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Diffusion-geometric maximally stable component detection in deformable shapes. Roee Litman , Dr. Alexander Bronstein, Dr. Michael Bronstein. The “Feature Approach” to Image Analysis. Video tracking Panorama alignment 3D reconstruction Content-based image retrieval. Non-rigid Shapes.
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Diffusion-geometricmaximally stable component detection in deformable shapes Roee Litman, Dr. Alexander Bronstein, Dr. Michael Bronstein
The “Feature Approach”to Image Analysis • Video tracking • Panorama alignment • 3D reconstruction • Content-based image retrieval
Problem formulation • Find a semi-local feature detector • High repeatability • Invariance to (non-stretching) deformation • Robustness to noise, sampling, etc. • Add informative descriptor
The Goal “Head+Arm” take a shape Detect (stable) regions “Head” “Arm” “Upper Body” “Leg” “Leg”
More Results (Taken from the TOSCA dataset) Horse regions + Human regions
Region Description Distance = 0.44 Distance = 0.34 Distance = 0.02 Distance = 0.08 Distance= 0.17 Distance = 0.25
Region Matching Query 1st, 2nd, 4th, 10th, and 15th matches
3D Human Scans Taken from the SCAPE dataset
Scanned Region Matching Query 1st, 2nd, 4th, 10th, and 15th matches
(The “how”) Methodology
In a nutshell… The Feature Approach for Images Deformable Shape Analysis Shape MSER MSER Maximally Stable ExtremalRegion Diffusion Geometry
MSER – In a nutshell • Threshold image at consecutive gray-levels • Search regions whose area stay nearly the same through a wide range of thresholds
Algorithm overview • Represent as weighted graph • Component tree • Stable component detection
Algorithm overview • Represent as weighted graph
Weighting the graph In images • Illumination (Gray-scale) • Color (RGB) In Shapes • Mean Curvature (not deformation invariant) • Diffusion Geometry
Weighting Option • For every point on the shape: • Calculate the prob. of a random walk to return to the same point. • Similar to Gaussian curvature • Intrinsic - i.e. deformation invariant
Weight example Color-mapped Level-set animation
Diffusion Geometry • Analysis of diffusion (random walk) processes • Governed by the heat equation • Solution is heat distributionat point at time
Heat-Kernel • Given • Initial condition • Boundary condition, if these’s a boundary • Solve using: • i.e. - find the “heat-kernel”
Probabilistic Interpretation The probability density for a transition by random walk of length , from to
Spectral Interpretation • How to calculate ? • Heat kernel can be calculated directly from eigen-decomposition of the Laplacain • By spectral decomposition theorem:
Auto-diffusivity • Special case - • The chance of returning to after time • Related to Gaussian curvature by • Now we can attach scalar value to shapes!
Weight example Color-mapped Level-set animation
Algorithm overview • Represent as weighted graph • Component tree • Stable component detection
Benchmarking The Method • Method was tested on SHREC 2010 data-set: • 3 basic shapes (human, dog & horse) • 9 transformations, applied in 5 different strengths • 138 shapes in total Scale Original Deformation Holes Noise
Quantitative Results • Regions were projected onto “original” shape,and overlap ratio was measured • Vertex-wise correspondences were given • Overlap ratio between a region and its projected counterpart is • Repeatability is the percent of regions with overlap above a threshold
Repeatability 65% at 0.75
Conclusion • Stable region detector for deformable shapes • Generic detection framework • Vertex- and edge-weighted graph representation • Surface and volume data • Partial matching & retrieval potential • Tested quantitatively (on SHREC10)
Thank You Any Questions?