OCITNASPITNADec 23, 2018

Performance Bounds For Co-/Sparse Box Constrained Signal Recovery

arXiv:1812.104712 citationsh-index: 14
Originality Incremental advance
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For compressed sensing and discrete tomography researchers, this fills a theoretical gap by providing precise undersampling rates for TV minimization, which were previously lacking.

The paper provides precise undersampling rate estimates for total variation (TV) minimization in compressed sensing, addressing a gap in theory. Empirical results show these rates hold for tomographic measurements.

The recovery of structured signals from a few linear measurements is a central point in both compressed sensing (CS) and discrete tomography. In CS the signal structure is described by means of a low complexity model e.g. co-/sparsity. The CS theory shows that any signal/image can be undersampled at a rate dependent on its intrinsic complexity. Moreover, in such undersampling regimes, the signal can be recovered by sparsity promoting convex regularization like $\ell_1$- or total variation (TV-) minimization. Precise relations between many low complexity measures and the sufficient number of random measurements are known for many sparsity promoting norms. However, a precise estimate of the undersampling rate for the TV seminorm is still lacking. We address this issue by: a) providing dual certificates testing uniqueness of a given cosparse signal with bounded signal values, b) approximating the undersampling rates via the statistical dimension of the TV descent cone and c) showing empirically that the provided rates also hold for tomographic measurements.

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