Learning incoherent dictionaries for sparse approximation using iterative projections and rotations

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Abstract

This article deals with learning dictionaries for sparse approximation whose atoms are both adapted to a training set of signals and mutually incoherent. To meet this objective, we employ a dictionary learning scheme consisting of sparse approximation followed by dictionary update and we add to the latter a decorrelation step in order to reach a target mutual coherence level. This step is accomplished by an iterative projection method complemented by a rotation of the dictionary. Experiments on musical audio data and a comparison with the method of optimal coherence-constrained directions (mocod) and the incoherent k-svd (ink-svd) illustrate that the proposed algorithm can learn dictionaries that exhibit a low mutual coherence while providing a sparse approximation with better signal-to-noise ratio (snr) than the benchmark techniques. © 1991-2012 IEEE.

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Barchiesi, D., & Plumbley, M. D. (2013). Learning incoherent dictionaries for sparse approximation using iterative projections and rotations. IEEE Transactions on Signal Processing, 61(8), 2055–2065. https://doi.org/10.1109/TSP.2013.2245663

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