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Graph Laplacian Regularization for Robust Optical Flow Estimation

机译:Graph Laplacian正规化,用于鲁棒光学流量估计

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This paper proposes graph Laplacian regularization for robust estimation of optical flow. First, we analyze the spectral properties of dense graph Laplacians and show that dense graphs achieve a better trade-off between preserving flow discontinuities and filtering noise, compared with the usual Laplacian. Using this analysis, we then propose a robust optical flow estimation method based on Gaussian graph Laplacians. We revisit the framework of iteratively reweighted least-squares from the perspective of graph edge reweighting, and employ the Welsch loss function to preserve flow discontinuities and handle occlusions. Our experiments using the Middlebury and MPI-Sintel optical flow datasets demonstrate the robustness and the efficiency of our proposed approach.
机译:本文提出了用于光流量的鲁棒估计的Laplacian正则化。首先,与通常的拉普拉斯相比,我们分析了密集图拉普拉斯人的光谱特性,并表明密集图在保持流量不连续性和过滤噪声之间实现更好的权衡。使用此分析,我们提出了一种基于高斯图拉普拉斯的鲁棒光学流估计方法。我们从图形边缘重新传递的角度重新审视迭代重新超重的框架,采用绒毛损失功能来保护流量不连续性并处理闭塞。我们使用嗜钴和MPI-Sintel光流数据集的实验证明了我们所提出的方法的稳健性和效率。

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