Efficient planar graph cuts with applications in Computer Vision

Frank R. Schmidt, Eno Töppe, D. Cremers
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引用次数: 83

Abstract

We present a fast graph cut algorithm for planar graphs. It is based on the graph theoretical work and leads to an efficient method that we apply on shape matching and image segmentation. In contrast to currently used methods in computer vision, the presented approach provides an upper bound for its runtime behavior that is almost linear. In particular, we are able to match two different planar shapes of N points in O(N2 log N) and segment a given image of N pixels in O(N log N). We present two experimental benchmark studies which demonstrate that the presented method is also in practice faster than previously proposed graph cut methods: On planar shape matching and image segmentation we observe a speed-up of an order of magnitude, depending on resolution.
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高效平面图形切割及其在计算机视觉中的应用
提出了一种用于平面图形的快速图切算法。它是在图理论工作的基础上提出的一种有效的形状匹配和图像分割方法。与目前使用的计算机视觉方法相比,该方法为其运行时行为提供了一个几乎线性的上界。特别是,我们能够在O(N2 log N)内匹配N个点的两个不同平面形状,并在O(N log N)内分割给定图像的N个像素。我们提出了两个实验基准研究,表明所提出的方法在实践中也比以前提出的图切方法更快:在平面形状匹配和图像分割上,我们观察到速度提高了一个数量级,这取决于分辨率。
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