CAPSULE IMAGE RETRIEVAL USING EDGE BASED ALGORITHMS

Many CBIR systems have been developed, but the problem of retrieving images on the basis of their pixel content remains largely unsolved. Different implementations of CBIR make use of different types of user queries. Query by example is a query technique that involves providing the CBIR system with an example image that it will then base its search upon. A preexisting image may be supplied by the user or chosen from a random set. The user draws a rough approximation of the image they are looking for, for example with blobs of color or general shapes. This query technique removes the difficulties that can arise when trying to describe images with words. Various shape methods have been employed to increase the efficiency of the Image retrieval algorithms. This paper uses capsule image database and similarity measure was verified by using several edge detection techniques.

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