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Published byArchibald Palmer Modified over 8 years ago
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Optimal Features ASM Texture description based on Taylor series Grids centered at the landmarks for local analysis Non linear classifier (kNN) for inside-outside labeling inside outside 1 2 1 B. van Ginneken, A.F. Frangi, J.J. Staal, B.M. ter Haar Romeny, and M.A. Viergever (2002) IEEE Transactions on Medical Imaging, 21(8):924–933
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Optimal Features ASM Face is too complex for the proposed labeling Thin zones generate profile variations Classes unbalance in high curvature points kNN slow (set dependent) Image features dependent on rotation 1 2 2
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Invariant Optimal Features ASM 1 2 3 F.M. Sukno, S. Ordas, C. Butakoff, S. Cruz, and A.F. Frangi IEEE Transactions on Pattern Analysis and Machine Intelligence, 29(7):1105–1117
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Invariant Optimal Features ASM Distance-based labeling 180 profiles of man and women with IOF-ASM 1 2 4
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Invariant Optimal Features ASM 1 2 Multi-valued neuron classifier Single neuron Very fast Appropriate combination of derivatives allows for invariance to rigid transformations i 0 1 k-1 k- 2 Z 5
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Segmentation tests 1 2 6 Experiments on 3400+ images Point to curve error Point to point error
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IOFASM vs ASM DatasetImagesError AR532- 33.2 % Equinox546- 25.2 % XM2VTS2360- 33.8 % 1 2 7
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IOFASM vs ASM ASM IOF-ASM 1 2 8
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Identity Verification: Texture Based on texture Eigenfaces-like approach from the segmentation results 1 2 9
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Identity Verification: Texture 1 2 10
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Related work 1 2 11
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Conclusions on IOF-ASM 1 2 By using more elaborate descriptions of the texture it is possible to increase the accuracy of ASMs IOF-ASM provides a generic framework Features are optimized for every landmark Allows for a trade off between accuracy and speed Feature selection: –15% error / –50% time About 30% more accurate than ASM in facial feature localization Derives in better identification rates Invariant to in-plane rotations 12
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Out-of-plane Rotations Environment constraints ● Surveillance systems ● Car driver images ASM: ● Similarity does not remove 3D pose ● Multiple-view database Other approaches ● Non-linear models ● 3D models: multiple views AV@CAR Database 1 2 3 13
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