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Type: Artigo de evento
Title: Unsupervised Distance Learning By Reciprocal Knn Distance For Image Retrieval
Author: Pedronette D.C.G.
Penatti O.A.B.
Calumby R.T.
Da S. Torres R.
Abstract: This paper presents a novel unsupervised learning approach that takes into account the intrinsic dataset structure, which is represented in terms of the reciprocal neighborhood references found in different ranked lists. The proposed Reciprocal kNN Distance defines a more effective distance between two images, and is used to improve the effectiveness of image retrieval systems. Several experiments were conducted for different image retrieval tasks involving shape, color, and texture descriptors. The proposed approach is also evaluated on multimodal retrieval tasks, considering visual and textual descriptors. Experimental results demonstrate the effectiveness of proposed approach. The Reciprocal kNN Distance yields better results in terms of effectiveness than various state-of-the-art algorithms. Copyright © 2014 ACM.
Editor: Association for Computing Machinery
Citation: Icmr 2014 - Proceedings Of The Acm International Conference On Multimedia Retrieval 2014. Association For Computing Machinery, v. , n. , p. 345 - 352, 2014.
Rights: fechado
Identifier DOI: 10.1145/2578726.2578770
Date Issue: 2014
Appears in Collections:Unicamp - Artigos e Outros Documentos

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