A unified framework of predicting binary interestingness of images based on discriminant correlation analysis and multiple kernel learning
Qiang Sun, Liting Wang, Maohui Li, Longtao Zhang, Yuxiang Yang

TL;DR
This paper introduces a unified framework combining discriminant correlation analysis and multiple kernel learning to predict binary image interestingness, improving accuracy and generalization in content-based image retrieval.
Contribution
It proposes a novel integration of DCA and MKL techniques for effective fusion and classification of interestingness cues in images, addressing feature redundancy and heterogeneity.
Findings
Framework outperforms existing methods on public datasets.
Effective fusion of multiple feature sets improves prediction accuracy.
Demonstrates robustness across different feature combinations and interestingness cues.
Abstract
In the modern content-based image retrieval systems, there is an increasingly interest in constructing a computationally effective model to predict the interestingness of images since the measure of image interestingness could improve the human-centered search satisfaction and the user experience in different applications. In this paper, we propose a unified framework to predict the binary interestingness of images based on discriminant correlation analysis (DCA) and multiple kernel learning (MKL) techniques. More specially, on the one hand, to reduce feature redundancy in describing the interestingness cues of images, the DCA or multi-set discriminant correlation analysis (MDCA) technique is adopted to fuse multiple feature sets of the same type for individual cues by taking into account the class structure among the samples involved to describe the three classical interestingness…
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Taxonomy
TopicsImage Retrieval and Classification Techniques · Visual Attention and Saliency Detection · Image Processing Techniques and Applications
