P. Weiss, A. Fournier, L. Blanc-féraud, and G. Aubert, On the Illumination Invariance of the Level Lines under Directed Light: Application to Change Detection, SoumisàSoumis`Soumisà IEEE Transactions on Pattern Analysis and Machine Intelligence en juillet, 2008.
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P. Weiss, L. Blanc-féraud, and G. Aubert, Efficient Schemes for Total Variation Minimization Under Constraints in Image Processing, SIAM Journal on Scientific Computing, vol.31, issue.3, 2007.
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G. Weiss and . Aubert, Blanc-Féraud ont présenté un travail intitulé Algorithms for fast l 1 norm minimization under different constraints in image processingàprocessing`processingà la conférence CANUM, Autres conférences sans actes 1, 2007.

P. Weiss and G. Aubert, Blanc-Féraud ont présenté un poster intitulé Fast algorithms for the minimization of constrained total variationàvariation`variationà la Conférence CODE, 2007.

L. Blanc-féraud and P. , Weiss et Gilles Aubert ont présenté un travail intitulé Some applications of l ? -norm in image processing au Workshop An Interdisciplinary approach to textures and natural image processing, pp.8-9, 2007.

P. Weiss and L. , Blanc-Féraud et Gilles Aubert ont présenté un travail intitulé Use of the l ? -norm for some tasks in image processingàprocessing`processingà SIAM Conference on Imaging Science, pp.15-17, 2006.

P. Weiss and L. , Blanc-Féraud et Gilles Aubert ont présenté un travail intitulé Some applications of l ? constraints in image processingàprocessing`processingà la Conférence MIA, 2006.

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