Robust detection of skewed symmetries by combining local and semi-local affine invariants

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摘要

Affine-invariant feature vector (Ip and Shen Image Vision Comput. 16 (2) (1998) 135–146), that captures both local and semi-local geometric features around each point of the object boundary is applied here for the detection of skewed symmetries. Based on the affine-invariant shape representation, the problem of detecting symmetry axes has been formulated as a problem of detecting lines, with known orientations, in a local similarity matrix of an object. Since the feature vector extracts sufficient local and semi-local shape information for every point along the object boundary, the process of checking symmetric point pairs is thus robust against both noises and deformations. Moreover, our technique is able to detect all the local reflectional symmetries contained in the object. Various experimental results have shown the robustness and effectiveness of our method in detecting skewed symmetries from both self-symmetric objects and generalized objects.

论文关键词:Skewed symmetry,Local invariants,Semi-local invariants,Rotational symmetry,Reflectional symmetry

论文评审过程:Received 22 December 1999, Revised 28 March 2000, Accepted 28 March 2000, Available online 7 June 2001.

论文官网地址:https://doi.org/10.1016/S0031-3203(00)00079-0