1. Power Bundle Adjustment for Large-Scale 3D Reconstruction
- Author
-
Weber, Simon, Demmel, Nikolaus, Chan, Tin Chon, and Cremers, Daniel
- Subjects
Computer Science - Computer Vision and Pattern Recognition - Abstract
We introduce Power Bundle Adjustment as an expansion type algorithm for solving large-scale bundle adjustment problems. It is based on the power series expansion of the inverse Schur complement and constitutes a new family of solvers that we call inverse expansion methods. We theoretically justify the use of power series and we prove the convergence of our approach. Using the real-world BAL dataset we show that the proposed solver challenges the state-of-the-art iterative methods and significantly accelerates the solution of the normal equation, even for reaching a very high accuracy. This easy-to-implement solver can also complement a recently presented distributed bundle adjustment framework. We demonstrate that employing the proposed Power Bundle Adjustment as a sub-problem solver significantly improves speed and accuracy of the distributed optimization.
- Published
- 2022