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A comparative study between recent wavelet nonthresholding methods and the well-established spectral subtractive and statistical-model-based algorithms for speech enhancement under real noisy conditions

机译:最近的小波非阈值方法与完善的基于频谱减法和统计模型的真实噪声条件下语音增强算法的比较研究

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In this paper, a comparative study between current wavelet nonthresholding methods for speech enhancement and the well-established spectral subtractive and statistical-model-based algorithms is performed. The development and evaluation of speech enhancement methods is essential in many branches of telecommunications and entertainment industry. Two classes of speech enhancement methods encompassing both, DFT and wavelet based methods, are evaluated and faced with the current wavelet nonthresholding schemes. Objective analysis taking into account various real noise environments are presented. Questions about wavelet thresholding performance on real noisy environments are discussed. Objective evaluations considering SNR improvement, correlation among original and enhanced sentences and PESQ scores shown that nonthresholding schemes overcome totally the wavelet thresholding methods in PESQ scores, besides performing equally well in noise suppression. A second objective is the identification, among the considered methods, of the more suitable to certain kind of real noisy conditions.
机译:本文对现有的用于语音增强的小波非阈值方法与已建立的基于谱减和统计模型的算法进行了比较研究。语音增强方法的开发和评估在电信和娱乐行业的许多分支中都至关重要。评估了包括DFT和基于小波的方法在内的两类语音增强方法,并面对了当前的小波非阈值方案。提出了考虑各种实际噪声环境的客观分析。讨论了有关在实际噪声环境下的小波阈值性能的问题。考虑SNR改善,原始句子和增强句子之间的相关性以及PESQ分数的客观评估表明,非阈值方案除了在噪声抑制方面表现出色外,还完全克服了PESQ分数中的小波阈值化方法。第二个目标是,在考虑的方法中,确定更适合某种实际嘈杂条件的方法。

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