Article ID Journal Published Year Pages File Type
535932 Pattern Recognition Letters 2011 12 Pages PDF
Abstract

Size Theory has proven to be a useful geometrical/topological approach to shape comparison. Originally introduced by considering 1-dimensional properties of shapes, described by means of real-valued functions, it has recently been generalized to taking into account multi-dimensional properties coded by functions valued in RkRk. This has led to the introduction of a shape descriptor called k-dimensional size function, and the k-dimensional matching distance to compare size functions. This paper presents new theoretical results about the 2-dimensional matching distance, leading to the formulation of an algorithm for its approximation up to an arbitrary error threshold. Experiments on 3D object comparison are shown to discuss the efficacy and effectiveness of the algorithm.

► An error bound for the approximation of the 2-dimensional matching distance. ► An algorithm for the actual computation of the 2-dimensional matching distance. ► Experiments on 3D object comparison demonstrating the efficiency of the algorithm.

Keywords
Related Topics
Physical Sciences and Engineering Computer Science Computer Vision and Pattern Recognition
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