Title :
Noise mitigated compressive sensing for radar applications
Author :
Yun Lu ; Statz, Christoph ; Ciarletti, V. ; Plettemeier, Dirk
Author_Institution :
RF Eng., Tech. Univ. Dresden, Dresden, Germany
Abstract :
During decades microwave imaging technology has achieved remarkable progress, and at the same time encountered increasing complexity in system implementation. Recently, the sparse systems, where the compressed sensing (CS) is applied, introduce the sparse signal processing theory to radar imaging to obtain a new system methodology of microwave imaging and facilitate the burden of computing large-scale data. Basically, CS recovery is a kind of sparse regularized optimization, where the regularization parameter λ plays an important role for a stable solution. Although there are a lots of methods to estimate λ, e.g. the L-curve method, the cross-validation method, etc., however, they are still complex and even only work for particular conditions. In this paper, we will introduce a novel approach, named noise mitigated method (NMM), to get a stable result even without a precise estimation of λ. For radar applications we will take the stepped frequency radar (SFR) as an example to present the feasibility of NMM.
Keywords :
compressed sensing; image denoising; microwave imaging; optimisation; radar imaging; CS recovery; NMM; compressed sensing; microwave imaging technology; noise mitigated method; radar imaging; regularization parameter estimation; sparse regularized optimization; sparse signal processing theory; sparse system implementation; Bayes methods; Compressed sensing; Estimation; Matching pursuit algorithms; Noise; Radar; Sparse matrices; GPR; Noise mitigated compressive sensing;
Conference_Titel :
Radar Symposium (IRS), 2014 15th International
Conference_Location :
Gdansk
Print_ISBN :
978-617-607-552-3
DOI :
10.1109/IRS.2014.6869276