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Color Image Segmentation Using Markov Random Field Models

Color Image Segmentation Using Markov Random Field Models

von Pradipta Kumar Nanda und Sucheta Panda
Softcover - 9786139832781
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Beschreibung

This book focuses on a prime research area in Image Processing i.e. Color Image Segmentation. We have used Stochastic Models more particularly Markov Random Field (MRF) models for the problem of Color Image Segmentation. In order to improve the efficiency of the color model, the notion of controlled correlation among different color planes has been introduced and hence a new MRF model called Compound MRF (COMRF) model has been proposed. The controlled correlation feature has been achieved by controlling the associated MRF model parameter . This notion proved to be effective in modeling color images. In order to model both color texture and scene images, a unifying MRF model called Constrained MRF (CMRF) model has been proposed. The constrained condition has been used to develop Constrained Compound MRF (CCOMRF) model and Double Constrained Compound MRF (DCCOMRF) model. The efficacy of these models have been tested with color image segmentation and it has been found that DCCOMRF model proved to be best for modeling color texture and scene images. The segmentation problem is cast as a pixel labeling problem and the pixel label estimation problem has been formulated using MAP.

Details

Verlag LAP LAMBERT Academic Publishing
Ersterscheinung 12. Mai 2018
Maße 22 cm x 15 cm x 1.4 cm
Gewicht 334 Gramm
Format Softcover
ISBN-13 9786139832781
Seiten 212

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