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1 ECCV ECCV ECCV2012 European Conference on Computer Vision (ECCV) General Chairs Roberto Cipolla (University of Cambridge, UK), Carlo Colombo (University of Florence, Italy), Alberto Del Bimbo (University of Florence, Italy) Program Coordinator Pietro Perona (California Institute of Technology, USA) Program Chairs Andrew Fitzgibbon (Microsoft Research, Cambridge, UK), Svetlana Lazebnik (University of Illinois at Urbana-Champaign, USA), Yoichi Sato (University of Tokyo, Japan), Cordelia Schmid (INRIA, Grenoble, France) 2. ECCV Paper submissions 1437 Oral Program 40 Main Conference Poster Program 368 Demo submissions 25 Demo Program 21 Exhibits 11 Tutorial Tutorial proposals 12 Tutorial Program 8 Workshop proposals 37 Workshop Workshop Program 21 Submitted papers 450 Acceped papers 257 Attendees Registered Attendees ECCV 1

2 2 ECCV2008,2010,2012 ECCV % % % ECCV % % % ECCV % % % Lighting and Color 8% Tracking and Registration 9% Segmentation 10% Geometry, Shape and Reconstruction 13% Recognition and Classification 19% Models, Optimization and Learning 18% Action and Activities 10% Features and Matching 13% 2 ECCV % 3% 57% Recognition and Classification 19% Models, Optimization and Learning 18% ECCV (36%) (8%) (6%) (6%) 1% Microsoft(7%) Google(1%) 3 ECCV Best Paper Award Daniel Kuettel, Matthieu Guillaumin and Vittorio Ferrari, Segmentation Propagation in ImageNet. Kuettel DB ImageNet ImageNet... ImageNet GrabCut CVPR2012 GrabCut enegy function ImageNet 2

3 3.2 Best Paper Award - Honorable Mention Kris Kitani, Brian D. Ziebart, James Bagnell and Martial Hebert, Activity Forecasting. Kris Kitani Activity Forecasting Markov decision process(mdp) 3.3 Koenderink Prize for Fundamental Contributions in Computer Vision Vladimir Kolmogorov and Ramin Zabih, What Energy Functions Can Be Minimized via Graph Cuts? ECCV Koenderink Prize Vladimir Kolmogorov Ramin Zabih 2002 ECCV What Energy Functions Can Be Minimized via Graph Cuts? Vladimir 2 Vladimir 3.4 Best Student Paper Award Jianxiong Xiao and Yasutaka Furukawa, Reconstructing the World s Museums. Xiao Furukawa Inverse CSG 3 Inverse CSG 3DCSG Furukawa 3.5 Demo Paper Award David Derisory, Josh Susskind, Lauren Kreiger and Marian Bartlett, Emotion Mirror: A novel intervention for autism using real-time expression recognition. Emotion Mirror Luca Ballan, Aparna Taneja, Jurgen Gall, Luc Van Gool, and Marc Pollefeys, Motion Capture of Hands in Action using Discriminative Salient Points. Articulated Object Tracking CG ETH Zurich salient point ( 3

4 Hough forest classifier CG CG salient point configuration 4.2 Alireza Fathi, Yin Li, and James M. Rehg, Learning to Recognize Daily Actions using Gaze. Georgia Tech. Ground Truth SVM SVM 47% 4.3 Visual Saliency Stefan Mathe and Cristian Sminchisescu, Dynamic Eye Movement Datasets and Learnt Saliency Models for Visual Action Recognition. Mathe Visual Saliency shooter s bias Hollywood Debase UFS Sports database Action Recognition Visual Saliency Visual Saliency 4.4 Ali Borji, Dicky N. Sihite, and Laurent Itti, Salient Object Detection: A Benchmark. (Saliency) 4.5 Depth edges Yuichi Taguchi, Rainbow Flash Camera: Depth Edge Extraction Using Complementary Colors. Depth edges (depth discontinuities) Rainbow Flash LED Flash Depth edges LED Depth edges orientation

5 5.2 ipad ECCV twitter twitter ECCV twitter 5

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