Total Variation Minimization and Graph Cuts for Moving Objects Segmentation
Ranchin, Florent; Chambolle, Antonin; Dibos, Françoise (2010), Total Variation Minimization and Graph Cuts for Moving Objects Segmentation, in Paragios, Nikos; Murli, Almerico; Sgallari, Fiorella, Scale Space and Variational Methods in Computer Vision, Springer : Berlin, p. 743-753
Type
Communication / ConférenceExternal document link
http://hal.archives-ouvertes.fr/hal-00092007/en/Date
2010Conference title
Proceedings of the First International Conference SSVM 2007Conference date
2007-05Conference city
IschiaConference country
ItalieBook title
Scale Space and Variational Methods in Computer VisionBook author
Paragios, Nikos; Murli, Almerico; Sgallari, FiorellaPublisher
Springer
Series title
Lecture Notes in Computer ScienceSeries number
vol 4485/2010Published in
Berlin
ISBN
978-3-540-72822-1
Number of pages
931Pages
743-753
Publication identifier
Metadata
Show full item recordAbstract (EN)
In this paper, we are interested in the application to video segmentation of the discrete shape optimization problem involving the shape weighted perimeter and an additional term depending on a parameter. Based on recent works and in particular the one of Darbon and Sigelle, we justify the equivalence of the shape optimization problem and a weighted total variation regularization. For solving this problem, we adapt the projection algorithm proposed recently for solving the basic TV regularization problem. Another solution to the shape optimization investigated here is the graph cut technique. Both methods have the advantage to lead to a global minimum. Since we can distinguish moving objects from static elements of a scene by analyzing norm of the optical flow vectors, we choose the optical flow norm as initial data. In order to have the contour as close as possible to an edge in the image, we use a classical edge detector function as the weight of the weighted total variation. This model has been used in one of our former works. We also apply the same methods to a video segmentation model used by Jehan-Besson, Barlaud and Aubert. In this case, only standard perimeter is incorporated in the shape functional. We also propose another way for finding moving objects by using an a contrario detection of objects on the image obtained by solving the Rudin-Osher-Fatemi Total Variation regularization problem.We can notice the segmentation can be associated to a level set in the former methods.Subjects / Keywords
total variation; motion detection; active contour modelsRelated items
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Dibos, Françoise; Koepfler, Georges; Ranchin, Florent (2001) Document de travail / Working paper
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Dibos, Françoise; Ranchin, Florent (2003) Document de travail / Working paper
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Chambolle, Antonin (2004) Article accepté pour publication ou publié
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Dibos, Françoise; Ranchin, Florent (2005) Communication / Conférence
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Dibos, Françoise; Koepfler, Georges; Monasse, Pascal (2003) Chapitre d'ouvrage