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HR-APR: APR-agnostic Framework with Uncertainty Estimation and Hierarchical Refinement for Camera Relocalisation

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Absolute Pose Regressors (APRs) directly estimate camera poses from monocular images, but their accuracy is unstable for different queries. Uncertainty-aware APRs provide uncertainty information on the estimated pose, alleviating the impact of these unreliable predictions. However, existing uncertainty modelling techniques are often coupled with a specific APR architecture, resulting in suboptimal performance compared to state-of-the-art (SOTA) APR methods. This work introduces a novel APR-agnostic framework, HR-APR, that formulates uncertainty estimation as cosine similarity estimation between the query and database features. It does not rely on or affect APR network architecture, which is flexible and computationally efficient. In addition, we take advantage of the uncertainty for pose refinement to enhance the performance of APR. The extensive experiments demonstrate the effectiveness of our framework, reducing 27.4\% and 15.2\% of computational overhead on the 7Scenes and Cambridge Landmarks datasets while maintaining the SOTA accuracy in single-image APRs.

Changkun Liu, Shuai Chen, Yukun Zhao, Huajian Huang, Victor Prisacariu, Tristan Braud• 2024

Related benchmarks

TaskDatasetResultRank
Visual Localization7Scenes
Median Translation Error (cm) - Chess2
66
Visual LocalizationCambridge Landmarks
College: Median Translation Error (cm)36
25
Visual Localization7 Scenes
Chess Median Translation Error (cm)2
23
Visual LocalizationCambridge Landmark (test)
Kings Median Translation Error (cm)36
18
Visual LocalizationCambridge Landmarks
Kings Median Translation Error (cm)36
15
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