Iterative Multi-Resolution Bayesian CS for Microwave Imaging

Abstract : A new Compressive Sensing (CS) imaging method is proposed to exploit, during the inversion process and unlike stateof- the-art CS-based approaches, additional information besides that on the target sparsity. More specifically, such an innovative multi-resolution Bayesian CS scheme profitably combines (i) the a-priori knowledge on the class of targets under investigation and (ii) the progressively-acquired information on the scatterer location and size to improve the accuracy, the robustness, and the efficiency of both standard (i.e., uniform-resolution) CS techniques and multi-resolution/synthetic-zoom approaches. Towards this end, a new multi-resolution-based information-driven relevance vector machine (RVM) is derived and implemented. Selected results from an extensive numerical and experimental validation are shown to give the interested readers some indications on the effectiveness and the reliability of the proposed method also in comparison with state-of-the-art deterministic and Bayesian inversion techniques.
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Contributor : Andrea Massa <>
Submitted on : Tuesday, April 24, 2018 - 10:46:11 AM
Last modification on : Monday, November 26, 2018 - 1:54:09 PM



Nicola Anselmi, Lorenzo Poli, Giacomo Oliveri, Andrea Massa. Iterative Multi-Resolution Bayesian CS for Microwave Imaging. IEEE Transactions on Antennas and Propagation, Institute of Electrical and Electronics Engineers, 2018, 66 (7), pp.3665 - 3677. 〈10.1109/TAP.2018.2826574〉. 〈hal-01774924〉



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