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Active Appearance Models Dhruv Batra ECE CMU
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Active Appearance Models 1.T.F.Cootes, G.J. Edwards and C.J.Taylor. "Active Appearance Models", in Proc. European Conference on Computer Vision 1998 (H.Burkhardt & B. Neumann Ed.s). Vol. 2, pp. 484-498, Springer, 1998 2.T.F.Cootes, G.J. Edwards and C.J.Taylor. "Active Appearance Models", IEEE PAMI, Vol.23, No.6, pp.681-685, 2001 3.G.J. Edwards, A. Lanitis, C.J. Taylor, T. F. Cootes. “Statistical Models of Face Images Improving Specificity”, BMVC (1996)
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Essence of the Idea “Interpretation through synthesis” Form a model of the object/image (Learnt from the training dataset) I. Matthews and S. Baker, "Active Appearance Models Revisited," International Journal of Computer Vision, Vol. 60, No. 2, November, 2004, pp. 135 - 164.
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Essence of the Idea (cont.) Explain a new example in terms of the model parameters
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So what’s a model Model “Shape” “texture”
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Active Shape Models training set
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Texture Models warp to mean shape
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Random Aside Shape Vector provides alignment = 43 Alexei (Alyosha) Efros, 15-463 (15-862): Computational Photography, http://graphics.cs.cmu.edu/courses/15-463/2005_fall/www/Lectures/faces.ppt
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Random Aside Alignment is the key 1. Warp to mean shape 2. Average pixels Alexei (Alyosha) Efros, 15-463 (15-862): Computational Photography, http://graphics.cs.cmu.edu/courses/15-463/2005_fall/www/Lectures/faces.ppt
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Random Aside Enhancing Gender more same original androgynous more opposite D. Rowland, D. Perrett. “Manipulating Facial Appearance through Shape and Color”, IEEE Computer Graphics and Applications, Vol. 15, No. 5: September 1995, pp. 70-76
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Random Aside (can’t escape structure!) Alexei (Alyosha) Efros, 15-463 (15-862): Computational Photography, http://graphics.cs.cmu.edu/courses/15-463/2005_fall/www/Lectures/faces.ppt Antonio Torralba & Aude Oliva (2002) Averages: Hundreds of images containing a person are averaged to reveal regularities in the intensity patterns across all the images.
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Random Aside (can’t escape structure!) Tomasz Malisiewicz, http://www.cs.cmu.edu/~tmalisie/pascal/trainval_mean_large.png
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Random Aside (can’t escape structure!) “100 Special Moments” by Jason Salavon Jason Salavon, http://salavon.com/PlayboyDecades/PlayboyDecades.shtml
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Random Aside (can’t escape structure!) “Every Playboy Centerfold, The Decades (normalized)” by Jason Salavon 1960s1970s1980s Jason Salavon, http://salavon.com/PlayboyDecades/PlayboyDecades.shtml
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Back (sadly) to Texture Models raster scan Normalizations
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PCA Galore Reduce Dimensions of shape vector Reduce Dimension of “texture” vector They are still correlated; repeat..
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Object/Image to Parameters modeling ~80
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Playing with the Parameters First two modes of shape variationFirst two modes of gray-level variation First four modes of appearance variation
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Active Appearance Model Search Given: Full training model set, new image to be interpreted, “reasonable” starting approximation Goal: Find model with least approximation error High Dimensional Search: Curse of the dimensions strikes again
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Active Appearance Model Search Trick: Each optimization is a similar problem, can be learnt Assumption: Linearity Perturb model parameters with known amount Generate perturbed image and sample error Learn multivariate regression for many such perterbuations
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Active Appearance Model Search Algorithm: current estimate of model parameters: normalized image sample at current estimate
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Active Appearance Model Search Slightly different modeling: Error term: Taylor expansion (with linear assumption) Min (RMS sense) error: Systematically perturb and estimate by numerical differentiation
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Active Appearance Model Search (Results)
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