A novel method for long term learning using cluster merging

dc.contributor.author Renuka Devi, S. M.
dc.contributor.author Bhagavati, Chakravarthy
dc.date.accessioned 2022-03-27T05:54:56Z
dc.date.available 2022-03-27T05:54:56Z
dc.date.issued 2011-12-01
dc.description.abstract A rudimentary problem in CBIR is the semantic gap that exists between the low-level features and high-level semantics as perceived by humans. Relevance Feedback is one solution to bridge this gap. Usually relevant images corresponding to a query form many islands in feature space. Also a query has set of relevant images, and vice-versa an image has many queries. This principle is used in formulating our novel method of Long Term Learning(LTL). Here the islands of relevant images corresponding to a query are tagged with query index. These islands of many queries are merged based on some criteria like overlapping, nearness etc., to obtain overall merged clusters with associated tagged query indices. Given a query, the initial retrieval set is obtained by combination of two schemes, one uses RF log that covers search based on nearby concept images and the other is based on simply the Mahalanobis distance of the query with database images. Experimental results illustrate the potential of proposed method of LTL by cluster merging in initial and as well over the iterations. The efficiency of our method is shown using standard Wang database of 1000 images.
dc.identifier.citation Proceedings of the 5th Indian International Conference on Artificial Intelligence, IICAI 2011
dc.identifier.uri https://dspace.uohyd.ac.in/handle/1/8752
dc.subject Cluster merging
dc.subject Connected component
dc.subject Hausdorff distance
dc.subject Long term learning
dc.subject Short term learning
dc.title A novel method for long term learning using cluster merging
dc.type Conference Proceeding. Conference Paper
dspace.entity.type
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