On the stable recovery of the sparsest overcomplete representations in presence of noise
Massoud Babaie-Zadeh, Christian Jutten

TL;DR
This paper proves that all unique sparse decompositions in overcomplete representations are stable against noise, extending previous stability bounds to the entire range of unique solutions, which is crucial for new sparse recovery algorithms.
Contribution
It extends the stability guarantee from a restrictive bound to the full range of unique sparse decompositions, enabling reliable recovery with new algorithms.
Findings
All unique sparse decompositions are stably recoverable.
Sparser decompositions exhibit greater stability.
Stability extends to the entire range of unique solutions.
Abstract
Let x be a signal to be sparsely decomposed over a redundant dictionary A, i.e., a sparse coefficient vector s has to be found such that x=As. It is known that this problem is inherently unstable against noise, and to overcome this instability, the authors of [Stable Recovery; Donoho et.al., 2006] have proposed to use an "approximate" decomposition, that is, a decomposition satisfying ||x - A s|| < \delta, rather than satisfying the exact equality x = As. Then, they have shown that if there is a decomposition with ||s||_0 < (1+M^{-1})/2, where M denotes the coherence of the dictionary, this decomposition would be stable against noise. On the other hand, it is known that a sparse decomposition with ||s||_0 < spark(A)/2 is unique. In other words, although a decomposition with ||s||_0 < spark(A)/2 is unique, its stability against noise has been proved only for highly more restrictive…
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