Sparse image representation by discrete cosine/spline based dictionaries

09/07/2009
by   James Bowley, et al.
0

Mixed dictionaries generated by cosine and B-spline functions are considered. It is shown that, by highly nonlinear approaches such as Orthogonal Matching Pursuit, the discrete version of the proposed dictionaries yields a significant gain in the sparsity of an image representation.

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