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Matching pursuit for 1D signals 1.0
File ID: 83572






Matching pursuit for 1D signals 1.0
Download Matching pursuit for 1D signals 1.0http://www.mathworks.comReport Error Link
License: Shareware
File Size: 10.0 KB
Downloads: 96
Submit Rating:
Matching pursuit for 1D signals 1.0 Description
Description: Performs matching pursuit (MP) on a one-dimensional (temporal) signal y with a custom basis B.

Matching pursuit (Mallat and Zhang 1993) is a greedy algorithm to obtain a sparse representation of a signal y in terms of a weighted sum (w) of dictionary elements D (y ~ Dw). Sparse means that most elements are equal to 0 (nnz(w)

License: Shareware

Related: signature, arguments, Function, osqrtlengthy, Correlation, iteration, Length, forced

O/S:BSD, Linux, Solaris, Mac OS X

File Size: 10.0 KB

Downloads: 96



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