Optimal transport (OT) has seen its popularity in various fields of applications. We start by observing that the OT problem can be viewed as an instance of a general symmetric positive definite (SPD) matrix-valued OT problem, where the cost, the marginals, and the coupling are represented as block matrices and each component block is a SPD matrix. The summation of row blocks and column blocks in the coupling matrix are constrained by the given block-SPD marginals. We endow the set of such block-coupling matrices with a novel Riemannian manifold structure. This allows to exploit the versatile Riemannian optimization framework to solve generic SPD matrix-valued OT problems. We illustrate the usefulness of the proposed approach in several applications.
翻译:最佳运输(OT)在各种应用领域都受到欢迎。我们首先看到,OT问题可以被视为一种一般的对称正数确定(SPD)矩阵估价OT问题的例子,其成本、边际和联结作为区块矩阵,每个构件区块是SPD矩阵。组合矩阵中行块和列区块的总和受到特定区块-SPD边际的限制。我们把这种区块组合式矩阵与新颖的Riemannian多元结构联系起来。这样就可以利用多功能的Riemannian优化框架解决通用的SPD矩阵估价OT问题。我们在若干应用中说明了拟议办法的效用。