双耳风噪声跟踪与转向预设

Stefan Thaleiser, G. Enzner
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引用次数: 0

摘要

许多语音增强方法的最佳性能取决于准确的噪声功率谱密度(PSD)估计。虽然对于平稳噪声,如白高斯噪声或汽车噪声,有几种方法已经证明自己表现得足够好,但像风噪声这样的非平稳噪声类型更具挑战性。在双耳环境和多声道系统中,语音阻塞方法是非平稳噪声估计的重要发展方向。它迫切需要声道从声源到听者传递函数的信息。在本文中,我们提出了这种用于风噪声PSD估计的噪声子空间方法,该方法在语音存在时依赖于数据驱动的盲信道识别,在语音暂停时依赖于先验声学信道信息(即转向预设),其中两者的平滑过渡由先验信噪比控制。该算法是基于当前有噪声帧输入的全在线运行算法。它改进了直接递归子空间分析和在风噪声场景下建立的单通道估计,同时也能很好地处理语音存在或呀呀学噪声。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Binaural Wind-Noise Tracking with Steering Preset
Optimal performance of many speech enhancement methods is bound to an accurate noise power-spectral density (PSD) estimation. While for stationary noises, such as the white Gaussian or car noise, several approaches have proven themselves to perform sufficiently good, non-stationary noise types like the wind noise are more challenging. In the binaural setting and in multichannel systems, the speech-blocking method is essential to recent developments for non-stationary noise estimation. It critically requires information of the acoustic channel transfer function from source to listener. In this paper, we propose such noise-subspace approach for wind-noise PSD estimation, which relies on data-driven blind channel identification in speech presence and on a-priori acoustic channel information (i.e., the steering preset) in speech pause, where the smooth transition of both is controlled by a-priori SNR. The algorithm is designed for entire online operation based on the current noisy frame input. It improves on straightforward recursive subspace analysis and on established single-channel estimation in the wind-noise scenario, while dealing well with speech presence or babble noise too.
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