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首页> 外文期刊>Journal of mathematical imaging and vision >A Sparse Multiscale Algorithm for Dense Optimal Transport
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A Sparse Multiscale Algorithm for Dense Optimal Transport

机译:稀疏最优运输的稀疏多尺度算法

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Discrete optimal transport solvers do not scale well on dense large problems since they do not explicitly exploit the geometric structure of the cost function. In analogy to continuous optimal transport, we provide a framework to verify global optimality of a discrete transport plan locally. This allows the construction of an algorithm to solve large dense problems by considering a sequence of sparse problems instead. The algorithm lends itself to being combined with a hierarchical multiscale scheme. Any existing discrete solver can be used as internal black-box. We explicitly describe how to select the sparse sub-problems for several cost functions, including the noisy squared Euclidean distance. Significant reductions in run-time and memory requirements have been observed.
机译:离散的最优运输求解器不能很好地解决密集的大问题,因为它们没有明确利用成本函数的几何结构。与连续最优运输类似,我们提供了一个框架来验证局部离散运输计划的全局最优性。这样就可以构造一种算法,通过考虑一系列稀疏问题来解决大型稠密问题。该算法适合与分层多尺度方案结合。任何现有的离散求解器都可以用作内部黑匣子。我们明确描述了如何为几个成本函数选择稀疏子问题,包括嘈杂的平方欧几里得距离。观察到运行时和内存需求的显着减少。

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