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Topological Framework for Digital Image Analysis with Extended Interior and Closure Operators

The focus of this research is the extension of topological operators with the addition
of a inclusion measure. This extension is carried out in both crisp and fuzzy topological
spaces. The mathematical properties of the new operators are discussed and compared with
traditional operators. Ignoring small errors due to imperfections and noise in digital images
is the main motivation in introducing the proposed operators. To show the effectiveness of
the new operators, we demonstrate their utility in image database classification and shape
classification. Each image (shape) category is modeled with a topological space and the
interior of the query image is obtained with respect to different topologies. This novel way
of looking at the image categories and classifying a query image shows some promising
results. Moreover, the proposed interior and closure operators with inclusion degree is
utilized in mathematical morphology area. The morphological operators with inclusion
degree outperform traditional morphology in noise removal and edge detection in a noisy
environment

Identiferoai:union.ndltd.org:MANITOBA/oai:mspace.lib.umanitoba.ca:1993/9145
Date25 September 2012
CreatorsFashandi, Homa
ContributorsPeters, James (Electrical and Computer Engineering), Pawlak, Miroslaw (Electrical and Computer Engineering) Yahampath, Pradeepa (Electrical and Computer Engineering) Pistorius, Stephen (Physics and Astronomy) Jain,Lakhmi C.(University of South Australia)
Source SetsUniversity of Manitoba Canada
Detected LanguageEnglish

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