Removing label ambiguity in learning-based visual saliency estimation
Visual saliency is a useful clue to depict visually important image/video contents in many multimedia applications. In visual saliency estimation, a feasible solution is to learn a “feature-saliency” mapping model from the user data obtained by manually labeling activities or eye-tracking devices. H...
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sg-ntu-dr.10356-990202020-05-28T07:18:48Z Removing label ambiguity in learning-based visual saliency estimation Li, Jia Xu, Dong Gao, Wen School of Computer Engineering DRNTU::Engineering::Computer science and engineering::Computing methodologies::Image processing and computer vision Visual saliency is a useful clue to depict visually important image/video contents in many multimedia applications. In visual saliency estimation, a feasible solution is to learn a “feature-saliency” mapping model from the user data obtained by manually labeling activities or eye-tracking devices. However, label ambiguities may also arise due to the inaccurate and inadequate user data. To process the noisy training data, we propose a multi-instance learning to rank approach for visual saliency estimation. In our approach, the correlations between various image patches are incorporated into an ordinal regression framework. By iteratively refining a ranking model and relabeling the image patches with respect to their mutual correlations, the label ambiguities can be effectively removed from the training data. Consequently, visual saliency can be effectively estimated by the ranking model, which can pop out real targets and suppress real distractors. Extensive experiments on two public image data sets show that our approach outperforms 11 state-of-the-art methods remarkably in visual saliency estimation. 2013-09-13T08:19:19Z 2019-12-06T20:02:23Z 2013-09-13T08:19:19Z 2019-12-06T20:02:23Z 2011 2011 Journal Article Li, J., Xu, D., & Gao, W. (2011). Removing label ambiguity in learning-based visual saliency estimation. IEEE transactions on image processing, 21(4), 1513-1525. 1057-7149 https://hdl.handle.net/10356/99020 http://hdl.handle.net/10220/13473 10.1109/TIP.2011.2179665 en IEEE transactions on image processing © 2011 IEEE |
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DRNTU::Engineering::Computer science and engineering::Computing methodologies::Image processing and computer vision Li, Jia Xu, Dong Gao, Wen Removing label ambiguity in learning-based visual saliency estimation |
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Visual saliency is a useful clue to depict visually important image/video contents in many multimedia applications. In visual saliency estimation, a feasible solution is to learn a “feature-saliency” mapping model from the user data obtained by manually labeling activities or eye-tracking devices. However, label ambiguities may also arise due to the inaccurate and inadequate user data. To process the noisy training data, we propose a multi-instance learning to rank approach for visual saliency estimation. In our approach, the correlations between various image patches are incorporated into an ordinal regression framework. By iteratively refining a ranking model and relabeling the image patches with respect to their mutual correlations, the label ambiguities can be effectively removed from the training data. Consequently, visual saliency can be effectively estimated by the ranking model, which can pop out real targets and suppress real distractors. Extensive experiments on two public image data sets show that our approach outperforms 11 state-of-the-art methods remarkably in visual saliency estimation. |
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School of Computer Engineering |
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School of Computer Engineering Li, Jia Xu, Dong Gao, Wen |
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Article |
author |
Li, Jia Xu, Dong Gao, Wen |
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Li, Jia |
title |
Removing label ambiguity in learning-based visual saliency estimation |
title_short |
Removing label ambiguity in learning-based visual saliency estimation |
title_full |
Removing label ambiguity in learning-based visual saliency estimation |
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Removing label ambiguity in learning-based visual saliency estimation |
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Removing label ambiguity in learning-based visual saliency estimation |
title_sort |
removing label ambiguity in learning-based visual saliency estimation |
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2013 |
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https://hdl.handle.net/10356/99020 http://hdl.handle.net/10220/13473 |
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1681057480867577856 |