Measuring the nearness of layered flow graphs: Application to Content Based Image Retrieval
Metadata
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Kaur, Kanwarpreet
Ramanna, Sheela
Henry, Christopher
Date
2016-03-01Citation
Kaur, Kanwarpreet, Sheela Ramanna, and Christopher Henry. "Measuring the nearness of layered flow graphs: Application to Content Based Image Retrieval." Intelligent Decision Technologies 10(2) (February 2016):165-181. DOI: 10.3233/IDT-150246.
Abstract
Rough set based flow graphs represent the flow of information for a given data set where
branches of these could be constructed as decision rules. However, in the recent years, the
concept of flow graphs has been applied to perceptual systems (also called perceptual flow
graphs) where they play a vital role in determining the nearness among disjoint sets of perceptual objects. Perceptual flow graphs were first introduced to represent and reason about sufficiently near visual points in images. In this paper, we have given a practical implementation of flow graphs induced by a perceptual system, defined with respect to digital images, to perform Content-Based Image Retrieval(CBIR). Results are generated using the SIMPLicity dataset, and our results are compared with the near-set based tolerance nearness measure(tNM).