基于语音增强残差的改进最小控制递归平均噪声谱估计

Dalei Wu, Weiping Zhu, M. Swamy
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引用次数: 5

摘要

传统的基于软判决的噪声估计算法通常假设噪声存在,只有在语音不存在的情况下。因此,估计的噪声谱不会在语音存在的片段中更新,而只在语音缺失的片段中更新。这种假设通常会导致噪声谱估计的延迟和偏差等问题。在本文中,我们提出了一种利用语音增强残差(SER)来补偿存在语音的估计偏差的解决方案。该方法可以与改进的最小控制平均(IMCRA)方法自然结合,以一致地更新噪声谱。实验结果表明,基于ser的IMCRA可以降低不同信噪比下各种类型噪声的相对分段估计误差,特别是对汽车内部噪声的估计误差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Noise spectrum estimation with improved minimum controlled recursive averaging based on speech enhancement residue
The conventional soft-decision based noise estimation algorithms normally assume that noise exists, only when speech is absent. Consequently, the estimated noise spectra are not updated in the segments of speech presence, but only in those of speech absence. This assumption often results in several problems such as delay and bias of noise spectrum estimates. In this paper, we propose a solution by using speech enhancement residue (SER) to compensate the estimation bias in the presence of speech. The proposed method can be naturally combined with the improved minimum controlled averaging (IMCRA) method to consistently update noise spectra. The experimental results show that the SER-based IMCRA can reduce the relative segmental estimation errors for various types of noise at different SNR levels, especially for car internal noise.
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