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A speech detection method based on sparse representation in low SNR environments

机译:低信噪比环境下基于稀疏表示的语音检测方法

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摘要

The research difficulties of speech detection in the present focus on the cases that the signal-to-noise ratio(SNR) is low and the background noise changes dramatically. For the problem of speech detection under low SNR environments, based on the sparsity of speech in frequency domain and the sparse representation ability in frequency domain of the over-complete Fourier basis, the speech signal is reconstructed with Matching Pursuit algorithm, and we propose a low SNR speech detection method which uses the short time energy of the reconstructed signal as a detection feature. The experimental results show that this algorithm exhibits higher robustness in the low SNR white noise environments.
机译:目前语音检测的研究难点集中在信噪比(SNR)低,背景噪声变化剧烈的情况下。针对低信噪比环境下的语音检测问题,基于频域中语音的稀疏性和过完全傅立叶基础上频域中的稀疏表示能力,利用匹配追踪算法对语音信号进行重构,提出了一种语音识别方法。低SNR语音检测方法,该方法将重建信号的短时能量用作检测功能。实验结果表明,该算法在低信噪比白噪声环境下具有较高的鲁棒性。

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