Journal
MULTIMEDIA TOOLS AND APPLICATIONS
Volume 76, Issue 20, Pages 20587-20608Publisher
SPRINGER
DOI: 10.1007/s11042-016-3968-z
Keywords
Distributed compressed sensing; Forward-backward pursuit; Sparsity; Sparse signal reconstruction
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Funding
- Natural Science Foundation of China [61302138, 61601417]
- Youth Foundation of Naval University of Engineering [HGDQNJJ13005]
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In this paper, a forward-backward pursuit method for distributed compressed sensing (DCSFBP) is proposed. In contrast to existing distributed compressed sensing (DCS), it is an adaptive iterative approach where each iteration consists of consecutive forward selection and backward removal stages. And it not needs sparsity as prior knowledge and multiple indices are identified at each iteration for recovery. These make it a potential candidate for many practical applications, when the sparsity of signals is not available. Numerical experiments, including recovery of random sparse signals with different nonzero coefficient distributions in many scenarios, in addition to the recovery of sparse image and the real-life electrocardiography (ECG) data, are conducted to demonstrate the validity and high performance of the proposed algorithm, as compared to other existing DCS algorithms.
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