Automatic classification of deformable shapes

Abstract
Let be a dataset of smooth 3D-surfaces, partitioned into disjoint classes , . We show how optimized diffeomorphic registration applied to large numbers of pairs can provide descriptive feature vectors to implement automatic classification on , and generate classifiers invariant by rigid motions in . To enhance accuracy of automatic classification, we enrich the smallest classes by diffeomorphic interpolation of smooth surfaces between pairs . We also implement small random perturbations of surfaces by random flows of smooth diffeomorphisms . Finally, we test our automatic classification methods on a cardiology data base of discretized mitral valve surfaces.
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