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Interactive Image Segmentation Based on Label Pair Diffusion

机译:基于标签对扩散的交互式图像分割

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摘要

This article explores the relationships between image element pairs and label pairs and extends label diffusion to label pair diffusion for the interactive image segmentation task. Compared with label diffusion, more accurate relationships between unlabeled and labeled data can be captured on a tensor product graph (TPG) by using higher order information, and more complex interactions among image elements and finer relationships between image element pairs and label pairs are explored in label pair diffusion (LPD) process. We first establish a prior label estimation framework to measure the label pair prior probability. Then, a probability learning process on TPG is designed to smooth the label prior. The learning process is equivalent to an iterative LPD process on the original graph, which makes the proposed algorithm maintain computational efficiency. Finally, the unary label probabilities can be obtained by a total-probability-theorem-based conversion from the binary relationships. Experiments on popular segmentation data sets demonstrate the superior performance of the proposed method.
机译:本文探讨了图像元素对和标签对之间的关​​系,并扩展了标签扩散,以标记交互式图像分割任务的标记对扩散。与标签扩散相比,通过使用更高的订单信息,可以在张量产品图(TPG)上捕获未标记和标记数据之间的更准确的关系,并且探讨了图像元素对与标签对之间的图像元素和更精细的关系之间的更复杂的相互作用标签对扩散(LPD)工艺。我们首先建立一个先前的标签估计框架来测量标签对先前概率。然后,TPG上的概率学习过程旨在先前平滑标签。学习过程相当于原始图上的迭代LPD过程,这使得提出的算法维持计算效率。最后,可以通过与二进制关系的总概率定理的转换来获得一元标签概率。流行分割数据集的实验证明了所提出的方法的卓越性能。

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