in the context of a state-of-the-art speaker recognition system. The i-vectors are used to represent the acoustic space of speakers, while modeling is performed via probabilistic linear discriminant analysis (PLDA). We report speaker verification performance on the NIST SRE-2010 extended telephone and microphone trials for both female and male genders. Experimental results confirm consistent superiority of MHECs to traditional MFCCs within i-vector speaker verification, particularly under microphone and telephone training-test mismatch conditions. In addition, fusion of subsystems trained with the individual front-ends proves that the two acoustic features (i.e., MHEC and MFCC) provide complimentary information for recognizing speakers.
机译:在相对较小的任务中,在嘈杂和混响条件下,最近引入的平均希尔伯特包络系数(MHEC)已被证明是MFCC的有效替代品,可用于健壮的说话人识别。在这项研究中,我们将在最先进的说话人识别系统的背景下研究这些声学特征的有效性。 i向量用于表示扬声器的声学空间,而建模则通过概率线性判别分析(PLDA)进行。我们在NIST SRE-2010扩展电话和麦克风测试中报告了男女的扬声器验证性能。实验结果证实,在i-vector扬声器验证中,MHEC相对于传统MFCC始终具有优越性,尤其是在麦克风和电话训练-测试失配条件下。另外,将经过各个前端训练的子系统融合在一起,证明了两个声学特征(即MHEC和MFCC)为识别说话者提供了补充信息。

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