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computer vision

Expert Sample Consensus Applied to Camera Re-Localization

arXiv:1908.02484

summary

The paper introduces Expert Sample Consensus (ESAC), which combines differentiable RANSAC with a mixture‑of‑experts network to robustly estimate 6‑DoF camera poses from noisy 2D‑3D correspondences, and trains the whole system end‑to‑end.

Abstract

Fitting model parameters to a set of noisy data points is a common problem in computer vision. In this work, we fit the 6D camera pose to a set of noisy correspondences between the 2D input image and a known 3D environment. We estimate these correspondences from the image using a neural network. Since the correspondences often contain outliers, we utilize a robust estimator such as Random Sample Consensus (RANSAC) or Differentiable RANSAC (DSAC) to fit the pose parameters. When the problem domain, e.g. the space of all 2D-3D correspondences, is large or ambiguous, a single network does not cover the domain well. Mixture of Experts (MoE) is a popular strategy to divide a problem domain among an ensemble of specialized networks, so called experts, where a gating network decides which expert is responsible for a given input. In this work, we introduce Expert Sample Consensus (ESAC), which integrates DSAC in a MoE. Our main technical contribution is an efficient method to train ESAC jointly and end-to-end. We demonstrate experimentally that ESAC handles two real-world problems better than competing methods, i.e. scalability and ambiguity. We apply ESAC to fitting simple geometric models to synthetic images, and to camera re-localization for difficult, real datasets.

ICCV 2019. Supplementary materials included

Topics & keywords

#camera pose estimation#mixture of experts#robust fitting#differentiable ransac#visual localization6D pose2D-3D correspondencesDSACRANSACMoEgating networkend-to-end training