In this work, we investigate applications of no-collision transportation maps introduced in [Nurbekyan et. al., 2020] in manifold learning for image data. Recently, there has been a surge in applying transportation-based distances and features for data representing motion-like or deformation-like phenomena. Indeed, comparing intensities at fixed locations often does not reveal the data structure. No-collision maps and distances developed in [Nurbekyan et. al., 2020] are sensitive to geometric features similar to optimal transportation (OT) maps but much cheaper to compute due to the absence of optimization. In this work, we prove that no-collision distances provide an isometry between translations (respectively dilations) of a single probability measure and the translation (respectively dilation) vectors equipped with a Euclidean distance. Furthermore, we prove that no-collision transportation maps, as well as OT and linearized OT maps, do not in general provide an isometry for rotations. The numerical experiments confirm our theoretical findings and show that no-collision distances achieve similar or better performance on several manifold learning tasks compared to other OT and Euclidean-based methods at a fraction of a computational cost.
翻译:在本文中,我们探讨了 [Nurbekyan 等人,2020] 中引入的无碰撞运输映射在面向图像数据的流形学习中的应用。最近,人们越来越多地将基于运输的距离和特征应用在表示类似运动或形变的现象的数据上。事实上,在固定位置进行强度比较通常无法揭示数据结构。无碰撞映射和距离是在 [Nurbekyan 等人,2020] 中开发的跟最优运输(OT)映射类似的几何特征,但由于没有优化,计算成本要低得多。在本文中,我们证明了无碰撞距离在单一概率测度的翻转(或缩放)和带有欧几里得距离的翻转(或缩放)向量之间提供等距映射。此外,我们证明无碰撞运输映射,以及 OT 和线性 OT 映射,一般情况下不能提供旋转的等距映射。数值实验证实了我们的理论发现,并表明无碰撞距离在几个流形学习任务上实现了类似或更好的性能比其他基于 OT 和欧几里得的方法,计算成本只有一小部分。