Multichannel speech dereverberation and separation with optimized combination of linear and non-linear filtering

M. Togami, Y. Kawaguchi, Ryu Takeda, Y. Obuchi, N. Nukaga
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引用次数: 10

Abstract

In this paper, we propose a multichannel speech dereverberation and separation technique which is effective even when there are multiple speakers and each speaker's transfer function is time-varying due to fluctuation of the corresponding speaker's head. For robustness against fluctuation, the proposed method optimizes linear filtering with non-linear filtering simultaneously from probabilistic perspective based on a probabilistic reverberant transfer-function model, PRTFM. PRTFM is an extension of the conventional time-invariant transfer-function model under uncertain conditions, and PRTFM can be also regarded as an extension of recently proposed blind local Gaussian modeling. The linear filtering and the non-linear filtering are optimized in MMSE (Minimum Mean Square Error) sense during parameter optimization. The proposed method is evaluated in a reverberant meeting room, and the proposed method is shown to be effective.
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多通道语音去噪和分离与线性和非线性滤波的优化组合
在本文中,我们提出了一种多通道语音去噪分离技术,即使在有多个说话者并且每个说话者的传递函数由于相应的说话者的头部波动而时变的情况下,该技术仍然有效。为了增强对波动的鲁棒性,该方法基于概率混响传递函数模型PRTFM,从概率角度对线性滤波和非线性滤波同时进行优化。PRTFM是在不确定条件下对传统时不变传递函数模型的扩展,也可以看作是对最近提出的盲局部高斯模型的扩展。在参数优化过程中对线性滤波和非线性滤波进行了MMSE(最小均方误差)意义上的优化。在一个混响会议室中对该方法进行了评价,结果表明该方法是有效的。
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