Robust voice activity detection using empirical mode decomposition and modulation spectrum analysis

Y. Kanai, M. Unoki
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引用次数: 3

Abstract

Voice activity detection (VAD) is used to detect speech/non-speech periods in observed signals. However, the current VAD technique has a serious problem in that the accuracy of detection of speech periods drastically reduces if it is used for noisy speech and/or for mixtures of speech/non-speech such as those in music and environmental sounds. Thus, VAD needs to be robust to enable speech periods to be accurately detected in these situations. This paper proposes an approach to robust VAD using empirical mode decomposition (EMD) and modulation spectrum analysis (MSA) to resolve these problems. This is proposed to reducing background noise by using EMD without estimating SNR (noise conditions), and then to determining speech/non-speech periods by using MSA. Three experiments on VAD in real environments were conducted to evaluate the proposed method by comparing it with typical methods (Otsu's and G.729B). The results demonstrated that the proposed method could accurately detect speech periods more accurately than the typical methods.
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鲁棒语音活动检测使用经验模式分解和调制频谱分析
语音活动检测(VAD)用于检测观察信号中的语音/非语音周期。然而,当前的VAD技术存在一个严重的问题,即如果它用于嘈杂的语音和/或语音/非语音的混合,例如音乐和环境声音,则语音周期检测的准确性会大大降低。因此,VAD需要具有鲁棒性,以便在这些情况下准确检测语音周期。本文提出了一种基于经验模态分解(EMD)和调制频谱分析(MSA)的鲁棒VAD方法来解决这些问题。这建议通过使用EMD而不估计信噪比(噪声条件)来降低背景噪声,然后使用MSA来确定语音/非语音周期。通过与典型方法(Otsu’s和G.729B)的比较,在实际环境中进行了三个VAD实验,对所提出的方法进行了评估。实验结果表明,该方法能较传统的语音周期检测方法更准确地检测语音周期。
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