基于矩阵平衡的点集匹配问题的内点法

J. Wijesinghe, Peng Chen
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引用次数: 1

摘要

点集匹配问题可以通过最优运输来解决。其背后的机制是,最优输运恢复与最小旋度变形相关的点对点对应。最优运输是具有密集约束的线性规划的一种特殊形式。只要能准确地计算出所涉及的病态hessin,就可以用内点法处理线性规划问题。近十年来,矩阵平衡被用来计算熵正则化方法下的最优传输。内点法的求解质量取决于两个因素:矩阵平衡的准确性和对偶向量的有界性。为了实现高精度的矩阵平衡,我们采用牛顿方法沿一个中心路径实现矩阵序列的矩阵平衡。在这项工作中,我们将稀疏支持约束应用于基于矩阵平衡的内点方法,其中迭代更新满足总支持的稀疏集以截断运输计划的域。全支持条件是保证矩阵平衡存在和对偶向量有界性的一个关键条件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Matrix Balancing Based Interior Point Methods for Point Set Matching Problems
Point sets matching problems can be handled by optimal transport. The mechanism behind it is that optimal transport recovers the point-to-point correspondence associated with the least curl deformation. Optimal transport is a special form of linear programming with dense constraints. Linear programming can be handled by interior point methods, provided that the involved ill-conditioned Hessians can be computed accurately. During the decade, matrix balancing has been employed to compute optimal transport under entropy regularization approaches. The solution quality in the interior point method relies on two ingredients: the accuracy of matrix balancing and the boundedness of the dual vector. To achieve high accurate matrix balancing, we employ Newton methods to implement matrix balancing of a sequence of matrices along one central path. In this work, we apply sparse support constraints to matrix-balancing based interior point methods, in which the sparse set fulfilling total support is iteratively updated to truncate the domain of the transport plan. Total support condition is one crucial condition, which guarantees the existence of matrix balancing as well as the boundedness of the dual vector.
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