DocumentCode
77566
Title
Convolutional Compressed Sensing Using Deterministic Sequences
Author
Li, Kaicheng ; Lu Gan ; Cong Ling
Author_Institution
Dept. of Electr. & Electron. Eng., Imperial Coll. London, London, UK
Volume
61
Issue
3
fYear
2013
fDate
Feb.1, 2013
Firstpage
740
Lastpage
752
Abstract
In this paper, a new class of orthogonal circulant matrices built from deterministic sequences is proposed for convolution-based compressed sensing (CS). In contrast to random convolution, the coefficients of the underlying filter are given by the discrete Fourier transform of a deterministic sequence with good autocorrelation. Both uniform recovery and non-uniform recovery of sparse signals are investigated, based on the coherence parameter of the proposed sensing matrices. Many examples of the sequences are investigated, particularly the Frank-Zadoff-Chu (FZC) sequence, the m-sequence and the Golay sequence. A salient feature of the proposed sensing matrices is that they can not only handle sparse signals in the time domain, but also those in the frequency and/or or discrete-cosine transform (DCT) domain.
Keywords
compressed sensing; discrete Fourier transforms; discrete cosine transforms; filtering theory; DCT domain; FZC sequence; Frank-Zadoff-Chu sequence; Golay sequence; autocorrelation; convolutional compressed sensing; deterministic sequences; discrete-cosine transform; m-sequence; orthogonal circulant matrices; salient feature; sensing matrices; sparse signals; sparse signals recovery; time domain; Compressed sensing; Convolution; Optimization; Radar imaging; Sparse matrices; Transforms; Vectors; Compressed sensing; Frank-Zadoff-Chu sequence; Golay sequence; nearly perfect sequences; random convolution;
fLanguage
English
Journal_Title
Signal Processing, IEEE Transactions on
Publisher
ieee
ISSN
1053-587X
Type
jour
DOI
10.1109/TSP.2012.2229994
Filename
6362239
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