MMSE denoising of sparse and non-Gaussian AR(1) processes

Pouria Tohidi, E. Bostan, P. Pad, M. Unser
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引用次数: 3

Abstract

We propose two minimum-mean-square-error (MMSE) estimation methods for denoising non-Gaussian first-order autoregressive (AR(1)) processes. The first one is based on the message passing framework and gives the exact theoretic MMSE estimator. The second is an iterative algorithm that combines standard wavelet-based thresholding with an optimized non-linearity and cycle-spinning. This method is more computationally efficient than the former and appears to provide the same optimal denoising results in practice. We illustrate the superior performance of both methods through numerical simulations by comparing them with other well-known denoising schemes.
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稀疏和非高斯AR(1)过程的MMSE去噪
我们提出了两种最小均方误差(MMSE)估计方法来去噪非高斯一阶自回归(AR(1))过程。第一种方法基于消息传递框架,给出了精确的理论MMSE估计。第二种是一种迭代算法,它将基于小波的标准阈值与优化的非线性和循环旋转相结合。该方法的计算效率比前一种方法高,并且在实践中似乎可以提供相同的最佳去噪结果。通过数值模拟,将两种方法与其他已知的去噪方法进行了比较,说明了两种方法的优越性。
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