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Sampling conditions and topological guarantees for shape reconstruction algorithms

Sampling conditions and topological guarantees for shape reconstruction algorithms. Andre Lieutier , Dassault Sytemes Thanks to Dominique Attali for some slides (the nice ones ) Thanks to Dominique Attali , Fréderic Chazal , David Cohen-Steiner for joint work. Shape Reconstruction.

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Sampling conditions and topological guarantees for shape reconstruction algorithms

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  1. Sampling conditions and topological guarantees for shape reconstruction algorithms Andre Lieutier, DassaultSytemes Thanks to Dominique Attali for someslides (the niceones) Thanksto Dominique Attali, Fréderic Chazal, David Cohen-Steiner for joint work

  2. Shape Reconstruction UNKNOWN INPUT OUTPUT Surface of physical object Triangulation Sample in R3 • geometrically accurate • topologically correct

  3. Shape Reconstruction(or manifold learning) INPUT OUTPUT Unordered sequence of images varying in pose and lighting Low-dimensional complex

  4. Shape Reconstruction(or manifold learning) UNKNOWN INPUT OUTPUT Space with small intrinsec dimension Simplicial complex Sample in Rd • geometrically accurate • topologically correct

  5. Algorithms in 2D heuristics to select a subset of the Delaunay triangulation

  6. Algorithms in 3D heuristics to select a subset of the Delaunay triangulation

  7. A Simple Algorithm UNKNOWN INPUT OUTPUT Shape Sample -offset = union of balls with radius centered on the sample

  8. A Simple Algorithm UNKNOWN INPUT OUTPUT Shape Sample From Nerve Theorem: -offset -complex

  9. A Simple Algorithm Shape Sample OUTPUT

  10. Reconstruction theorem

  11. Reconstruction theorem Sampling conditions [Niyogi Smale Weinberger 2004]

  12. Beyond the reach : WFS and m-reach

  13. 1 m wfs m-reach reach Beyond the reach : WFS and m-reach wfs m m

  14. Previous best known result for faithful reconstruction of set with positive m-reach(Chazal, Cohen-Steiner,Lieutier 2006)

  15. Previous best known result for faithful reconstruction of set with positive m-reach(Chazal, Cohen-Steiner,Lieutier 2006)

  16. Best known result for faithful reconstruction of set with positive m-reach

  17. Previous best known result for faithful reconstruction of set with positive m-reach(Chazal, Cohen-Steiner,Lieutier 2006) Under the conditions of the theorem, a simple offset of the sampleis a faithfulreconsruction

  18. Recoveringhomology (Cohen-Steiner,Edelsbrunner,Harer 2006) (Chazal, Lieutier 2006)

  19. Recoveringhomology (Cohen-Steiner,Edelsbrunner,Harer 2006) (Chazal, Lieutier 2006)

  20. Recoveringhomology (Cohen-Steiner,Edelsbrunner,Harer 2006) (Chazal, Lieutier 2006)

  21. Recoveringhomology (Cohen-Steiner,Edelsbrunner,Harer 2006) (Chazal, Lieutier 2006)

  22. Recoveringhomology (Cohen-Steiner,Edelsbrunner,Harer 2006) (Chazal, Lieutier 2006)

  23. Rips Complex

  24. Samplng condition for Cech and Rips(D. Attali, A. Lieutier 2011) [NSW04] [CCL06]

  25. Questions ?

  26. Cech / Rips Rips and Cech complexes generally don’t share the same topology, but ...

  27. Cech / Rips

  28. Possesses a spirituous cycle that we want to kill ! Cech / Rips

  29. Cech / Rips Had there been a point close to the center, it would have distroy spirituous cycles appearing in the Rips, without changing the Cech.

  30. Convexity defects function

  31. Large m-reach=> smallconvexitydefectfunctions

  32. Density authorized [NSW04] [CCL06]

  33. Questions ?

  34. Cech Complex

  35. Nerve Theorem

  36. Persistent homology

  37. Persistent homology

  38. Persistent homology

  39. Persistent homology

  40. Persistent homology

  41. Persistent homology

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