| Literature DB >> 26457708 |
Huichen Yan1, Jia Xu2, Teng Long3, Xudong Zhang4.
Abstract
Matched field processing (MFP) is an effective method for underwater target imaging and localizing, but its performance is not guaranteed due to the nonuniqueness and instability problems caused by the underdetermined essence of MFP. By exploiting the sparsity of the targets in an imaging area, this paper proposes a compressive sensing MFP (CS-MFP) model from wave propagation theory by using randomly deployed sensors. In addition, the model's recovery performance is investigated by exploring the lower bounds of the coherence parameter of the CS dictionary. Furthermore, this paper analyzes the robustness of CS-MFP with respect to the displacement of the sensors. Subsequently, a coherence-excluding coherence optimized orthogonal matching pursuit (CCOOMP) algorithm is proposed to overcome the high coherent dictionary problem in special cases. Finally, some numerical experiments are provided to demonstrate the effectiveness of the proposed CS-MFP method.Entities:
Keywords: coherence parameter; coherence-excluding coherence optimized orthogonal matching pursuit (CCOOMP); compressed sensing (CS); matched field processing (MFP); wave propagation
Year: 2015 PMID: 26457708 PMCID: PMC4634487 DOI: 10.3390/s151025577
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576