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Epitome Ji Soo Yi and Woo Young Kim Instructor: Prof. James Rehg April 27, 2004. Spring 2004, CS7636 Computational Perception
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CONTENTS Introduction Epitomic Image Experiment Results & Conclusion Future direction Edited by Woo Young and Ji Soo
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Introduction(1) Image representative model Feature-based Geometric approach Template-based Standard Euclidian error norms Eigen spaces Color histogram-based Edited by Woo Young and Ji Soo
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Introduction(2) Epitomic image analysis What is Epitome? The miniature, condensed version of image. Still consists of most constitutive elements. Use a probabilistic measure of similarities. Shape epitome and appearance epitome. Edited by Woo Young and Ji Soo
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Introduction(3) Epitomic image analysis Graphical model of epitomic analysis Edited by Woo Young and Ji Soo EsEs M S1S1 S2S2 I EmEm appearance epitome shape epitome I=M*S 1 +(1-M)*S 2 + noise
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Introduction(4) Epitomic image analysis Probabilistic framework Edited by Woo Young and Ji Soo epitome e = ( , ) M,N Patch Z k = {z i,k }, z i,k = x i Input image X Patch Z n Me, Ne TkTk TnTn
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Introduction(5) Epitomic image analysis EM algorithm to extract an epitomic image Edited by Woo Young and Ji Soo E step: M step:
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Epitomic Image (1) Edited by Woo Young and Ji Soo Original image Epitomic image
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Epitomic Image (2) Edited by Woo Young and Ji Soo Input image Epitomic image
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Experiment (1) Edited by Woo Young and Ji Soo Epitomic Modeling Face Detection Comparison with PCA Analysis
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Experiment (2) Edited by Woo Young and Ji Soo Epitomic Modeling Training data – a set of face images Each image : 100 by 75 Epitomic image: 32 by 32 Epitomic image
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Experiment (3) Edited by Woo Young and Ji Soo Epitomic Modeling Training data – a synthetic image by tiling face images 100 by 75 pixels for each image 1000 by 375 pixels for total 75 by 75 pixels
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Experiment (4) Edited by Woo Young and Ji Soo Face Detection Histogram and clustering
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Experiment(5) Edited by Woo Young and Ji Soo Face Detection Patch matching – face image High log likelihood – good matchLow log likelihood - poor match
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Experiment(6) Edited by Woo Young and Ji Soo Face Detection Patch matching – non face image Low log likelihood – good matchHigh log likelihood - poor match
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Experiment(7) Edited by Woo Young and Ji Soo Comparison with PCA analysis – PCA Rigid data Non-Rigid data
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Experiment(8) Edited by Woo Young and Ji Soo Comparison with PCA analysis – Epitome Rigid data Non-Rigid data
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Results & Conclusion Edited by Woo Young and Ji Soo Epitomic image modeling Parameter settings Comparison with PCA Analysis Statistics
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Future direction Edited by Woo Young and Ji Soo Computational time saving Shape epitome Other applications
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