Modified cuckoo search algorithm: Feature subset selection &Shape,Color and Texture Features Descriptors for Content-Based Image Retrieval

Authors

Mrs.K.Radha
Assistant Professor, Department of computer science and engineering, Vivekanandha College of Technology for women, Elayampalayam, Tiruchengode, Namakkal – Dt.
Mrs. .R.V.Sudha, Assistant Professor
Department of Information Technology, Vivekanandha College of Technology for women Elayampalayam, Tiruchengode, Namakkal – Dt.
Mrs.M.Meena, Assistant Professor
Department of Information Technology, Vivekanandha College of Technology for women Elayampalayam, Tiruchengode, Namakkal – Dt.
Dr.R.Jayavadivel, Associate Professor
Department of Computer Science and Engineering, Vivekanandha College of Engineering for Women, Tiruchengode, Namakkal, Tamilnadu, India. 637205.
S.Kanimozhi, Assistant professor
Department of Information Technology, Mkumarasamy College of Engineering , Thalavapalayam, Karur.
Dr.P.Prabaharan, Associate Professor
Department of computer science and engineering, Vivekanandha College of Technology for women, Elayampalayam, Tiruchengode, Namakkal – Dt.

Abstract

With the recent advances in knowledge, the complication of multimedia has increased expressively and new areas of research have opened up in search of new multimedia content. Content-based image retrieval (CBIR) are used to extract images associated with image queries (IQs) from huge databases. The CBIR schemes accessible at present have limited functionality because they only have a partial number of functions. This document presents an improved cookie detection algorithm with coarse sentences for processing large amounts of data using selected examples. The improved cuckoo detection algorithm mimics the behavior of brood attachment parasites in some cuckoo species, including some birds. Modified cuckoo recognition uses approximate set theory to create a fitness function that takes into account the sum of features and the quality of classification as a small amount. For an image entered as IQ from a database, distance metrics are used to find the appropriate image. This is the central idea of CBIR. The projected CBIR method is labelled and can extract shape features based on the RGB color using the and canny Edge (CED) and neutrosophic clustering algorithm scheme. After YCbCrcolor cut, and the CED to get the features to extract the vascular matrix. The combination of these techniques improves the efficiency of the CBR image recovery infrastructure. In this thesis recursive neural network techniques are used to measure the similarity. In addition, the accuracy of the results is: The recall score is measured to evaluate system performance. The proposed CBIR system provides more precise and accurate values than the complex CBIR system.