A Bayesian similarity measure for deformable image matching

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摘要

We propose a probabilistic similarity measure for direct image matching based on a Bayesian analysis of image deformations. We model two classes of variation in object appearance: intra-object and extra-object. The probability density functions for each class are then estimated from training data and used to compute a similarity measure based on the a posteriori probabilities. Furthermore, we use a novel representation for characterizing image differences using a deformable technique for obtaining pixel-wise correspondences. This representation, which is based on a deformable 3D mesh in XYI-space, is then experimentally compared with two simpler representations: intensity differences and optical flow. The performance advantage of our deformable matching technique is demonstrated using a typically hard test set drawn from the US Army's FERET face database.

论文关键词:Face recognition,Image matching,Image warping,Deformable surfaces,Density estimation,Bayesian analysis,Principal component analysis,Eigenfaces

论文评审过程:Received 22 January 1999, Revised 25 July 2000, Accepted 27 July 2000, Available online 5 February 2001.

论文官网地址:https://doi.org/10.1016/S0262-8856(00)00059-7