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Learning Complementary Saliency Priors for Foreground Object Segmentation in Complex Scenes

机译:学习复杂场景中前景对象分割的互补显着性先验

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Object segmentation is widely recognized as one of the most challenging problems in computer vision. One major problem of existing methods is that most of them are vulnerable to the cluttered background. Moreover, human intervention is often required to specify foreground/background priors, which restricts the usage of object segmentation in real-world scenario. To address these problems, we propose a novel approach to learn complementary saliency priors for foreground object segmentation in complex scenes. Different from existing saliency-based segmentation approaches, we propose to learn two complementary saliency maps that reveal the most reliable foreground and background regions. Given such priors, foreground object segmentation is formulated as a binary pixel labelling problem that can be efficiently solved using graph cuts. As such, the confident saliency priors can be utilized to extract the most salient objects and reduce the distraction of cluttered background. Extensive experiments show that our approach outperforms 16 state-of-the-artmethods remarkably on three public image benchmarks.
机译:对象分割被广泛认为是计算机视觉中最具挑战性的问题之一。现有方法的一个主要问题是它们中的大多数易受背景混乱的影响。此外,通常需要人工干预来指定前景/背景先验,这限制了在现实场景中对象分割的使用。为了解决这些问题,我们提出了一种新颖的方法来学习复杂场景中前景对象分割的互补显着性先验。与现有的基于显着性的分割方法不同,我们建议学习两个互补的显着性图,以揭示最可靠的前景和背景区域。给定这样的先验,前景对象分割被公式化为可以使用图割有效解决的二进制像素标记问题。这样,可以利用置信度显着的先验先验来提取最显着的对象并减少混乱背景的干扰。大量的实验表明,我们的方法在三个公共图像基准方面的性能明显优于16种最新方法。

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