Yunchen Yang

1paper

1 Paper

CVOct 6, 2021
Boosting RANSAC via Dual Principal Component Pursuit

Yunchen Yang, Xinyue Zhang, Tianjiao Ding et al.

In this paper, we revisit the problem of local optimization in RANSAC. Once a so-far-the-best model has been found, we refine it via Dual Principal Component Pursuit (DPCP), a robust subspace learning method with strong theoretical support and efficient algorithms. The proposed DPCP-RANSAC has far fewer parameters than existing methods and is scalable. Experiments on estimating two-view homographies, fundamental and essential matrices, and three-view homographic tensors using large-scale datasets show that our approach consistently has higher accuracy than state-of-the-art alternatives.