Context-Guided Diffusion for Label Propagation on Graphs

K. Kim, J. Tompkin, H. Pfister, C. Theobalt
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引用次数: 13

Abstract

Existing approaches for diffusion on graphs, e.g., for label propagation, are mainly focused on isotropic diffusion, which is induced by the commonly-used graph Laplacian regularizer. Inspired by the success of diffusivity tensors for anisotropic diffusion in image processing, we presents anisotropic diffusion on graphs and the corresponding label propagation algorithm. We develop positive definite diffusivity operators on the vector bundles of Riemannian manifolds, and discretize them to diffusivity operators on graphs. This enables us to easily define new robust diffusivity operators which significantly improve semi-supervised learning performance over existing diffusion algorithms.
图上标签传播的上下文引导扩散
现有的图上扩散方法,如标签传播,主要集中在各向同性扩散,这是由常用的图拉普拉斯正则化器诱导的。受扩散张量在图像处理中应用于各向异性扩散的成功启发,我们提出了图上的各向异性扩散及其相应的标签传播算法。在黎曼流形的向量束上建立了正定的扩散算子,并将其离散为图上的扩散算子。这使我们能够轻松定义新的鲁棒扩散算子,这些算子显著提高了现有扩散算法的半监督学习性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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