2001
DOI: 10.1117/12.444201
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<title>Bayesian object matching based on MCMC sampling and Gabor filters</title>

Abstract: We study an object recognition system where Bayesian inference is used for estimating the probability distribution of matching object locations on an image. The representation of the object contains two parts: the likelihood part that defines the probability of perceiving a given (gray scale) image corresponding to the matched object detail, and the prior part that defines the probability of variation of the object, including elastic distortions and interclass variations.The application we are studying is rela… Show more

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Cited by 4 publications
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