DocumentCode :
30672
Title :
Compressive Sensing of Sparse Tensors
Author :
Friedland, Shmuel ; Qun Li ; Schonfeld, Dan
Author_Institution :
Dept. of Math., Univ. of Illinois at Chicago, Chicago, IL, USA
Volume :
23
Issue :
10
fYear :
2014
fDate :
Oct. 2014
Firstpage :
4438
Lastpage :
4447
Abstract :
Compressive sensing (CS) has triggered an enormous research activity since its first appearance. CS exploits the signal´s sparsity or compressibility in a particular domain and integrates data compression and acquisition, thus allowing exact reconstruction through relatively few nonadaptive linear measurements. While conventional CS theory relies on data representation in the form of vectors, many data types in various applications, such as color imaging, video sequences, and multisensor networks, are intrinsically represented by higher order tensors. Application of CS to higher order data representation is typically performed by conversion of the data to very long vectors that must be measured using very large sampling matrices, thus imposing a huge computational and memory burden. In this paper, we propose generalized tensor compressive sensing (GTCS)-a unified framework for CS of higher order tensors, which preserves the intrinsic structure of tensor data with reduced computational complexity at reconstruction. GTCS offers an efficient means for representation of multidimensional data by providing simultaneous acquisition and compression from all tensor modes. In addition, we propound two reconstruction procedures, a serial method and a parallelizable method. We then compare the performance of the proposed method with Kronecker compressive sensing (KCS) and multiway compressive sensing (MWCS). We demonstrate experimentally that GTCS outperforms KCS and MWCS in terms of both reconstruction accuracy (within a range of compression ratios) and processing speed. The major disadvantage of our methods (and of MWCS as well) is that the compression ratios may be worse than that offered by KCS.
Keywords :
compressed sensing; computational complexity; data compression; image coding; image reconstruction; image representation; matrix algebra; tensors; GTCS; KCS; Kronecker compressive sensing; MWCS; color imaging; compression ratio; computational complexity reduction; conventional CS theory; data acquisition; data compression; data conversion; data representation; generalized tensor compressive sensing; higher-order data representation; higher-order tensors; multidimensional data representation; multisensor networks; multiway compressive sensing; nonadaptive linear measurements; parallelizable method; reconstruction accuracy; reconstruction procedure; sampling matrices; serial method; signal compressibility; signal sparsity; sparse tensors; video sequences; Approximation methods; Compressed sensing; Image coding; Image reconstruction; Minimization; Tensile stress; Vectors; Compressive sensing; compression ratio; convex optimization; generalized tensor compressive sensing; higher-order tensor; multilinear algebra;
fLanguage :
English
Journal_Title :
Image Processing, IEEE Transactions on
Publisher :
ieee
ISSN :
1057-7149
Type :
jour
DOI :
10.1109/TIP.2014.2348796
Filename :
6879313
Link To Document :
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