Theory and Practice of Structure-From-Motion Using Affine Correspondences

Carolina Raposo, J. Barreto
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引用次数: 52

Abstract

Affine Correspondences (ACs) are more informative than Point Correspondences (PCs) that are used as input in mainstream algorithms for Structure-from-Motion (SfM). Since ACs enable to estimate models from fewer correspondences, its use can dramatically reduce the number of combinations during the iterative step of sample-and-test that exists in most SfM pipelines. However, using ACs instead of PCs as input for SfM passes by fully understanding the relations between ACs and multi-view geometry, as well as by establishing practical, effective AC-based algorithms. This article is a step forward into this direction, by providing a clear account about how ACs constrain the two-view geometry, and by proposing new algorithms for plane segmentation and visual odometry that compare favourably with respect to methods relying in PCs.
基于仿射对应的运动构造理论与实践
仿射对应(ac)比点对应(pc)更有信息量,后者被用作运动结构(SfM)的主流算法的输入。由于ac能够从更少的对应中估计模型,因此它的使用可以显著减少大多数SfM管道中存在的采样和测试迭代步骤中的组合数量。然而,使用ac而不是pc作为SfM的输入,需要充分理解ac与多视图几何之间的关系,以及建立实用、有效的基于ac的算法。这篇文章是朝着这个方向迈出的一步,提供了一个关于ac如何约束双视图几何的清晰说明,并提出了与依赖于pc的方法相比有利的平面分割和视觉里程计的新算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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