Sparse signal recovery with multiple prior information: algorithm and measurement bounds This publication appears in: Signal Processing Authors: H. Van Luong, N. Deligiannis, J. Seiler, S. Forchhammer and A. Kaup Volume: 152 Pages: 417428 Publication Date: Nov. 2018
Abstract: We address the problem of reconstructing a sparse signal from compressive measurements with the aid of multiple known correlated signals. We propose a reconstruction algorithm with multiple side information signals (RAMSI), which solves an n-l
1 minimization problem by weighting adaptively the multiple side information signals at every iteration. In addition, we establish theoretical bounds on the number of measurements required to guarantee successful reconstruction of the sparse signal via weighted n-l
1 minimization. The analysis of the derived bounds reveals that weighted n-l
1 minimization can achieve sharper bounds and significant performance improvements compared to classical compressed sensing (CS). We evaluate experimentally the proposed RAMSI algorithm and the established bounds using numerical sparse signals. The results show that the proposed algorithm outperforms state-of-the-art algorithmsincluding classical CS, l
1-l
1 minimization, Modified-CS, regularized Modified-CS, and weighted l
1 minimizationin terms of both the theoretical bounds and the practical performance.
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