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Large margin learning of hierarchical semantic similarity for image classification

Authors :
Kyoung Mu Lee
Ju Yong Chang
Source :
Computer Vision and Image Understanding. 132:3-11
Publication Year :
2015
Publisher :
Elsevier BV, 2015.

Abstract

Novel large margin formulation for semantic similarity learning.Efficient optimization algorithm to solve the proposed semi-definite program (SDP).Thorough experimental study to compare the performances of several algorithms for hierarchical image classification.State-of-the-art classification performance under the hierarchical-loss criterion. In the present paper, a novel image classification method that uses the hierarchical structure of categories to produce more semantic prediction is presented. This implies that our algorithm may not yield a correct prediction, but the result is likely to be semantically close to the right category. Therefore, the proposed method is able to provide a more informative classification result. The main idea of our method is twofold. First, it uses semantic representation, instead of low-level image features, enabling the construction of high-level constraints that exploit the relationship among semantic concepts in the category hierarchy. Second, from such constraints, an optimization problem is formulated to learn a semantic similarity function in a large-margin framework. This similarity function is then used to classify test images. Experimental results demonstrate that our method provides effective classification results for various real-image datasets.

Details

ISSN :
10773142
Volume :
132
Database :
OpenAIRE
Journal :
Computer Vision and Image Understanding
Accession number :
edsair.doi...........ac08f77409a891cd0e2f0dd67c353b0e