Publication Type : Conference Paper
Publisher : Proceedings of 2nd International Conference On Computational Vision and Bio Inspired Computing .
Source : Proceedings of 2nd International Conference On Computational Vision and Bio Inspired Computing (2018)
Campus : Bengaluru
School : School of Business
Department : Business
Year : 2018
Abstract : An image retrieval framework that integrates efficient region-based representation in terms of storage and complexity and effective on-line learning capability is proposed. The framework consists of methods for region-based image representation and comparison, indexing using modified inverted files, relevance feedback, and learning region weighting. By exploiting a vector quantization method, both compact and sparse (vector) region-based image representations are achieved. Using the compact representation, an indexing scheme similar to the inverted file technology and an image similarity measure based on Earth Mover's Distance are presented. Moreover, the vector representation facilitates a weighted query point movement algorithm and the compact representation enables a classification-based algorithm for relevance feedback. Based on users' feedback information, a region weighting strategy is also introduced to optimally weight the regions and enable the system to self-improve. Experimental results on a database of 10 000 general-purposed images demonstrate the efficiency and effectiveness of the proposed framework.
Cite this Research Publication : K. S. Gautam, Parameswaran, L., and Thangavel, S. Kumar, “A Cascade Color Image Retrieval Framework for Image Retrieval”, in Proceedings of 2nd International Conference On Computational Vision and Bio Inspired Computing, 2018.