UNSUPERVISED TEXTURE SEGMENTATION BASED ON MULTISCALE STOCHASTIC MODELING IN WAVELET DOMAIN
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概要
- 論文の詳細を見る
One difficulty of textured image segmentation in the past was the lack of computationally efficient models which can capture statistical regularities of textures over large distances. Recently, to overcome this difficulty, Bayesian approaches capitalizing on computational efficiency of multiscale representations have received attention. Most of previous researches have been based on multiscale stochastic models which use the Gaussian pyramid decomposition as image decomposition scheme. In this paper, motivated by nonredundant directional selectivity and highly discriminative nature of the wavelet representation, we present an unsupervised textured image segmentation algorithm which is based on a multiscale stochastic modeling over the wavelet decomposition of image. For the sake of computational efficiency, versions of the EM algorithm and MAP estimate, which are based on the mean-field decomposition of a posteriori probability, are used for estimating model parameters and the segmented image, respectively.
- 社団法人電子情報通信学会の論文
- 2002-01-11
著者
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Noda Hideki
Kyushu Institute of Technology, Dept. of Systems Design and Informatics
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Noda Hideki
Kyushu Inst. Technol. Iizuka Jpn
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Noda Hideki
Kyushu Institute Of Technology
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Kawaguchi Eiji
Kyushu Institute Of Technology Dent Of Electrical Electronic And Computer Engineering
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Kawaguchi Eiji
Kyushu Institute Of Technology
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Mahdad N.
Communications Research Laboratory
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Kawaguchi Eiji
Communications Research Laboratory
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Shirazi Mahdad
Kyushu Institute of Technology
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