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Computer Optics, 2019, Volume 43, Issue 2, Pages 264–269
DOI: https://doi.org/10.18287/2412-6179-2019-43-2-264-269
(Mi co644)
 

This article is cited in 2 scientific papers (total in 2 papers)

IMAGE PROCESSING, PATTERN RECOGNITION

Unsupervised color texture segmentation based on multi-scale region-level Markov random field models

X. Songabc, L. Wua, G. Liuabc

a School of Computer and Information Engineering, Anyang Normal University, Anyang 455000, Henan, China
b Collaborative Innovation Center of International Dissemination of Chinese Language Henan Province, Anyang, Henan, China
c Henan Key Laboratory of Oracle Bone Inscriptions Information Processing, Anyang, Henan, China
Full-text PDF (994 kB) Citations (2)
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Abstract: In the field of color texture segmentation, region-level Markov random field model (RMRF) has become a focal problem because of its efficiency in modeling the large-range spatial constraints. However, the RMRF defined on a single scale cannot describe the un-stationary essence of the image, which highly limits its robustness. Hence, by combining wavelet transformation and the RMRF model, we present a multi-scale RMRF (MsRMRF) model in wavelet domainin this paper. In the Bayesian framework, the proposed model seamlessly integrates the multi-scale information stemmed from both the original image and the region-level spatial constraints. Therefore, the new model can accurately describe the characteristics of different kinds of texture. Based on MsRMRF, an unsupervised segmentation algorithm is designed for segmenting color texture images. Both synthetic color texture images and remote sensing images are employed in the comparative experiments, and the experimental results show that the proposed method can obtain more accurate segmentation results than the competitors.
Keywords: region-level Markov random field model, color texture image, image segmentation, wavelet transformation, multi-scale.
Funding agency Grant number
Projects of Henan 15210241004
Projects of Henan Educational Department of China 16A520036
Henan Educational Department of China 16B520001
National Natural Science Foundation of China 41001251
Research and Cultivation Fund Project of Anyang Normal University AYNU-KP-B08
This work was financially supported by the Key Technology Projects of Henan province of China under Grant 15210241004, Supported by Program for Changjiang Scholars and Innovative Research Team in University, the Key Technology Projects of Henan Educational Department of China under Grant 16A520036, the Key Technology Projects of Henan Educational Department of China under Grant 16B520001,the National Natural Science Foundation of China under Grant 41001251, Anyang science and technology plan project: Researches on Road Extraction Algorithm based on MRF for High Resolution Remote Sensing Image, and the Research and Cultivation Fund Project of Anyang Normal University under Grant AYNU-KP-B08.
Received: 24.07.2018
Accepted: 10.12.2018
Document Type: Article
Language: English
Citation: X. Song, L. Wu, G. Liu, “Unsupervised color texture segmentation based on multi-scale region-level Markov random field models”, Computer Optics, 43:2 (2019), 264–269
Citation in format AMSBIB
\Bibitem{SonWuLiu19}
\by X.~Song, L.~Wu, G.~Liu
\paper Unsupervised color texture segmentation based on multi-scale region-level Markov random field models
\jour Computer Optics
\yr 2019
\vol 43
\issue 2
\pages 264--269
\mathnet{http://mi.mathnet.ru/co644}
\crossref{https://doi.org/10.18287/2412-6179-2019-43-2-264-269}
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  • This publication is cited in the following 2 articles:
    Citing articles in Google Scholar: Russian citations, English citations
    Related articles in Google Scholar: Russian articles, English articles
    Computer Optics
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