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Random walks in directed hypergraphs and application to semi-supervised image segmentation

机译:有向超图的随机游走及其在半监督图像分割中的应用

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摘要

In this paper, we introduce for the first time the notion of directed hypergraphs in image processing and particularly image segmentation. We give a formulation of a random walk in a directed hypergraph that serves as a basis to a semi-supervised image segmentation procedure that is configured as a machine learning problem, where a few sample pixels are used to estimate the labels of the unlabeled ones. A directed hypergraph model is proposed to represent the image content, and the directed random walk formulation allows to compute a transition matrix that can be exploited in a simple iterative semi-supervised segmentation process. Experiments over the Microsoft GrabCut dataset have achieved results that demonstrated the relevance of introducing directionality in hypergraphs for computer vision problems.
机译:在本文中,我们首次介绍了有向超图在图像处理特别是图像分割中的概念。我们给出了有向超图中的随机游走的公式,该图作为配置为机器学习问题的半监督图像分割过程的基础,其中一些样本像素用于估计未标记像素的标记。提出了有向超图模型来表示图像内容,有向随机游走公式允许计算可在简单的迭代半监督分割过程中利用的过渡矩阵。在Microsoft GrabCut数据集上进行的实验已获得结果,证明了在超图中引入方向性对于计算机视觉问题的相关性。

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