A massively parallel multi-level approach to a domain decomposition method for the optical flow estimation with varying illumination
The SMAI Journal of computational mathematics, Tome 2 (2016), pp. 121-140.

We consider a variational method to solve the optical flow problem with varying illumination. We apply an adaptive control of the regularization parameter which allows us to preserve the edges and fine features of the computed flow. To reduce the complexity of the estimation for high resolution images and the time of computations, we implement a multi-level parallel approach based on the domain decomposition with the Schwarz overlapping method. The second level of parallelism uses the massively parallel solver MUMPS. We perform some numerical simulations to show the efficiency of our approach and to validate it on classical and real-world image sequences.

Publié le :
DOI : 10.5802/smai-jcm.11
Mots clés : optical flow, varying illumination, domain decomposition, adaptive control, finite element method, variational method, multi-level parallelism.
Gilliocq-Hirtz, Diane 1 ; Belhachmi, Zakaria 1

1 LMIA, 6 rue des Frères Lumière, 68093 Mulhouse, France
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     title = {A massively parallel multi-level approach to a domain decomposition method for the optical flow estimation with varying illumination},
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Gilliocq-Hirtz, Diane; Belhachmi, Zakaria. A massively parallel multi-level approach to a domain decomposition method for the optical flow estimation with varying illumination. The SMAI Journal of computational mathematics, Tome 2 (2016), pp. 121-140. doi : 10.5802/smai-jcm.11. http://archive.numdam.org/articles/10.5802/smai-jcm.11/

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