Recursive Spatial Covariance Estimation with Sparse Priors for Sound Field Interpolation

David Sundström, J. Lindström, A. Jakobsson
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引用次数: 1

Abstract

Recent advances have shown that sound fields can be accurately interpolated between microphone measurements when the spatial covariance matrix is known. This matrix may be estimated in various ways; one promising approach is to use a plane wave formulation with sparse priors, although this may require the use of a many microphones to suppress the noise. To overcome this, we introduce a time domain formulation exploiting multiple time samples, posing the problem as an identification problem of a recursively estimated sample covariance matrix. A computationally efficient method is proposed to solve the resulting identification problem. Using both numerical experiments and anechoic data, the proposed method is shown to yield preferable performance as compared to current state of the art methods, notably for high frequencies sources and/or in cases when using few microphones.
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基于稀疏先验的递归空间协方差估计用于声场插值
最近的进展表明,当空间协方差矩阵已知时,声场可以在麦克风测量之间精确地插值。这个矩阵可以用各种方法来估计;一种有希望的方法是使用稀疏先验的平面波公式,尽管这可能需要使用许多麦克风来抑制噪声。为了克服这个问题,我们引入了一个利用多个时间样本的时域公式,将问题作为递归估计样本协方差矩阵的识别问题。提出了一种计算效率高的方法来解决由此产生的识别问题。使用数值实验和消声数据,与目前的技术方法相比,所提出的方法显示出更好的性能,特别是在高频源和/或使用少量麦克风的情况下。
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