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M. Matical-morphology and . Paristech, Since 2015, he has been an Ass. Prof. at Southern University of Toulon-Var, France. His research interests include image analysis, visual descriptor, action recognition, texture analysis and shape representation, 2012 and then with the Robotics and Computer Vision Laboratory, National School of Advanced Technologies, 2012.

. Ngoc-son, Vu is currently an Ass

F. Pontoise, E. Member-of-the, and . Cnrs, He worked as a researcher at INSA de Lyon, France (in 2013) and at the Vesalis company He was also a postdoctoral researcher at Grenoble Institute of Technology, ) from which he received his Ph.D. degree in image processing and computer vision, 2010.

V. Paris and . University, He has been a high school teacher in Paraguay (from 19941996) and a R&D Engineer (CIFRE grant) at Arospatiale-Missiles (from 19972000) Since 2001, he has been an Associate Professor at ENSTA-ParisTech in the Robotics & Computer Vision group from the U2IS laboratory. His research domains are image models and video processing algorithms, with a particular interest in motion modeling and analysis for mobile embedded systems, 2012.