2 research outputs found

    Learning Convex Regularizers for Optimal Bayesian Denoising

    Get PDF

    MMSE Denoising of Sparse and Non-Gaussian AR(1) Processes

    No full text
    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
    corecore