Title
Distributed Compressive Sensing Reconstruction via Common Support Discovery
Abstract
This paper presents a novel signal reconstruction method based on the distributed compressive sensing (DCS) framework for application to wireless sensor networks (WSN). The proposed method exploits both the intra-sensor correlation and the inter-sensor correlation to reduce the number of samples required for recovering the original signals. An innovative feature of our method is using the Fr' echet mean of the signals to discover the common support of their sparse representations in some basis. Then a new greedy algorithm, called precognition matching pursuit (PMP), is proposed to further reduce the number of required samples with the knowledge of the common support. The superior reconstruction quality of the proposed method is demonstrated by both computer-generated signals and real data gathered by a WSN located in the Intel Berkeley Research lab.
Year
DOI
Venue
2011
10.1109/icc.2011.5962798
ICC
Keywords
Field
DocType
wsn,pmp,precognition matching pursuit,intrasensor correlation,frechet mean,cognitive radio,intersensor correlation,greedy algorithm,common support discovery,greedy algorithms,signal reconstruction,distributed compressive sensing reconstruction,wireless sensor networks,computer-generated signals,signal reconstruction method,compressed sensing,matching pursuit,wireless sensor network,data acquisition,data gathering,sparse representation,spatial correlation
Matching pursuit,Data mining,Computer science,Exploit,Greedy algorithm,Wireless sensor network,Signal reconstruction,Compressed sensing,Cognitive radio,Matching pursuit algorithms
Conference
ISSN
ISBN
Citations 
1550-3607 E-ISBN : 978-1-61284-231-8
978-1-61284-231-8
13
PageRank 
References 
Authors
1.07
11
3
Name
Order
Citations
PageRank
Wei Chen1131.07
Miguel R. D. Rodrigues21500111.23
Ian J. Wassell328835.10