Journal article

Average Performance Analysis for Thresholding

In this article is shown that with high probability the thresholding algorithm can recover signals that are sparse in a redundant dictionary as long as the {\it 2-Babel function} is growing slowly. This implies that it can succeed for sparsity levels up to the order of the ambient dimension. The theoretical bounds are illustrated with numerical simulations. As an application of the theory {\it sensing dictionaries} for optimal average performance are characterised and their performance is tested numerically.

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