CBIR System Based on Optimized Integration of Color and Texture Features

SEEE DIGIBOOK ON ENGINEERING & TECHNOLOGY, VOL. 01, FEB 2018 PP.(282-287)
Abstract– Content Based Image Retrieval (CBIR) is an image retrieval system which uses to retrieve similar images based on visual contents that are present in the images. The visual contents of the image can be known by extracting the features that are presented in the images. Low level features like color, texture and shape features can be extracted from the images and there are various methods available to extract these features. In this paper, the CBIR system is designed by integrating the color and texture features.
Index Terms – Content Based Image Retrieval, Color Features, Texture Features, Feature Extraction, Color Histogram.
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Ezhilarasan.T, S.Kumaresan
Government College of Technology,
Coimbatore, India.
share2ezhil@gmail.com,
sukumaresan@gct.ac.in

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