DocumentCode :
77525
Title :
Stable and Robust Sampling Strategies for Compressive Imaging
Author :
Krahmer, Felix ; Ward, Rabab
Author_Institution :
Inst. for Numerical & Appl. Math., Univ. of Gottingen, Gottingen, Germany
Volume :
23
Issue :
2
fYear :
2014
fDate :
Feb. 2014
Firstpage :
612
Lastpage :
622
Abstract :
In many signal processing applications, one wishes to acquire images that are sparse in transform domains such as spatial finite differences or wavelets using frequency domain samples. For such applications, overwhelming empirical evidence suggests that superior image reconstruction can be obtained through variable density sampling strategies that concentrate on lower frequencies. The wavelet and Fourier transform domains are not incoherent because low-order wavelets and low-order frequencies are correlated, so compressive sensing theory does not immediately imply sampling strategies and reconstruction guarantees. In this paper, we turn to a more refined notion of coherence-the so-called local coherence-measuring for each sensing vector separately how correlated it is to the sparsity basis. For Fourier measurements and Haar wavelet sparsity, the local coherence can be controlled and bounded explicitly, so for matrices comprised of frequencies sampled from a suitable inverse square power-law density, we can prove the restricted isometry property with near-optimal embedding dimensions. Consequently, the variable-density sampling strategy we provide allows for image reconstructions that are stable to sparsity defects and robust to measurement noise. Our results cover both reconstruction by ℓ1-minimization and total variation minimization. The local coherence framework developed in this paper should be of independent interest, as it implies that for optimal sparse recovery results, it suffices to have bounded average coherence from sensing basis to sparsity basis-as opposed to bounded maximal coherence-as long as the sampling strategy is adapted accordingly.
Keywords :
Fourier transforms; Haar transforms; compressed sensing; image reconstruction; image sampling; matrix algebra; minimisation; wavelet transforms; ℓ1-minimization; Fourier measurements; Fourier transform domains; Haar wavelet sparsity; bounded maximal coherence; compressive imaging; compressive sensing theory; frequency domain samples; image reconstructions; inverse square power-law density; local coherence framework; low-order frequencies; low-order wavelets; measurement noise; near-optimal embedding dimensions; optimal sparse recovery; restricted isometry property; robust sampling strategy; sensing vector; signal processing; sparsity defects; total variation minimization; variable density sampling strategy; wavelet transform domains; Coherence; Compressed sensing; Extraterrestrial measurements; Frequency measurement; Image reconstruction; Noise measurement; Vectors; Compressive imaging; frequency; incoherence; local coherence; variable density sampling;
fLanguage :
English
Journal_Title :
Image Processing, IEEE Transactions on
Publisher :
ieee
ISSN :
1057-7149
Type :
jour
DOI :
10.1109/TIP.2013.2288004
Filename :
6651836
Link To Document :
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