Consistency of l1 recovery from noisy deterministic measurements
classification
🧮 math.OC
keywords
consistencydeterministicmeasurementsminimizationnoisyrecoveryresultsparse
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In this paper a new result of recovery of sparse vectors from deterministic and noisy measurements by l1 minimization is given. The sparse vector is randomly chosen and follows a generic p-sparse model introduced by Candes and al. The main theorem ensures consistency of l1 minimization with high probability. This first result is secondly extended to compressible vectors.
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