Title :
2D Affine and Projective Shape Analysis
Author :
Bryner, Darshan ; Klassen, Eric ; Huiling Le ; Srivastava, Anurag
Author_Institution :
Naval Surface Warfare Center, Panama City, FL, USA
Abstract :
Current techniques for shape analysis tend to seek invariance to similarity transformations (rotation, translation, and scale), but certain imaging situations require invariance to larger groups, such as affine or projective groups. Here we present a general Riemannian framework for shape analysis of planar objects where metrics and related quantities are invariant to affine and projective groups. Highlighting two possibilities for representing object boundaries-ordered points (or landmarks) and parameterized curves-we study different combinations of these representations (points and curves) and transformations (affine and projective). Specifically, we provide solutions to three out of four situations and develop algorithms for computing geodesics and intrinsic sample statistics, leading up to Gaussian-type statistical models, and classifying test shapes using such models learned from training data. In the case of parameterized curves, we also achieve the desired goal of invariance to re-parameterizations. The geodesics are constructed by particularizing the path-straightening algorithm to geometries of current manifolds and are used, in turn, to compute shape statistics and Gaussian-type shape models. We demonstrate these ideas using a number of examples from shape and activity recognition.
Keywords :
Gaussian processes; differential geometry; shape recognition; 2D affine analysis; Gaussian-type shape models; Gaussian-type statistical models; general Riemannian framework; geodesics; intrinsic sample statistics; object boundaries; ordered points; parameterized curves; path-straightening algorithm; planar objects; projective shape analysis; shape statistics; Computational modeling; Manifolds; Measurement; Orbits; Shape; Space vehicles; Standardization; Affine invariance; Affine shape analysis; Elastic metric; Karcher mean shapes; Projective invariance; Riemannian methods; Shape models; Shape statistics; geodesic computation; path-straightening method; projective shape analysis; shape models;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on
DOI :
10.1109/TPAMI.2013.199