On the Decomposition of Interval-Valued Fuzzy Morphological Operators

被引:0
作者
Tom Mélange
Mike Nachtegael
Peter Sussner
Etienne E. Kerre
机构
[1] Ghent University,Dept. of Appl. Math. and Computer Science, Fuzziness and Uncertainty Modelling Research Unit
[2] University of Campinas,Dept. of Applied Mathematics
来源
Journal of Mathematical Imaging and Vision | 2010年 / 36卷
关键词
Interval-valued fuzzy sets; Mathematical morphology; Decomposition;
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摘要
Interval-valued fuzzy mathematical morphology is an extension of classical fuzzy mathematical morphology, which is in turn one of the extensions of binary morphology to greyscale morphology. The uncertainty that may exist concerning the grey value of a pixel due to technical limitations or bad recording circumstances, is taken into account by mapping the pixels in the image domain onto an interval to which the pixel’s grey value is expected to belong instead of one specific value. Such image representation corresponds to the representation of an interval-valued fuzzy set and thus techniques from interval-valued fuzzy set theory can be applied to extend greyscale mathematical morphology. In this paper, we study the decomposition of the interval-valued fuzzy morphological operators. We investigate in which cases the [α1,α2]-cuts of these operators can be written or approximated in terms of the corresponding binary operators. Such conversion into binary operators results in a reduction of the computation time and is further also theoretically interesting since it provides us a link between interval-valued fuzzy and binary morphology.
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页码:270 / 290
页数:20
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