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JVCIR
2016

Sparse molecular image representation

8 years 19 days ago
Sparse molecular image representation
Sparsity-based models have proven to be very effective in most image processing applications. The notion of sparsity has recently been extended to structured sparsity models where not only the number of components but also their support is important. This paper goes one step further and proposes a new model where signals are composed of a small number of molecules, which are each linear combinations of a few elementary functions in a dictionary. Our model takes into account the energy on the signal components in addition to their support. We study our prior in detail and propose a novel algorithm for sparse coding that permits the appearance of signal dependent versions of the molecules. Our experiments prove the benefits of the new image model in various restoration tasks and confirm the effectiveness of priors that extend sparsity in flexible ways especially in case of inverse problems with low quality data.
Sofia Karygianni, Pascal Frossard
Added 07 Apr 2016
Updated 07 Apr 2016
Type Journal
Year 2016
Where JVCIR
Authors Sofia Karygianni, Pascal Frossard
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