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A new matching strategy for content based image retrieval system
Affiliation:1. Center for Open Middleware, Universidad Politécnica de Madrid, Campus de Montegancedo, 28223 Pozuelo de Alarcón, Madrid, Spain;2. Dpto. Ingeniería del Software e Inteligencia Artificial, Universidad Complutense de Madrid, C/Profesor José García Santesmases, s/n, 28040 Madrid, Spain;1. Department of Computer Science and Engineering, National Institute of Technology, Tiruchirappalli, India;2. Department of Computer Science, St. Aloysius Degree College and Post Graduate Studies, Bangalore, India;1. Faculty of Information Technology and Communication, Tampere University, Finland;2. Department of Engineering, Aarhus University, Denmark;3. Department of Informatics, Aristotle University of Thessaloniki, Greece
Abstract:Adopting effective model to access the desired images is essential nowadays with the presence of a huge amount of digital images. The present paper introduces an accurate and rapid model for content based image retrieval process depending on a new matching strategy. The proposed model is composed of four major phases namely: features extraction, dimensionality reduction, ANN classifier and matching strategy. As for the feature extraction phase, it extracts a color and texture features, respectively, called color co-occurrence matrix (CCM) and difference between pixels of scan pattern (DBPSP). However, integrating multiple features can overcome the problems of single feature, but the system works slowly mainly because of the high dimensionality of the feature space. Therefore, the dimensionality reduction technique selects the effective features that jointly have the largest dependency on the target class and minimal redundancy among themselves. Consequently, these features reduce the calculation work and the computation time in the retrieval process. The artificial neural network (ANN) in our proposed model serves as a classifier so that the selected features of query image are the input and its output is one of the multi classes that have the largest similarity to the query image. In addition, the proposed model presents an effective feature matching strategy that depends on the idea of the minimum area between two vectors to compute the similarity value between a query image and the images in the determined class. Finally, the results presented in this paper demonstrate that the proposed model provides accurate retrieval results and achieve improvement in performance with significantly less computation time compared with other models.
Keywords:Content-based image retrieval  Color co-occurrence matrix  Dimensionality reduction  Artificial neural networks  Similarity measure
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