Title :
Dictionary Design for Distributed Compressive Sensing
Author :
Wei Chen ; Wassell, Ian ; Rodrigues, Miguel R. D.
Author_Institution :
State Key Lab. of Rail Traffic Control & Safety, Beijing Jiaotong Univ., Beijing, China
Abstract :
Conventional dictionary learning frameworks attempt to find a set of atoms that promote both signal representation and signal sparsity fora class of signals. In distributed compressive sensing (DCS), in addition to intra-signal correlation, inter-signal correlation is also exploited in the joint signal reconstruction, which goes beyond the aim of the conventional dictionary learning framework. In this letter, we propose a new dictionary learning framework in order to improve signal reconstruction performance in DCS applications. By capitalizing on the sparse common component and innovations (SCCI) model , which captures both intra- and inter-signal correlation, the proposed method iteratively finds a dictionary design that promotes various goals: i) signal representation; ii) intra-signal correlation; and iii) inter-signal correlation. Simulation results showthat our dictionary design leads to an improved DCS reconstruction performance in comparison to other designs.
Keywords :
compressed sensing; iterative methods; signal reconstruction; signal representation; SCCI model; conventional dictionary learning frameworks; distributed compressive sensing; improved DCS reconstruction performance; inter-signal correlation; intra-signal correlation; iterative method; joint signal reconstruction; signal representation; signal sparsity fora class; sparse common component and innovations model; Correlation; Dictionaries; Educational institutions; Electrocardiography; Joints; Silicon; Technological innovation; Compressive sensing; dictionary learning; distributed compressive sensing;
Journal_Title :
Signal Processing Letters, IEEE
DOI :
10.1109/LSP.2014.2350024