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A voice activity detection algorithm with sub-band detection based on time-frequency characteristics of mandarin

机译:基于普通话时频特性的带子带语音活动检测算法

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Voice activity detection algorithms are widely used in the areas of voice compression, speech synthesis, speech recognition, speech enhancement, and etc. In this paper, an efficient voice activity detection algorithm with sub-band detection based on time-frequency characteristics of mandarin is proposed. The proposed sub-band detection consists of two parts: crosswise detection and lengthwise detection. Energy detection and pitch detection are in the range of considerations. For a better performance, double-threshold criterion is used to reduce the misjudgment rate of the detection. Performance evaluation is based on six noise environments with different SNRs. Experiment results indicate that the proposed algorithm can detect the area of voice effectively in non-stationary environment and low SNR environment and has the potential to progress.
机译:语音活动检测算法广泛应用于语音压缩,语音合成,语音识别,语音增强等领域。建议的。所提出的子带检测包括两个部分:横向检测和纵向检测。能量检测和音高检测在考虑范围之内。为了获得更好的性能,使用双阈值准则来降低检测的误判率。性能评估基于具有不同SNR的六个噪声环境。实验结果表明,该算法能够在非平稳环境和低信噪比环境下有效地检测语音区域,具有发展的潜力。

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