Automatic 3d free form shape matching using the graduated assignment algorithm

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摘要

Three-dimensional free form shape matching is a fundamental problem in both the machine vision and pattern recognition literatures. However, the automatic approach to 3D free form shape matching still remains open. In this paper, we propose using k closest points in the second view for the automatic 3D free form shape matching. For the sake of computational efficiency, the optimised k-D tree is employed for the search of the k closest points. Since occlusion and appearance and disappearance of points almost always occur, slack variables have to be employed, explicitly modelling outliers in the process of matching. Then the relative quality of each possible point match is estimated using the graduated assignment algorithm, leading the camera motion parameters to be estimated by the quaternion method in the weighted least-squares sense. The experimental results based on both synthetic data and real images without any pre-processing show the effectiveness and efficiency of the proposed algorithm for the automatic matching of overlapping 3D free form shapes with either sparse or dense points.

论文关键词:3D free form shape,Automatic matching,k closest points,Graduated assignment,Optimised k-D tree,Time complexity,Space complexity

论文评审过程:Received 18 June 2004, Accepted 10 January 2005, Available online 14 March 2005.

论文官网地址:https://doi.org/10.1016/j.patcog.2005.01.008