Prior fusion based salient object detection

Bo Fu, Y. Jin, Fan Wang, Xiaopeng Hu
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引用次数: 2

Abstract

Object level saliency detection is useful for many content-based computer vision tasks. In this letter, we present a novel bottom-up salient object detection approach by exploiting contrast, and center priors. In the past, the algorithms of saliency detection are generally based on the contrast of the priors, but only using a prior that there are still many problems, if not uniformly outstanding goals. Currently, a lot of work introduce center prior to significant target detection. However, the center prior is very sensitive to the position of the target that once deviation from the center, the center prior will no longer be established. In this paper, we explore the surroundedness cue for saliency detection. The essence of surroundedness is the enclosure topological relationship between the figure and the ground, which is achieved by random threshold color channel of the image. in order to enhance robustness and effectiveness of the center prior. Then fusion contrast prior and new center prior to generate a new saliency map.
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基于先验融合的显著目标检测
对象级显著性检测对于许多基于内容的计算机视觉任务非常有用。在这封信中,我们提出了一种新的自下而上的显著目标检测方法,利用对比度和中心先验。以往的显著性检测算法一般都是基于先验的对比,但仅使用先验仍然存在许多问题,如果不能统一突出目标。目前,很多工作都是在重要目标检测之前引入中心。然而,中心先验对目标的位置非常敏感,一旦偏离中心,中心先验将不再成立。在本文中,我们探讨了显著性检测的包围性线索。包围性的本质是图形与地面之间的封闭拓扑关系,它是通过图像的随机阈值颜色通道来实现的。为了增强中心先验的鲁棒性和有效性。然后融合对比度先验和新的中心先验,生成新的显著性图。
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