A method for segmentation and recognition of image structures based on graph homomorphisms is presented in this paper. It is a model-basedrecognition method where the input image is over-segmented and the obtained re...
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A method for segmentation and recognition of image structures based on graph homomorphisms is presented in this paper. It is a model-basedrecognition method where the input image is over-segmented and the obtained regions are represented by an attributed relational graph (ARG). This graph is then matched against a model graph thus accomplishing the model-basedrecognition task. This type of problem calls for inexact graph matching through a homomorphism between the graphs since no bijective correspondence can be expected, because of the over-segmentation of the image with respect to the model. The search for the best homomorphism is carried out by optimizing an objective function based on similarities between object and relational attributes defined on the graphs. The following optimization procedures are compared and discussed: deterministic tree search, for which new algorithms are detailed, genetic algorithms and estimation of distribution algorithms. In order to assess the performance of theses algorithms using real data, experimental results on supervised, classification of facial features using face images from public databases are presented. (c) 2005 Pattern recognition Society. Published by Elsevier Ltd. All rights reserved.
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