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Analytical Solution for Sparse Data Interpolation Using Geodesic Distance Affinity Space: Application to the Optical Flow Problem and 3D Reconstruction

机译:使用测地距离空间空间的稀疏数据插值的分析解决方法:应用于光学流动问题和3D重建

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摘要

In this paper, we derive the analytic solution for sparse data interpolation using the geodesic distance affinity space of the known reference image associated with sparse data to be interpolated. We compare our method with the EpicFlow algorithm [1] that is intuitively motivated by almost the same geodesic distance principle. However, we found that our approach is more general, faster, and with clearer theoretical motivation. To test the accuracy of our approach, we applied our interpolation method to the sparse optical flow data obtained by the DCflow convolution neural network method [2] and compared our result with the EpicFlow interpolation result on the same sparse data set. The comparison shows that our algorithm is more accurate than the EpicFlow technique.
机译:在本文中,我们使用与要插值的稀疏数据相关联的已知参考图像的测地距离空间来导出稀疏数据插值的分析解决方案。我们将我们的方法与Epicflow算法[1]进行比较,这是直观地激励几乎相同的测地距离原理。但是,我们发现我们的方法更加一般,更快,更清晰的理论动机。为了测试我们方法的准确性,我们将插值方法应用于通过DCFlow卷积神经网络方法获得的稀疏光流量数据[2],并将我们的结果与同一稀疏数据集的Epicflow插值结果进行了比较。比较表明,我们的算法比Epicflow技术更准确。

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