Back to Search Start Over

Linear Relative Pose Estimation Founded on Pose-only Imaging Geometry

Authors :
Cai, Qi
Li, Xinrui
Wu, Yuanxin
Publication Year :
2024

Abstract

How to efficiently and accurately handle image matching outliers is a critical issue in two-view relative estimation. The prevailing RANSAC method necessitates that the minimal point pairs be inliers. This paper introduces a linear relative pose estimation algorithm for n $( n \geq 6$) point pairs, which is founded on the recent pose-only imaging geometry to filter out outliers by proper reweighting. The proposed algorithm is able to handle planar degenerate scenes, and enhance robustness and accuracy in the presence of a substantial ratio of outliers. Specifically, we embed the linear global translation (LiGT) constraint into the strategies of iteratively reweighted least-squares (IRLS) and RANSAC so as to realize robust outlier removal. Simulations and real tests of the Strecha dataset show that the proposed algorithm achieves relative rotation accuracy improvement of 2 $\sim$ 10 times in face of as large as 80% outliers.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2401.13357
Document Type :
Working Paper