An iterative Gibbsian technique for reconstruction of m-ary images
Pattern Recognition
Multiple Resolution Segmentation of Textured Images
IEEE Transactions on Pattern Analysis and Machine Intelligence
Multiscale minimization of global energy functions in some visual recovery problems
CVGIP: Image Understanding
Discrete Markov image modeling and inference on the quadtree
IEEE Transactions on Image Processing
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This paper deals with hierarchical Markov Random Field models. We propose to introduce newhi erarchical models based on a hybrid structure which combines a spatial grid of a reduced size at the coarsest level with sub-trees appended below it, down to the finest level. These models circumvent the algorithmic drawbacks of grid-based models (computational load and/or great dependance on the initialization) and the modeling drawbacks of tree-based approaches (cumbersome and somehowa rtificial structure). The hybrid structure leads to algorithms that mix a non-iterative inference on sub-trees with an iterative deterministic inference at the top of the structure. Experiments on synthetic images demonstrate the gains provided in terms of both computational efficiency and quality of results. Then experiments on real satellite spot images illustrate the ability of hybrid models to perform efficiently the multispectral image analysis.