English

Geometric Multi-Model Fitting with a Convex Relaxation Algorithm

Computer Vision and Pattern Recognition 2017-06-07 v1

Abstract

We propose a novel method to fit and segment multi-structural data via convex relaxation. Unlike greedy methods --which maximise the number of inliers-- this approach efficiently searches for a soft assignment of points to models by minimising the energy of the overall classification. Our approach is similar to state-of-the-art energy minimisation techniques which use a global energy. However, we deal with the scaling factor (as the number of models increases) of the original combinatorial problem by relaxing the solution. This relaxation brings two advantages: first, by operating in the continuous domain we can parallelize the calculations. Second, it allows for the use of different metrics which results in a more general formulation. We demonstrate the versatility of our technique on two different problems of estimating structure from images: plane extraction from RGB-D data and homography estimation from pairs of images. In both cases, we report accurate results on publicly available datasets, in most of the cases outperforming the state-of-the-art.

Keywords

Cite

@article{arxiv.1706.01553,
  title  = {Geometric Multi-Model Fitting with a Convex Relaxation Algorithm},
  author = {Paul Amayo and Pedro Pinies and Lina M. Paz and Paul Newman},
  journal= {arXiv preprint arXiv:1706.01553},
  year   = {2017}
}