shape analysis and deformation igarashi lab m2 akira ohgawara

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Shape Analysis and Deformation Igarashi Lab M2 Akira Ohgawara

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Page 1: Shape Analysis and Deformation Igarashi Lab M2 Akira Ohgawara

Shape Analysis and Deformation

Igarashi LabM2 Akira Ohgawara

Page 2: Shape Analysis and Deformation Igarashi Lab M2 Akira Ohgawara

Joint Shape Segmentation with Linear Programming

• Segment the shapes jointly utilizing features from multiple shapes

• Evaluation– Rand index measure

Qixing Huang, Vladlen Koltun, Leonidas GuibasStanford University

Page 3: Shape Analysis and Deformation Igarashi Lab M2 Akira Ohgawara

• Initial segments• Pairwise joint segmentation– Integer quadratic program– Linear programming relaxation

• Multiway joint segmentation– Linear programming

Page 4: Shape Analysis and Deformation Igarashi Lab M2 Akira Ohgawara

Shape Space Exploration of Constrained Meshes

• Planar quad (PQ) mesh• Circular mesh• Non-linear constraints

Yong-Liang Yang, Yi-Jun Yang, Helmut Pottmann, Niloy J. MitraKAUST, TU Vienna

Page 5: Shape Analysis and Deformation Igarashi Lab M2 Akira Ohgawara
Page 6: Shape Analysis and Deformation Igarashi Lab M2 Akira Ohgawara

Pattern-Aware Shape Deformation Using Sliding Dockers

• Continuous and discrete regular pattern• A discrete algorithm

– adaptively inserts or removes repeated elements in regular patterns to minimize distortion

• Deformation model– Elastic deformation– Structure aware deformation

Martin Bokeloh, Michael Wand, Vladlen Koltun, Hans-Peter SeidelMPI Informatik, Saarland University, and Stanford University

Page 7: Shape Analysis and Deformation Igarashi Lab M2 Akira Ohgawara
Page 8: Shape Analysis and Deformation Igarashi Lab M2 Akira Ohgawara
Page 9: Shape Analysis and Deformation Igarashi Lab M2 Akira Ohgawara
Page 10: Shape Analysis and Deformation Igarashi Lab M2 Akira Ohgawara

Unsupervised Co-Segmentation of a Set of Shapes via Descriptor-Space Spectral Clustering

Oana Sidi, Oliver van Kaick, Yanir Kleiman, Hao Zhang, Daniel Cohen-OrTel-Aviv University, Simon Fraser University

• Unsupervised co-segmentation– No labeled data

Page 11: Shape Analysis and Deformation Igarashi Lab M2 Akira Ohgawara

• Comparison to a supervised approach– [Golovinskiy and Funkhouser 2009]

Page 12: Shape Analysis and Deformation Igarashi Lab M2 Akira Ohgawara

• Per-object segmentation– Mean-shift algorithm [Comaniciu and Meer 2002]

• Diffusion maps– Dissimilarity

– Affinity matrix

• Clustering– An agglomerative hierarchical algorithm

• Statistical model– EM algorithm and the Bayes’ theorem

• Result– Final co-segmentation

Page 13: Shape Analysis and Deformation Igarashi Lab M2 Akira Ohgawara

• Number of models– From 12 to 44

• Accuracy– From 84.4 to 98.2