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Interactive image segmentation by matching attributed relational graphs
Authors:Alexandre Noma  Ana B.V. Graciano  Roberto M. Cesar Jr  Luis A. Consularo  Isabelle Bloch
Affiliation:1. Institute of Mathematics and Statistics, University of São Paulo Rua do Matão, 1010, CEP 05508-090 São Paulo, Brazil;2. Tribunal Superior Eleitoral, Praça dos Tribunais Superiores—Bloco C—SAS—CEP 70096-900, Brasília-DF, Brazil;3. Telecom ParisTech, CNRS LTCI, 46 rue Barrault, 75013 Paris, France
Abstract:A model-based graph matching approach is proposed for interactive image segmentation. It starts from an over-segmentation of the input image, exploiting color and spatial information among regions to propagate the labels from the regions marked by the user-provided seeds to the entire image. The region merging procedure is performed by matching two graphs: the input graph, representing the entire image; and the model graph, representing only the marked regions. The optimization is based on discrete search using deformed graphs to efficiently evaluate the spatial information. Note that by using a model-based approach, different interactive segmentation problems can be tackled: binary and multi-label segmentation of single images as well as of multiple similar images. Successful results for all these cases are presented, in addition to a comparison between our binary segmentation results and those obtained with state-of-the-art approaches. An implementation is available at http://structuralsegm.sourceforge.net/.
Keywords:
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