2020
DOI: 10.1016/j.jfranklin.2020.06.006
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Analysis of the self projected matching pursuit algorithm

Abstract: The convergence and numerical analysis of a low memory implementation of the Orthogonal Matching Pursuit greedy strategy, which is termed Self Projected Matching Pursuit, is presented. This approach renders an iterative way of solving the least squares problem with much less storage requirement than direct linear algebra techniques. Hence, it is appropriate for solving large linear systems. The analysis highlights its suitability within the class of well posed problems.

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Cited by 5 publications
(4 citation statements)
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References 40 publications
(61 reference statements)
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“…The above described implementation of HBW-OMP2D is very effective in terms of speed, but demanding in terms of memory (the partial outputs corresponding to all the blocks in the partition need to be stored at every iteration). An alternative implementation, termed HBW Self Projected Matching Pursuit (HBW-SPMP) [ 29 , 45 ], would enable the application of the identical strategy to much larger images than the ones considered in this work .…”
Section: Approximations By Atomic Decompositionmentioning
confidence: 99%
“…The above described implementation of HBW-OMP2D is very effective in terms of speed, but demanding in terms of memory (the partial outputs corresponding to all the blocks in the partition need to be stored at every iteration). An alternative implementation, termed HBW Self Projected Matching Pursuit (HBW-SPMP) [ 29 , 45 ], would enable the application of the identical strategy to much larger images than the ones considered in this work .…”
Section: Approximations By Atomic Decompositionmentioning
confidence: 99%
“…a pedagogical proof can be found on [18]). However, the method is not stepwise optimal because it does not yield an orthogonal projection at each step.…”
Section: From Mp To Ompmentioning
confidence: 99%
“…The above described implementation of HBW-OMP2D is very effective in terms of speed, but demanding in terms of memory (the partial outputs corresponding to all the blocks in the partition need to be stored at every iteration). An alternative implementation, termed HBW Self Projected Matching Pursuit (HBW-SPMP) [32,50], would enable the application of the identical strategy to much larger images than the ones considered in this work.…”
Section: Approximations By Atomic Decompositionmentioning
confidence: 99%