TY - JOUR
T1 - Sparse signal recovery via exponential metric approximation
AU - Pan, Jian
AU - Tang, Jun
AU - Zhu, Wei
N1 - Publisher Copyright:
© 2017 Tsinghua University Press.
PY - 2017/2
Y1 - 2017/2
N2 - Sparse signal recovery problems are common in parameter estimation, image processing, pattern recognition, and so on. The problem of recovering a sparse signal representation from a signal dictionary might be classified as a linear constraint τ0-quasinorm minimization problem, which is thought to be a Non-deterministic Polynomial-time (NP)-hard problem. Although several approximation methods have been developed to solve this problem via convex relaxation, researchers find the nonconvex methods to be more efficient in solving sparse recovery problems than convex methods. In this paper a nonconvex Exponential Metric Approximation (EMA) method is proposed to solve the sparse signal recovery problem. Our proposed EMA method aims to minimize a nonconvex negative exponential metric function to attain the sparse approximation and, with proper transformation, solve the problem via Difference Convex (DC) programming. Numerical simulations show that exponential metric function approximation yields better sparse recovery performance than other methods, and our proposed EMA-DC method is an efficient way to recover the sparse signals that are buried in noise.
AB - Sparse signal recovery problems are common in parameter estimation, image processing, pattern recognition, and so on. The problem of recovering a sparse signal representation from a signal dictionary might be classified as a linear constraint τ0-quasinorm minimization problem, which is thought to be a Non-deterministic Polynomial-time (NP)-hard problem. Although several approximation methods have been developed to solve this problem via convex relaxation, researchers find the nonconvex methods to be more efficient in solving sparse recovery problems than convex methods. In this paper a nonconvex Exponential Metric Approximation (EMA) method is proposed to solve the sparse signal recovery problem. Our proposed EMA method aims to minimize a nonconvex negative exponential metric function to attain the sparse approximation and, with proper transformation, solve the problem via Difference Convex (DC) programming. Numerical simulations show that exponential metric function approximation yields better sparse recovery performance than other methods, and our proposed EMA-DC method is an efficient way to recover the sparse signals that are buried in noise.
KW - DC optimization
KW - exponential metric approximation
KW - signal-to-noise-ratio
KW - sparse recovery
KW - sparsity tolerance
UR - https://www.scopus.com/pages/publications/85011024380
U2 - 10.1109/TST.2017.7830900
DO - 10.1109/TST.2017.7830900
M3 - Article
AN - SCOPUS:85011024380
SN - 1007-0214
VL - 22
SP - 104
EP - 111
JO - Tsinghua Science and Technology
JF - Tsinghua Science and Technology
IS - 1
M1 - 7830900
ER -