Bayesian face recognition
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摘要
We propose a new technique for direct visual matching of images for the purposes of face recognition and image retrieval, using a probabilistic measure of similarity, based primarily on a Bayesian (MAP) analysis of image differences. The performance advantage of this probabilistic matching technique over standard Euclidean nearest-neighbor eigenface matching was demonstrated using results from DARPA's 1996 “FERET” face recognition competition, in which this Bayesian matching alogrithm was found to be the top performer. In addition, we derive a simple method of replacing costly computation of nonlinear (on-line) Bayesian similarity measures by inexpensive linear (off-line) subspace projections and simple Euclidean norms, thus resulting in a significant computational speed-up for implementation with very large databases.
论文关键词:Face Recognition,Density estimation,Bayesian analysis,MAP/ML classification,Principal component analysis,Eigenfaces
论文评审过程:Received 15 January 1999, Revised 28 July 1999, Accepted 28 July 1999, Available online 7 June 2001.
论文官网地址:https://doi.org/10.1016/S0031-3203(99)00179-X