基于频谱域熵的语音活动检测

M. Asgari, A. Sayadian, M. Farhadloo, E. A. Mehrizi
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引用次数: 12

摘要

本文提出了一种基于幅度谱熵估计的语音活动检测算法。此外,采用似然比检验(LRT)确定语音片段与非语音片段分离的阈值。假设干净语音和噪声信号的熵值分布都是高斯分布。熵的概念在语音检测问题中的应用是基于这样一个假设,即语音段中的信号频谱比噪声段中的信号频谱更有组织。该方法的主要优点之一是对噪声级的变化不太敏感。仿真结果表明,基于熵的VAD在低信噪比(SNR < 0 dB)条件下具有良好的性能。
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Voice Activity Detection Using Entropy in Spectrum Domain
In this paper we develop a voice activity detection algorithm based on entropy estimation of magnitude spectrum. In addition, the likelihood ratio test (LRT) is employed to determine a threshold to separate of speech segments from non-speech segments. The distributions of entropy magnitude of clean speech and noise signal are assumed to be Gaussian. The application of the concept of entropy to the speech detection problem is based on the assumption that the signal spectrum is more organized during speech segments than during noise segments. One of the main advantages of this method is that it is not very sensitive to the changes of noise level. Our simulation results show that the entropy based VAD is high performance in low signal to noise ratio (SNR) conditions (SNR < 0 dB).
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