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Voiced/unvoiced speech classification-based adaptive filtering of decomposed empirical modes for speech enhancement

机译:基于浊音/清音语音分类的自适应经验模式自适应滤波,用于语音增强

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摘要

This study presents a speech filtering method exploiting the combined effects of the empirical mode decomposition (EMD) and the local statistics of the speech signal using the adaptive centre weighted average (ACWA) filter. The novelty lies in incorporating the frame class (voiced/unvoiced) in the conventional filtering using the EMD and the ACWA filter. The speech signal is segmented into frames and each one is broken down by the EMD into a finite number of intrinsic mode functions (IMFs). The number of filtered IMFs depends on whether the frame is voiced or unvoiced. An energy criterion is used to identify voiced frames while a stationarity index distinguishes between unvoiced and transient sequences. Reported results obtained on signals corrupted by additive noise (white, F16, factory) show that the proposed filtering in line with the frame class is very effective in removing noise components from noisy speech signal. Compared with filtering results of the wavelet, the ACWA, and the EMD-ACWA methods, the proposed technique gives much better results in terms of average segmental signal-to-noise ratio and listening quality based on perceptual evaluation speech quality score.
机译:这项研究提出了一种语音滤波方法,该方法利用自适应中心加权平均(ACWA)滤波器,利用经验模式分解(EMD)和语音信号的本地统计信息的组合效果。新颖之处在于,在使用EMD和ACWA过滤器的常规过滤中将帧类别(清音/清音)合并到了一起。语音信号被分为几帧,并且每个信号都被EMD分解为有限数量的固有模式函数(IMF)。过滤后的IMF的数量取决于该帧是浊音还是清音。能量标准用于识别浊音帧,而平稳性索引则区分清音序列和瞬态序列。对被加性噪声破坏的信号(白色,F16,工厂)获得的报告结果表明,与帧类别一致的拟议滤波在消除有声语音信号中的噪声成分方面非常有效。与小波,ACWA和EMD-ACWA方法的滤波结果相比,该技术在基于语音评估语音质量评分的平均分段信噪比和收听质量方面给出了更好的结果。

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