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Implementation of Content Based Image Retrieval System based on Morphological Statistics

Mr.Hemraj Patel, Prof. Pritesh Jain

Abstract


Our proposed gadget has the gain of increasing the retrieval accuracy and decreasing the retrieval time. The experimental evaluation of the gadget is based on a thousand WANG coloration picture database. From the experimental consequences, it's miles evident that our device plays substantially better and faster in comparison with other present structures. In our simulation analysis, it provided an assessment among retrieval effects based on features extracted from the complete photograph, and functions extracted from some image regions. The cost demonstrate that every type of function is powerful for a specific sort of photographs in keeping with its semantic contents, and the usage of a aggregate of them gives better retrieval results for almost all semantic instructions.


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References


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