AI-EigenSnake: an affine-invariant deformable contour model for object matching

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摘要

An affine-invariant (AI) deformable contour model for object matching, called AI-EigenSnake (AI-ES), is proposed in the Bayesian framework. In AI-ES, the prior distribution of object shapes is estimated from the sample data. This distribution is then used to constrain the prototype contour, which is dynamically adjustable in the matching process. In this way, large shape deformations due to the variations of samples can be tolerated. Moreover, an AI internal energy term is introduced to describe the shape deformations between the prototype contour in the shape domain and the deformable contour in the image domain. Experiments based on real object matching demonstrate that the proposed model is more robust and insensitive to the positions, viewpoints, and large deformations of object shapes, as compared to the Active Shape Model and the AI-Snake Model.

论文关键词:Active shape model,Affine invariant,Deformable model,EigenSnake,Object matching

论文评审过程:Received 11 April 2000, Revised 3 March 2001, Accepted 16 July 2001, Available online 1 November 2001.

论文官网地址:https://doi.org/10.1016/S0262-8856(01)00078-6