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, He is interested in machine learning and computer vision, especially the visual analysis of complex scenes in motion. His work puts an emphasis on modelling complex interactions of a large amount of variables: deep learning, structured models, and graphical models, Ozgür ERKENT received his B.S. degree on Mechanical Engineering and M.S. degree on Cognitive Science both from Middle East Technical University in 2001 and 2004 respectively and Ph.D. degree from Electrical and Electronics Engineering, 2000.

. Dr and . Christian, He is a member of several IEEE International Scientific Committees and he has coorganized numerous workshops and major IEEE conferences in the field of Robotics such as IROS, IV, FSR, or ARSO. He also co-edited several books and special issues in high impact Robotics or ITS journals such as IJRR, JFR, RAM, T-ITS or ITSM. He recently brought recognized scientific contributions and patented innovations to the field of Bayesian Perception & Decision-making for Autonomous Robots and Intelligent Vehicles. He is IROS Fellow and he is the recipient of several IEEE and conferences awards in the fields of Robotics and Intelligent Vehicles, LAUGIER is Research Director at Inria and Scientific Advisor for Probayes SA and Baidu. His current research interests mainly lie in the areas of Autonomous Vehicles