COMPARITIVE ANALYSIS OF FLLT AND JSEG
Journal Title: International Journal on Computer Science and Engineering - Year 2010, Vol 2, Issue 8
Abstract
The main key point of preferential image segmentation is to segment object of user interest based on intensities, boundaries and texture and ignoring the remaining portions. It explains the trees of shapes to represent image content. In the tree of shape we use algorithms called as FLLT (Fast Level Line Transform) and JSEG (Jsegmentation). Here both the algorithm are compared and an analysis is done to display the result of objects selected from prior images.
Authors and Affiliations
Ms AKILA VICTOR
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