基于流形排序的显著性估计核传播

Meng Jian, Lifang Wu, Xiangyin Zhang, Yonghao He
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引用次数: 2

摘要

由于显著性估计在几乎所有与视觉相关的问题中得到了广泛而成功的应用,因此成为了一个热门的研究课题。然而,由于视觉内容的复杂性和需求的多样性,显著性估计技术还远远不能令人满意。本文提出了一种基于流形排序的核传播(MRKP)视觉显著性估计方法。MRKP开始对背景种子进行处理,分别在四个图像边界上进行流形排序,并选择具有代表性的显著种子。用边界背景种子和选定的显著种子形成必须连接和不能连接的成对约束。然后,在MRKP中依次进行两两约束引导的显著性种子核学习和显著性核传播来估计图像的视觉显著性。实验结果表明,所提出的MRKP具有良好的学习判别核结构的显著性估计能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Manifold ranking-based kernel propagation for saliency estimation
Saliency estimation becomes a hot research topic due to its wide and successful application in almost all vision related problems. However, it is still far from satisfactory in saliency estimation techniques due to the complex visual content and various requirements. In this paper, we propose a manifold ranking based kernel propagation (MRKP) approach for visual saliency estimation. MRKP begins to work on background seeds for manifold ranking on four image boundaries individually and select representative salient seeds. Pairwise constraints of must-link and cannot-link are formed with the boundary background seeds and selected salient seeds. Then, pairwise constraints guided saliency seed kernel learning and saliency kernel propagation are sequentially conducted in MRKP to estimate visual saliency of images. Experimental results demonstrate that the proposed MRKP has a good ability of learning discriminative kernel structure for saliency estimation.
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