4.5 Article

SBA: A Software Package for Generic Sparse Bundle Adjustment

Journal

Publisher

ASSOC COMPUTING MACHINERY
DOI: 10.1145/1486525.1486527

Keywords

Algorithms; Design; Experimentation; Performance; Unconstrained optimization; nonlinear least squares; Levenberg-Marquardt; sparse Jacobian; bundle adjustment; structure and motion estimation; multiple-view geometry; engineering applications

Funding

  1. European Union [IST-2001-34545, COOP-CT-2005-017405, FP6-507752]

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Bundle adjustment constitutes a large, nonlinear least-squares problem that is often solved as the last step of feature-based structure and motion estimation computer vision algorithms to obtain optimal estimates. Due to the very large number of parameters involved, a general purpose least-squares algorithm incurs high computational and memory storage costs when applied to bundle adjustment. Fortunately, the lack of interaction among certain subgroups of parameters results in the corresponding Jacobian being sparse, a fact that can be exploited to achieve considerable computational savings. This article presents sba, a publicly available C/C++ software package for realizing generic bundle adjustment with high efficiency and flexibility regarding parameterization.

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