基于小波变换和Kullback-Leibler散度的语音信号降噪

S. Tabibian, A. Akbari
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引用次数: 7

摘要

提出了一种基于Kullback-Leibler (KL)散度的语音信号降噪方法。该算法首先对噪声语音进行小波包变换并分解成子带;然后,我们对每个子带的噪声语音系数施加阈值,以获得增强语音。为了确定阈值,首先计算噪声语音、估计噪声和估计干净语音子带的分布;然后计算噪声语音和噪声分布之间的对称KL距离。最后根据计算出的距离进行语音/噪声决策。我们使用TIMIT数据库进行了一些测试,以评估所提出方法的性能,并将其与以前的语音增强方法进行比较。利用语音质量度量(PESQ)的感知评价和输入信噪比增益对算法进行评价。与之前基于小波的测试噪声技术的结果相比,我们获得了2db的信噪比和0.5的PESQ-MOS分数的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Noise reduction from speech signal based on wavelet transform and Kullback-Leibler divergence
A new method for noise reduction from speech signals based on the Kullback-Leibler (KL) divergence has been presented in this paper. First, the algorithm performs the wavelet packet transform to the noisy speech and decomposes it into subbands; then we apply a threshold on the noisy speech coefficients, in each subband, to obtain the enhanced speech. To determine the threshold, first the distributions of the noisy speech, estimated noise and estimated clean speech subbands are calculated; then a symmetric KL distance is calculated between the noisy speech and noise distributions. Finally a speech/noise decision is made based on the calculated distance. We conducted some tests using the TIMIT database in order to assess the performance of the proposed method and to compare it to the previous speech enhancement methods. The algorithm is evaluated using the perceptual evaluation of speech quality measure (PESQ) and the gain on input SNR. We obtain an improvement of 2db on SNR and 0.5 on PESQ-MOS score for the proposed method in comparison to the results of the previous wavelet based techniques for tested noises.
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