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dc.contributor.authorKanungo, P-
dc.contributor.authorNanda, P K-
dc.contributor.authorGhosh, A-
dc.identifier.citationElectronic Letters on Computer Vision and Image Analysis Vol 6, Iss 3, P 42-54en
dc.descriptionCopyright for this article belongs to CVC pressen
dc.description.abstractIn this paper, two novel strategies have been proposed to obtain segmentation of an object and background in a given scene. The rst one, known as Featureless(FL) approach, deals with the histogram of the original image where Parallel Genetic Algorithm (PGA) based clustering notion is used to determine the optimal threshold from the discrete nature of the histogram distribution. In this regard, we have proposed a new interconnection model for PGA. The second scheme, the Featured Based(FB) approach, is based on the proposed featured histogram distribution. A feature from the given image is extracted and the histogram corresponding to the derived feature pixels is used to determine the optimal threshold for the original image. The proposed PGA based clustering is used to determine the optimal threshold. The performance of both the schemes is compared with that of Otsu's and Kwon's method and FB method is found to be the best among the three techniques.en
dc.format.extent315938 bytes-
dc.publisherCVC Pressen
dc.subjectImage Segmentationen
dc.subjectParallel Genetic Algorithmen
dc.titleClassification of Objects and Background Using Parallel Genetic Algorithm Based Clusteringen
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