Wasserstein 1 optimal transport maps provide a natural correspondence between points from two probability distributions, $\mu$ and $\nu$, which is useful in many applications. Available algorithms for computing these maps do not appear to scale well to high dimensions. In deep learning applications, efficient algorithms have been developed for approximating solutions of the dual problem, known as Kantorovich potentials, using neural networks (e.g. [Gulrajani et al., 2017]). Importantly, such algorithms work well in high dimensions. In this paper we present an approach towards computing Wasserstein 1 optimal transport maps that relies only on Kantorovich potentials. In general, a Wasserstein 1 optimal transport map is not unique and is not computable from a potential alone. Our main result is to prove that if $\mu$ has a density and $\nu$ is supported on a submanifold of codimension at least 2, an optimal transport map is unique and can be written explicitly in terms of a potential. These assumptions are natural in many image processing contexts and other applications. When the Kantorovich potential is only known approximately, our result motivates an iterative procedure wherein data is moved in optimal directions and with the correct average displacement. Since this provides an approach for transforming one distribution to another, it can be used as a multipurpose algorithm for various transport problems; we demonstrate through several proof of concept experiments that this algorithm successfully performs various imaging tasks, such as denoising, generation, translation and deblurring, which normally require specialized techniques.
翻译:瓦塞斯坦 1 最佳运输地图 瓦塞斯坦 1 最佳运输地图 提供了来自两个概率分布点的自然对应点, 美元和美元, 在许多应用中非常有用。 计算这些地图的可用运算算算算法似乎不是很好, 范围不高。 在深层次的学习应用中, 开发了高效算法, 以近似于解决被称为Kantorovich 潜力的双重问题的办法。 使用神经网络的分层支持$mu$, 称为Kantorovich 潜力( 如[Gulrajani 等人, 2017] 。 重要的是, 此类算法在高维度方面运作良好。 在本文中, 我们提出了一种方法, 计算瓦塞斯坦 1 最佳运输地图, 仅依赖Kantorovich 的潜力。 一般来说, 瓦塞斯坦 1 最佳运输地图并不独特, 无法单独从潜在的可能性 。 我们的主要结果是, 如果 $mume 具有密度, 和 $nunu$ unnu 支持 commission commissional oration lectional lectional press, 那么, 也只能通过一种最精确的计算方法 。