Content Based Image Retrieval by Using Interactive Relevance Feedback Technique - A Survey

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Sakshi Shivhare, Vijay Trivedi, Vineet Richhariya

Abstract

Due to rapid increase in storing and capturing multimedia data with the digital device, Content Based Image Retrieval play a very important role in the field of image processing. Although wide ranging studies have been done in the field of CBIR but image finding from multimedia data basis is still very complicated and open problem. If paper provide an review of CBIR based on some of the famous techniques such as Interactive Genetic Algorithm, Relevance Feedback (RS), Neural Network and so on. Relevance Feedback can be used to enhance the ability of CBIR effectively by dropping the semantic gap between low level feature and high level feature. Interactiveness on CBIR can also be done with the help of Genetic Algorithms. GA is the branch of evolutionary computation which makes the retrieval process more interactive so that user can get advanced results from database by comparing to Query Image with its evaluation. The result of traditional implicit feedback can also be improved by Neuro Fuzzy Logic based implicit feedback. This paper covers all the aspect of Relevance Feedback (RF), Interactive Genetic Algorithms, Neural Network in Content Based Image Retrieval, various RF techniques and applications of CBIR.
DOI: 10.17762/ijritcc2321-8169.150759

Article Details

How to Cite
, S. S. V. T. V. R. (2015). Content Based Image Retrieval by Using Interactive Relevance Feedback Technique - A Survey. International Journal on Recent and Innovation Trends in Computing and Communication, 3(7), 4641–4645. https://doi.org/10.17762/ijritcc.v3i7.4707
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