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基于凸包改进的流行排序显著性检测

Saliency Detection Based on Improved Manifold Ranking via Convex Hull

  • 摘要: 针对传统的基于图的流行排序显著性检测算法仅仅依赖边界背景先验显著图来提取前景种子,影响最后的排序结果,使得显著性检测结果较差的问题,提出结合凸包提取更精确的前景种子进行流行排序的算法.首先提取图像边界结点作为背景种子进行流行排序得到背景估计显著图,并将该显著图二值化得到粗略的前景区域;然后通过颜色增强的Harris角点检测算法获得图像角点,并用其构造粗略包含显著目标的凸包;最后将凸包和前景区域相结合提取更精确的前景种子进行流行排序得到最后的显著图.在3个公开的图像数据集上,与其他经典算法相比,该算法在PR曲线、MAE值和F-measure上均获得了提升.

     

    Abstract: Aiming at the issue that traditional saliency detection algorithm via graph-based manifold ranking only relies on the boundary background prior saliency map to extract foreground seeds, affects the final ranking result, and makes saliency map worse, this paper proposes an algorithm that obtains more accurate foreground seeds to make manifold ranking by combining convex hull. First, a background saliency map is obtained by manifold ranking utilizing boundary nodes as background seeds, then a foreground region is got by a binary segmentation of the saliency map. Second, convex hull roughly containing saliency objects is constructed by Harris corner with color boosting of the input image. Finally, saliency map is computed by using manifold ranking algorithm, whose foreground seeds are from the combination of convex hull and foreground region. Experiment results show that the proposed algorithm gains improvement compared with some other classic algorithms in terms of PR curves, MAE values and F-measure on three public datasets.

     

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