Clustering and Labeling of Images under Web Content Mining
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Abstract
In internet images plays vital role for users. Everyday numbers of users are trying to access and manipulating the images very
efficiently. From web we can see images in variety of formats. Depends upon the user requirements the request may fulfilled. This paper focuses
the overview of clustering of images and giving annotation for specific images which makes more benefit to users who are really in need.
Keywords: clustering, labeling, mining
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