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Published byBrianne O’Connor’ Modified over 9 years ago
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RECOGNIZING FACIAL EXPRESSIONS THROUGH TRACKING Salih Burak Gokturk
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OVERVIEW PROBLEM DESCRIPTION TRAINING STAGE TESTING STAGE EXPERIMENTS CONCLUSION
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Components of the recognition system Analysis -Face Tracking Intelligence -Support Vector Machine Classifier Shape Parameters Training with stereo DataClassifier Testing with mono New Data Output
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PROBLEM DESCRIPTION(Tracking ) ?
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PROBLEM DESCRIPTION (Recognition) X(t) [ Rigid, Open Mouth, Smile] ? Training DataClassifier Testing New DataOutput
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OVERVIEW PROBLEM DESCRIPTION TRAINING STAGE TESTING STAGE EXPERIMENTS CONCLUSION
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p - degrees of freedom Stereo Tracking Data Monocular Tracking And Classification Learn Shape
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Support Vector Machines (SVM) - Best discriminating hypersurface between two class of objects - Map the data to high dimension using a map function - The hypersurface in the feature space corresponds to a hyperplane in the mapped space Training DataClassifier Testing (Classifier) New DataOutput
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OVERVIEW PROBLEM DESCRIPTION TRAINING STAGE TESTING STAGE EXPERIMENTS CONCLUSION
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LUKAS TOMASI KANADE OPTICAL FLOW TRACKER EXTENDED TO 3D X(t) I(x(t)) I(t+1) TIME t+1 ? X(t+1)
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One to Many Application of Support Vector Machines (SVM) - One hypersurface per class is calculated - A new data is tested for each hypersurface - A different probability is assigned to ith class
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OVERVIEW PROBLEM DESCRIPTION TRAINING STAGE TESTING STAGE EXPERIMENTS CONCLUSION
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-Training (Stereo) with 2 people, totally 240 frames - Testing with 3 people - 5 expressions: neutral, open mouth, close mouth, smile, raise eyebrow - velocity term is added to the shape vector: - Two other classifiers were tested: 1 - Clustering 2 – N-Nearest Neighbor
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MOVIE (1)
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MOVIE (2)
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Decision of the system Input NeutralOpen mouth Close mouth SmileRaise eyebrow Neutral (44)326303 Open mouth (80)076400 Close Mouth (50) 0 1 4900 Smile (87) 2 00 81 4 Raise Eyebrow (21) 3 00 0 18 Performance of the system for different expressions Table 1
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Comparison Between Different Methods SVM with kernel erbf SVM with kernel rbf ClusteringN-Nearest with N=9 N-Nearest with N=5 Same person 176/182170/182161/182173/182 Total256/282253/282242/283255/282253/282 Table 2
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-Training (Stereo) with 1 person, totally 130 frames - Testing with 3 people - 5 expressions: neutral, open mouth, close mouth, smile, raise eyebrow Comparison Between Different Methods with only one person training set SVM with kernel erbf SVM with kernel rbf ClusteringN-Nearest with N=9 N-Nearest with N=5 Same person98/11099/110109/110 110/110 Total216/282207/282233/282231/282229/282 Table 3
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-Training (Stereo) with 2 people, totally 240 frames - Testing with 3 people - 3 emotional expressions: neutral, happy, surprise - Transition between expressions are separated Comparison Between Different Methods with three emotional expressions SVM with kernel erbf SVM with kernel rbf Cluster ing N- Nearest with N=9 N-Nearest with N=5 N-Nearest with N=3 N-Nearest with N=1 Same person 164/165165/165152/165163/165164/165 Total222/228223/228213/228225/228224/228223/228 Table 4
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Performance Comparison Between Previous Expression Recognition Work Recognition Rate Pose Change Number of Expressions Test/Train Subject Number of Data Comments Chen et.al, ICME 2000 %89Direct camera view 7Different subject 470 images Problem with different people Wang et.al, AFGR 1998 %96Direct camera view 3Different subject 29 image sequence Sequence classification (easier) Lien et.al, AFGR 1998 %85-%93~10 degrees rotation 4Different subject ~130 images Only upper part of the face is classified Hiroshi et.al, ICPR 1996 %70~45-60 degrees rotation 5Same subject 900 images Permits for rotations, but rates are not as good Chang et.al, IJCNN 1999 %92Direct camera view 3Different subject 38 imagesSmall test and training set Matsuno et.al, ICCV 1995 %80Direct camera view 4Different subject 45 imagesSmall test and training set Hong et.al, AFGR 1998 %65-%85Direct camera view 7Same and different subject ~250 images %85 with known person % 65 with unknown person Hong et.al, AFGR 1998 %81-%97Direct camera view 3Same and different subject ~250 images %97 with known person % 81 with unknown person Sakaguchi et.al, ICPR 1996 %84Direct camera view 6Same subject -The test and training set not mentioned Our Work%91~70-80 degrees rotation 5Different subject 282 images Table 2 Our Work%98~70-80 degrees rotation 3Different subject 228 images Table 4 - Emotional Expressions
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OVERVIEW PROBLEM DESCRIPTION TRAINING STAGE TESTING STAGE EXPERIMENTS CONCLUSION
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Future Work Conclusions - Breakthrough facial expression recognition rates. - 3-D is the right way to go… - Test with more subjects and expressions. - further application to face recognition (?)
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