Application of neural network to source PSD estimation for wiener filter based array sound source enhancement

Tomoko Kawase, K. Niwa, Kazunori Kobayashi, Yusuke Hioka
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引用次数: 11

Abstract

The Wiener filter has been used as a post-filter applied to the output of beamforming, which boosts the overall performance of sound source enhancement. Since the power spectral density (PSD) of each sound source needs to be estimated to derive the Wiener filter, a previous study attempted to estimate source PSDs from the output signals of multiple beamformings using linear approximation realized by the least squares method. In this study, we propose an alternative approach to this estimation process that uses a neural network to implement the approximation by using a non-linear function. Experimental results reveal that the proposed method estimated the Wiener filter more accurately, resulting in higher source enhancement performance while reducing the distortion in the desired sound signal.
神经网络在基于维纳滤波的阵列声源增强声源PSD估计中的应用
采用维纳滤波器作为波束形成输出的后置滤波器,提高了声源增强的整体性能。由于需要估计每个声源的功率谱密度(PSD)来推导维纳滤波器,因此已有研究尝试使用最小二乘法实现线性逼近,从多个波束形成的输出信号中估计声源的PSD。在这项研究中,我们提出了一种替代方法来实现这个估计过程,即使用神经网络来实现使用非线性函数的近似。实验结果表明,该方法能够更准确地估计维纳滤波器,从而在降低期望声音信号失真的同时获得更高的声源增强性能。
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