An Efficient Perceptual of Content Based Image Retrieval System Using SVM and Evolutionary Algorithms

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Dr. M. Ekambaram Naidu, Ravi Kumar Chandu

Abstract

The CBIR tends to index and retrieve images based on their visual content. CBIR avoids several issues related to traditional ways that of retrieving images by keywords. Thus, a growing interest within the area of CBIR has been established in recent years. The performance of a CBIR system mainly depends on the particular image representation and similarity matching operate utilized. The CBIR tends to index and retrieve images supported their visual content. CBIR avoids several issues related to traditional ways that of retrieving images by keywords. Thus, a growing interest within the area of CBIR has been established in recent years. The performance of a CBIR system principally depends on the actual image illustration and similarity matching operate utilized. therefore a replacement CBIR system is projected which can give accurate results as compared to previously developed systems. This introduces the new composite framework for image classification in a content-based image retrieval system. The projected composite framework uses an evolutionary algorithm to select training samples for support vector machine (SVM). to style such a system, the most popular techniques of content-based image retrieval are reviewed initial. Our review reveals some limitations of the existing techniques, preventing them to accurately address some issues.

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How to Cite
, D. M. E. N. R. K. C. (2017). An Efficient Perceptual of Content Based Image Retrieval System Using SVM and Evolutionary Algorithms. International Journal on Future Revolution in Computer Science &Amp; Communication Engineering, 3(11), 272–278. Retrieved from http://www.ijfrcsce.org/index.php/ijfrcsce/article/view/301
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