1995
DOI: 10.1007/978-4-431-66933-3
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Markov Random Field Modeling in Computer Vision

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Cited by 984 publications
(791 citation statements)
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References 195 publications
(392 reference statements)
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“…SASI is based on the concepts of clique [20] and autocorrelation coefficient. In the following, SASI descriptor is introduced along with the background definitions.…”
Section: Definitionsmentioning
confidence: 99%
“…SASI is based on the concepts of clique [20] and autocorrelation coefficient. In the following, SASI descriptor is introduced along with the background definitions.…”
Section: Definitionsmentioning
confidence: 99%
“…However, as the size of the neighborhood system increases, the number of unknown variables becomes too large to be solved using SNOPT. By exploiting Markov-Gibbs equivalence (Besag, 1974;Li, 1995), we can write the conditional probability in terms of clique potentials. We believe that by using the Gibbs formulation and by exploiting isotropy within cliques the number of unknown variables can be further reduced, so that we can utilize a MRF model based on a second-order neighborhood system (i.e., an 8-neighborhood).…”
Section: Discussionmentioning
confidence: 99%
“…MRFs have been used in computer vision and image processing for texture synthesis (Cross and Jain, 1983;Efros and Leung, 1999;Paget and Longstaff, 1998), image segmentation (Derin and Elliott, 1987), and image restoration (Geman and Geman, 1984;Li, 1995). The states of MRF texture models are all possible gray levels and directly observable.…”
Section: Related Workmentioning
confidence: 99%
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“…The segmented images are expected to consist of regions within which the image content is homogeneous, while the contrast between neighboring regions is high. Typical methods falling into this category include region growing, watershed, some MRF-based methods [3], mean-shift [9] and the recently presented lossy data compression-based approach [10]. Segmentation methods based on the boundary or edge information are designed to exploit the discontinuity of the image features, such as difference in texture or pixel intensity, on the two sides of the boundary.…”
Section: Boundary (Edge) Informationmentioning
confidence: 99%