Category-Independent Object-Level Saliency Detection

Yangqing Jia, Mei Han
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引用次数: 133

Abstract

It is known that purely low-level saliency cues such as frequency does not lead to a good salient object detection result, requiring high-level knowledge to be adopted for successful discovery of task-independent salient objects. In this paper, we propose an efficient way to combine such high-level saliency priors and low-level appearance models. We obtain the high-level saliency prior with the objectness algorithm to find potential object candidates without the need of category information, and then enforce the consistency among the salient regions using a Gaussian MRF with the weights scaled by diverse density that emphasizes the influence of potential foreground pixels. Our model obtains saliency maps that assign high scores for the whole salient object, and achieves state-of-the-art performance on benchmark datasets covering various foreground statistics.
类别无关的对象级显著性检测
众所周知,纯粹的低水平显著性线索(如频率)并不能带来良好的显著性对象检测结果,需要采用高水平的知识才能成功发现与任务无关的显著性对象。在本文中,我们提出了一种有效的方法来结合这些高级显着先验和低级外观模型。在不需要类别信息的情况下,通过对象性算法获得高水平的显著性先验来寻找潜在的候选对象,然后使用高斯MRF增强显著区域之间的一致性,该MRF的权重按不同密度缩放,强调潜在前景像素的影响。我们的模型获得了为整个显著性对象分配高分的显著性图,并在涵盖各种前景统计的基准数据集上实现了最先进的性能。
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