Learning Correspondence Uncertainty via Differentiable Nonlinear Least
Squares
- URL: http://arxiv.org/abs/2305.09527v2
- Date: Thu, 18 May 2023 18:35:23 GMT
- Title: Learning Correspondence Uncertainty via Differentiable Nonlinear Least
Squares
- Authors: Dominik Muhle, Lukas Koestler, Krishna Murthy Jatavallabhula, Daniel
Cremers
- Abstract summary: We propose a differentiable nonlinear least squares framework to account for uncertainty in relative pose estimation from feature correspondences.
We evaluate our approach on synthetic, as well as the KITTI and EuRoC real-world datasets.
- Score: 47.83169780113135
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We propose a differentiable nonlinear least squares framework to account for
uncertainty in relative pose estimation from feature correspondences.
Specifically, we introduce a symmetric version of the probabilistic normal
epipolar constraint, and an approach to estimate the covariance of feature
positions by differentiating through the camera pose estimation procedure. We
evaluate our approach on synthetic, as well as the KITTI and EuRoC real-world
datasets. On the synthetic dataset, we confirm that our learned covariances
accurately approximate the true noise distribution. In real world experiments,
we find that our approach consistently outperforms state-of-the-art
non-probabilistic and probabilistic approaches, regardless of the feature
extraction algorithm of choice.
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