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MULTI-SCALE ALGORITHMS FOR OPTIMAL TRANSPORT

机译:最佳运输的多尺度算法

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摘要

Optimal transport is a geometrically intuitive and robust way to quantify differences between probability measures. It is becoming increasingly popular as numerical tool in image processing, computer vision and machine learning. A key challenge is its efficient computation, in particular on large problems. Various algorithms exist, tailored to different special cases. Multi-scale methods can be applied to classical discrete algorithms, as well as entropy regularization techniques. They provide a good compromise between efficiency and flexibility.
机译:最佳运输是一种几何直观且健壮的方法,可以量化概率测度之间的差异。它在图像处理,计算机视觉和机器学习中作为数值工具变得越来越流行。一个关键的挑战是其高效的计算,尤其是在大问题上。存在针对不同特殊情况量身定制的各种算法。多尺度方法可以应用于经典的离散算法以及熵正则化技术。它们在效率和灵活性之间提供了很好的折衷方案。

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