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An Improvement Method of Kd-Tree Using k-Means and k-NN for Semantic-Based Image Retrieval System

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Information Systems and Technologies (WorldCIST 2022)

Part of the book series: Lecture Notes in Networks and Systems ((LNNS,volume 469))

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Abstract

In this paper, an improved method of KD-Tree using k-Means and k-NN is proposed and applied to a semantic-based image retrieval system. Firstly, the image data is clustered by the k-Means algorithm at each layer on KD-Tree. Secondly, a process of image classification according to the k-NN algorithm is conducted at leaf nodes. So, an algorithm of KD-Tree construction based on the k-Means and k-NN is implemented. Each query image is extracted to a feature vector and performed image classification on KD-Tree. Then, a SPARQL query is created to retrieve a set of similar images by semantics on ontology. Based on this theory, a model of semantic-based image retrieval is proposed. The experiment is performed on Wang, Caltech101, and Caltech256 data sets. The experiment results are compared with the published works on the same data set to demonstrate the efficiency of our proposed method.

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Acknowledgment

The authors would like to thank the Faculty of Information Technology, University of Science - Hue University for their professional advice for this study. We would also like to thank HCMC University of Food Industry, University of Education, and research group SBIR-HCM, which are sponsors of this research. We also thank anonymous reviewers for their helpful comments on this article.

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Correspondence to Thanh The Van .

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Dinh, N.T., Le, T.M., Van, T.T. (2022). An Improvement Method of Kd-Tree Using k-Means and k-NN for Semantic-Based Image Retrieval System. In: Rocha, A., Adeli, H., Dzemyda, G., Moreira, F. (eds) Information Systems and Technologies. WorldCIST 2022. Lecture Notes in Networks and Systems, vol 469. Springer, Cham. https://doi.org/10.1007/978-3-031-04819-7_19

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