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ONLINE INTER-FRAME CORRELATION ESTIMATION METHODS FOR SPEECH ENHANCEMENT IN FREQUENCY SUBBANDS

机译:频率子带中语音增强的在线帧间帧间相关估计方法

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摘要

In this paper, we propose solutions for the online adaptation of optimal FIR filters for speech enhancement in DFT subbands. An important ingredient to such filters is the estimation of the inter-frame correlation of the clean speech signal. While this correlation was assumed to be perfectly known in former studies, we discuss two online estimation approaches based on a constant noise inter-frame correlation and on the use of a binary mask. We show that a filtering of subband signals based on these estimated quantities outperforms a conventional, instantaneous spectral weighting, such as the frequency-domain Wiener filter at least for high SNR conditions.
机译:在本文中,我们提出了用于在DFT子带中的语音增强的最佳FIR滤波器的在线适应的解决方案。 这种滤波器的重要成分是估计清洁语音信号的帧间相关性。 虽然假设这种相关性在以前的研究中是完全知名的,但是我们基于常量噪声帧间相关性和二进制掩模的使用讨论了两个在线估计方法。 我们表明,基于这些估计的数量的子带信号过滤优于传统的瞬时频谱加权,例如频域维纳滤波器,至少用于高SNR条件。

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