基于自相关特征与投影测量相结合的说话人识别技术

Kuo-Hwei Yuo, Tai-Hwei Hwang, Hsiao-Chuan Wang
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引用次数: 18

摘要

本文提出了一种鲁棒的语音信号被加性噪声和信道失真破坏时的说话人识别方法。鲁棒性是通过假设干扰噪声是平稳的,信道效应是固定的而得到的。为了减小加性噪声和卷积噪声对自相关序列的影响,提出了一种两步时域滤波方法。第一步在自相关域进行时域滤波去除加性噪声,第二步在对数谱域对滤波后的自相关序列进行均值减法去除信道效应。不需要先验的噪声特性知识。加性噪声可以是有色噪声。然后将所提出的鲁棒特征与投影测量技术相结合,进一步提高了识别精度。实验结果表明,该方法能显著提高噪声环境下说话人识别任务的性能。
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Combination of autocorrelation-based features and projection measure technique for speaker identification
This paper presents a robust approach for speaker identification when the speech signal is corrupted by additive noise and channel distortion. Robust features are derived by assuming that the corrupting noise is stationary and the channel effect is fixed during an utterance. A two-step temporal filtering procedure on the autocorrelation sequence is proposed to minimize the effect of additive and convolutional noises. The first step applies a temporal filtering procedure in autocorrelation domain to remove the additive noise, and the second step is to perform the mean subtraction on the filtered autocorrelation sequence in logarithmic spectrum domain to remove the channel effect. No prior knowledge of noise characteristic is necessary. The additive noise can be a colored noise. Then the proposed robust feature is combined with the projection measure technique to gain further improvement in recognition accuracy. Experimental results show that the proposed method can significantly improve the performance of speaker identification task in noisy environment.
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Errata to "Using Steady-State Suppression to Improve Speech Intelligibility in Reverberant Environments for Elderly Listeners" Farewell Editorial Inaugural Editorial: Riding the Tidal Wave of Human-Centric Information Processing - Innovate, Outreach, Collaborate, Connect, Expand, and Win Three-Dimensional Sound Field Reproduction Using Multiple Circular Loudspeaker Arrays Introduction to the Special Issue on Processing Reverberant Speech: Methodologies and Applications
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