DocumentCode
84513
Title
Forest Sparsity for Multi-Channel Compressive Sensing
Author
Chen Chen ; Yeqing Li ; Junzhou Huang
Author_Institution
Dept. of Comput. Sci. & Eng., Univ. of Texas, Arlington, TX, USA
Volume
62
Issue
11
fYear
2014
fDate
1-Jun-14
Firstpage
2803
Lastpage
2813
Abstract
In this paper, we investigate a new compressive sensing model for multi-channel sparse data where each channel can be represented as a hierarchical tree and different channels are highly correlated. Therefore, the full data could follow the forest structure and we call this property forest sparsity. It exploits both intra- and inter- channel correlations and enriches the family of existing model-based compressive sensing theories. The proposed theory indicates that only O(Tk+log(N/k)) measurements are required for multi-channel data with forest sparsity, where T is the number of channels, N and k are the length and sparsity number of each channel, respectively. This result is much better than O(Tk+Tlog(N/k)) of tree sparsity, O(Tk+klog(N/k)) of joint sparsity, and far better than O(Tk+Tklog(N/k)) of standard sparsity. In addition, we extend the forest sparsity theory to the multiple measurement vectors problem, where the measurement matrix is a block-diagonal matrix. The result shows that the required measurement bound can be the same as that for dense random measurement matrix, when the data shares equal energy in each channel. A new algorithm is developed and applied on four example applications to validate the benefit of the proposed model. Extensive experiments demonstrate the effectiveness and efficiency of the proposed theory and algorithm.
Keywords
compressed sensing; forestry; matrix algebra; block-diagonal matrix; dense random measurement matrix; forest sparsity; hierarchical tree; interchannel correlations; intrachannel correlations; model-based compressive sensing theories; multichannel compressive sensing; multichannel sparse data; multiple measurement vectors problem; Compressed sensing; Data models; Joints; Signal processing algorithms; Standards; Vectors; Vegetation; Compressed sensing; forest sparsity; joint sparsity; model-based compressive sensing; structured sparsity; tree sparsity;
fLanguage
English
Journal_Title
Signal Processing, IEEE Transactions on
Publisher
ieee
ISSN
1053-587X
Type
jour
DOI
10.1109/TSP.2014.2318138
Filename
6800127
Link To Document