Title :
Modal matching for correspondence and recognition
Author :
Sclaroff, Stan ; Pentland, Alex P.
Author_Institution :
Dept. of Comput. Sci., Boston Univ., MA, USA
fDate :
6/1/1995 12:00:00 AM
Abstract :
Modal matching is a new method for establishing correspondences and computing canonical descriptions. The method is based on the idea of describing objects in terms of generalized symmetries, as defined by each object´s eigenmodes. The resulting modal description is used for object recognition and categorization, where shape similarities are expressed as the amounts of modal deformation energy needed to align the two objects. In general, modes provide a global-to-local ordering of shape deformation and thus allow for selecting which types of deformations are used in object alignment and comparison. In contrast to previous techniques, which required correspondence to be computed with an initial or prototype shape, modal matching utilizes a new type of finite element formulation that allows for an object´s eigenmodes to be computed directly from available image information. This improved formulation provides greater generality and accuracy, and is applicable to data of any dimensionality. Correspondence results with 2D contour and point feature data are shown, and recognition experiments with 2D images of hand tools and airplanes are described
Keywords :
computer vision; finite element analysis; object recognition; 2D contour; 2D images; airplanes; canonical descriptions; categorization; correspondence; eigenmodes; finite element formulation; global-to-local ordering; hand tools; modal matching; object alignment; object recognition; point feature; shape deformation; shape similarities; Airplanes; Deformable models; Finite element methods; Image recognition; Machine vision; Modal analysis; Object recognition; Prototypes; Robustness; Shape;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on