Bayesian Cram\'{e}r-Rao Bound for Noisy Non-Blind and Blind Compressed Sensing
classification
💻 cs.IT
math.IT
keywords
boundbayesianblindcompressednon-blindsensingsparseaddress
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In this paper, we address the theoretical limitations in reconstructing sparse signals (in a known complete basis) using compressed sensing framework. We also divide the CS to non-blind and blind cases. Then, we compute the Bayesian Cramer-Rao bound for estimating the sparse coefficients while the measurement matrix elements are independent zero mean random variables. Simulation results show a large gap between the lower bound and the performance of the practical algorithms when the number of measurements are low.
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