分数阶功率谱的广义维纳滤波

A. Liutkus, R. Badeau
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引用次数: 93

摘要

近年来,许多研究都集中在使用所谓的软掩蔽策略的独立波形的单传感器分离上,其中混合物的短期傅里叶变换是由光谱图模型的比例相乘的。当信号是广义平稳时,这种策略在理论上被证明是最优的维纳滤波:源的功率谱图应该加起来产生混合物的功率谱图。然而,经验表明,使用分数谱图代替,例如振幅,在实践中产生良好的性能,因为它们在实验上更符合可加性假设。据我们所知,迄今为止还没有对这一过滤过程的概率解释。在本文中,我们证明了为构建软掩模而假设分数谱图的可加性可以理解为分离局部平稳α-稳定可调和过程,简而言之,α-可调和过程,从而从理论上证明了这一过程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Generalized Wiener filtering with fractional power spectrograms
In the recent years, many studies have focused on the single-sensor separation of independent waveforms using so-called soft-masking strategies, where the short term Fourier transform of the mixture is multiplied element-wise by a ratio of spectrogram models. When the signals are wide-sense stationary, this strategy is theoretically justified as an optimal Wiener filtering: the power spectrograms of the sources are supposed to add up to yield the power spectrogram of the mixture. However, experience shows that using fractional spectrograms instead, such as the amplitude, yields good performance in practice, because they experimentally better fit the additivity assumption. To the best of our knowledge, no probabilistic interpretation of this filtering procedure was available to date. In this paper, we show that assuming the additivity of fractional spectrograms for the purpose of building soft-masks can be understood as separating locally stationary α-stable harmonizable processes, α-harmonizable in short, thus justifying the procedure theoretically.
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