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Transfer Learning of Object Classes: From Cartoons to Photographs NIPS Workshop Inductive Transfer: 10 Years Later Geremy Heitz Gal Elidan Daphne Koller December 9 th, 2005
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Localization vs. Recognition Traditional question: “Is there an object of type X in this image?” Airplane? NO Human? YES Dog? YES Our question: “Where in this image is the object of type X?” MAN DOG The man is walking the dog
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Outline Landmark-based shape model Localization as inference Transfer learning from cartoon drawings Results
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Shape Model Set of landmarks Piecewise-linear contour between neighbors Features of individual landmarks Features of pairs of landmarks tail nose
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Outline Landmark-based shape model Localization as inference Transfer learning from cartoon drawings Results
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“Registering” the Model to an Image Requires assigning each landmark to a pixel location ? ?
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Localization Are local cues enough? Need to jointly consider all cues (features) “Correct” pixel is often not the best match! Markov Random Field Potentials = Functions of local and global features Inference using max-product Registration = Most Likely Assignment L nose L tail L under L cockpit
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Outline Landmark-based shape model Localization as inference Transfer learning from cartoon drawings Results
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Bootstrap from simple instances where outlining is easy = cartoons / drawings Learning Challenge Hand LabelHidden Variables Costly, and time-consuming Where to start? Local optima problem no confusing background outline (shape) is easily recovered using snake ? ? ? ? ?
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Learning from Cartoon Drawings Registration Shape Learning Shape and Appearance Learning +
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Phase I: Learning from Cartoons Extract high resolution contour using snake Create shape-based model from training contours Pairwise merging of models Selection of landmarks Registration Pyramid Final Shape Model
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Training Set Selection high score low score Phase II: Learning from Images Correspond initial model to training images Select best correspondences as training instances Learn final shape- and appearance-based model Cartoon Phase Model Natural Image Model Transfer
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Outline Landmark-based shape model Localization as inference Transfer learning from cartoon drawings Results
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Localization Results 0.84 0.750.840.720.18 0.81 0.660.770.40 sample training cartoons sample registration
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Transfer of Object Shape Transfer of shape speeds up learning Benefit of shape transfer 0246810 0 0.1 0.2 0.3 0.4 0.5 0.6 # images in phase II Average overlap transfer no transfer
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Learning Appearance No Appearance FG/BG Appearance 0246810 0.46 0.48 0.5 0.52 0.54 0.56 0.58 0.6 0.62 0.64 Average overlap Shape template shape + appearance # images in phase II
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Training Instance Selection AUTOPICKED 024681012 0.3 0.35 0.4 0.45 0.5 0.55 0.6 0.65 0.7 AUTO PICKED HAND Average overlap # images in phase II
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Summary and Future Work Flexible probabilistic shape model Effective registration to images Transfer Shape from cartoons Appearance from real images Develop a better appearance model Investigate self-training issues Transfer from one class to another
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Thanks!
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Cartoon vs. Hand Segmentation 012345 Number of Training Instances 0.1 0.3 0.5 0.7 0.9 Mean Overlap Score Learned from Drawings Hand Constructed Human Inter-Observer cartoon hand segmented Learning shape from cartoons is competitive with hand segmentation!
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Landmark Features Shape Template Patch Appearance (Foreground/Background) Location
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Prediction 00.20.40.60.81 False positive rate 0 0.2 0.4 0.6 0.8 1 True positive rate objectrecognition car side86% cougar86% airplane86% buddha84% bass76% rooster73% Comparable to constellation w/ 5 instances (Fei Fei et. Al) Leading (discriminative) methods require many instances
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