Stochastic image segmentation by typical cuts

Yoram Gdalyahu, D. Weinshall, M. Werman
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引用次数: 55

Abstract

We present a stochastic clustering algorithm which uses pairwise similarity of elements, based on a new graph theoretical algorithm for the sampling of cuts in graphs. The stochastic nature of our method makes it robust against noise, including accidental edges and small spurious clusters. We demonstrate the robustness and superiority of our method for image segmentation on a few synthetic examples where other recently proposed methods (such as normalized-cut) fail. In addition, the complexity of our method is lower. We describe experiments with real images showing good segmentation results.
基于典型切割的随机图像分割
基于一种新的图理论算法,提出了一种利用元素两两相似度的随机聚类算法。我们的方法的随机特性使它对噪声具有鲁棒性,包括偶然的边缘和小的伪簇。我们在几个合成示例上证明了我们的图像分割方法的鲁棒性和优越性,而其他最近提出的方法(如归一化切割)都失败了。此外,我们的方法的复杂性较低。我们描述了真实图像的实验,显示出良好的分割效果。
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