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Visual Attention Guided Multi-scale Boundary Detection In Natural Images For Contour Grouping

机译:视觉注意引导的自然图像轮廓轮廓分组多尺度边界检测

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摘要

Boundary detection is one of the most studied problems in computer vision. It is the foundation of contour grouping, and initially affects the performance of grouping algorithms. In this paper we propose a novel boundary detection algorithm for contour grouping, which is a selective attention guided coarse-to-fine scale pyramid model. Our algorithm evaluates each edge instead of each pixel location, which is different from others and suitable for contour grouping. Selective attention focuses on the whole saliency objects instead of local details, and gives global spatial prior for boundary existence of objects. The evolving process of edges through the coarsest scale to the finest scale reflects the importance and energy of edges. The combination of these two cues produces the most saliency boundaries. We show applications for boundary detection on natural images. We also test our approach on the Berkeley dataset and use it for contour grouping. The results obtained are pretty good.
机译:边界检测是计算机视觉中研究最多的问题之一。它是轮廓分组的基础,最初会影响分组算法的性能。在本文中,我们提出了一种用于轮廓分组的新颖的边界检测算法,这是一种选择性注意引导的粗到细比例金字塔模型。我们的算法评估每个边缘而不是每个像素位置,这与其他像素不同并且适合轮廓分组。选择性注意的重点是整个显着性对象,而不是局部细节,并为对象的边界存在提供全局空间先验。边缘从最粗尺度到最细尺度的演变过程反映了边缘的重要性和能量。这两个线索的组合产生了最显着的边界。我们展示了自然图像边界检测的应用。我们还将在伯克利数据集上测试我们的方法,并将其用于轮廓分组。获得的结果非常好。

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