First International Workshop on Video Segmentation Organizers: Thomas Brox, University of Freiburg Fabio Galasso, OSRAM Corp. Tech. Research, Max Planck.

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Presentation transcript:

First International Workshop on Video Segmentation Organizers: Thomas Brox, University of Freiburg Fabio Galasso, OSRAM Corp. Tech. Research, Max Planck Institute for Informatics Fuxin Li, Georgia Institute of Technology James Matthew Rehg, Georgia Institute of Technology Bernt Schiele, Max Planck Institute for Informatics

First International Workshop on Video Segmentation | Opening Motivation Fast growing interest ‣ [Ochs and Malik, ECCV’10], [Vazquez-Reina et al. ECCV’10], [Lezama et al. CVPR’11], [Ochs and Brox ICCV’11], [Lee et al. ICCV’11], [Godec et al. ICCV’11], [Sundaram et al. ICCV’11], [Fragkiadaki and Shi CVPR’12], [Xu and Corso CVPR’12], [Ma and Latecki CVPR’12], [Dragon et al. ECCV’12], [Lee et al. ECCV’12], [Xu et al. ECCV’12], [Zhang et al. CVPR’13], [Chang et al. CVPR’13], [Palou and Salembier CVPR’13], [Tang et al. CVPR’13], [Reso et al. ICCV’13], [Papazoglou and Ferrari ICCV’13], [Van den Bergh et al. ICCV’13], [Banica et al. ICCV’13], [Li et al. ICCV’13], [Jain et al. ICCV’13], [Levinshtein et al. ACCV’10], [Maire and Yu ICCV’13], [Badrinarayanan et al. IJCV’13], [Rota Bulo‘ and Kontschieder CVPR’14], [Chang et al. CVPR’14], [Kae et al. CVPR’14], [Galasso et al. CVPR’14] [Jain and Grauman ECCV’14], [Wang et al. ECCV’14]… 2

First International Workshop on Video Segmentation | Opening Diverse Problem Statements ‣ Separating one foreground from the background [Papazoglou and Ferrari ICCV’13], [Zhang et al. CVPR’13], [Van den Bergh et al. ICCV’13] ‣ Multiple object segmentation [Vazquez-Reina et al. ECCV’10], [Lee et al. ECCV’12], [Li et al. ICCV’13] ‣ Identifying moving objects [Fragkiadaki and Shi CVPR’12], [Lezama et al. CVPR’11], [Ochs and Brox ICCV’11], [Dragon et al. ECCV’12] ‣ Defining an over-complete supervoxel representation [Chang et al. CVPR’13], [Reso et al. ICCV’13], [Xu and Corso CVPR’12] ‣ Computing hierarchical sets of coarse-to-fine video segmentations [Levinshtein et al. ACCV’10], [Palou and Salembier CVPR’13], [Sundaram et al. ICCV’11], [Xu et al. ECCV’12], [Maire and Yu ICCV’13], [Jain et al. ICCV’13], [Galasso et al. CVPR’14] ‣ Ranking segmentation proposals [Banica et al. ICCV’13], [Lee et al. ICCV’11], [Ma and Latecki CVPR’12], [Zhang et al. CVPR’13] ‣ Unsupervised/supervised, semi-automatic, interactive [Badrinarayanan et al. IJCV’13], [Godec et al. ICCV’11], [Tang et al. CVPR’13] ‣ Semantic segmentation [Rota Bulo‘ and Kontschieder CVPR’14], [Chang et al. CVPR’14], [Kae et al. CVPR’14] 3

First International Workshop on Video Segmentation | Opening Motivation And different benchmarks 4 … FBMS VSB100 SegTrack v2 LIBSVX

First International Workshop on Video Segmentation | Opening LIBSVX [Xu and Corso CVPR’12] Supervoxel segmentation ‣ Spatio-temporally uniform ‣ Accurate at boundaries ‣ Parsimonious Corresponding metrics 5

First International Workshop on Video Segmentation | Opening Motivation And different benchmarks 6 … FBMS VSB100 SegTrack v2 LIBSVX

First International Workshop on Video Segmentation | Opening SegTrack v2 [Li et al. ICCV’13] (Video) Multiple Objects ‣ Annotations for each frame ‣ Videos for different challenges: motion blur, appearance change, deformation etc. ‣ Intersection over Union for best many-to-one match 7

First International Workshop on Video Segmentation | Opening Motivation And different benchmarks 8 … FBMS VSB100 SegTrack v2 LIBSVX

First International Workshop on Video Segmentation | Opening FBMS [Ochs et al. TPAMI’14] Motion segmentation 59 videos of diverse length and resolution Best one-to-one match and precision-recall 9 …

First International Workshop on Video Segmentation | Opening Motivation And different benchmarks 10 … FBMS VSB100 SegTrack v2 LIBSVX

First International Workshop on Video Segmentation | Opening VSB100 [Galasso et al. ICCV’13] Multiple human annotations ‣ Video seg ‣ Image seg ‣ Baseline 11 Volume Precision-Recall Boundary Precision-Recall

First International Workshop on Video Segmentation | Opening Today Dense full day program 5 Invited speakers 7 short talks ‣ Poster at lunch and coffee breaks ‣ Posters behind the room Short presentation by Michael Black Panel discussion: 4:30PM ‣ All invited speakers are invited to the panel 12