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A non-causal approach to voice activity detection in adverse environments using a novel noise estimator

机译:使用新型噪声估计器在不利环境中进行语音活动检测的非因果方法

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Analyzing the characteristics of the LR-based VAD, it was found that the delay associated with the decision directed (DD) a priori SNR estimator can lead to detection errors at speech onsets and offsets. In this paper the properties of a non-causal estimator, used before in a speech enhancement system, are investigated. It is shown that the application of the non-causal estimator improves the robustness of the VAD in noisy environments, specifically at low SNRs. In addition, the associated noise estimation procedure has been further improved by the application of a dynamic time varying smoothing factor. Objective tests conducted based on speechon-speech discrimination show that the proposed VAD outperforms standard VAD algorithms, including ETSI-VADNest, AMR1, AMR2, and also the statistical VADs based on smoothed LR and multiple observation LR, specifically at low SNRs, at the cost of some delay.
机译:通过分析基于LR的VAD的特性,发现与先验SNR估计的决策指示(DD)相关的延迟可能导致语音开始和偏移时的检测错误。本文研究了语音增强系统中以前使用的非因果估计量的性质。结果表明,非因果估计器的应用提高了VAD在嘈杂环境中的鲁棒性,特别是在低SNR的情况下。此外,通过使用动态时变平滑因子,可以进一步改善相关的噪声估计过程。根据语音/非语音歧视进行的客观测试表明,拟议的VAD优于标准VAD算法,包括ETSI-VADNest,AMR1,AMR2,以及基于平滑LR和多观察LR的统计VAD,特别是在低SNR时。费用有些延迟。

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