Seeing in the Dark: Benchmarking Egocentric 3D Vision with the Oxford Day-and-Night Dataset
Seeing in the Dark: Benchmarking Egocentric 3D Vision with the Oxford Day-and-Night Dataset
We introduce Oxford Day-and-Night, a large-scale, egocentric dataset for novel view synthesis (NVS) and visual relocalisation under challenging lighting conditions. Existing datasets often lack crucial combinations of features such as ground-truth 3D geometry, wide-ranging lighting variation, and full 6DoF motion. Oxford Day-and-Night addresses these gaps by leveraging Meta ARIA glasses to capture egocentric video and applying multi-session SLAM to estimate camera poses, reconstruct 3D point clouds, and align sequences captured under varying lighting conditions, including both day and night. The dataset spans over 30 $\mathrm{km}$ of recorded trajectories and covers an area of 40,000 $\mathrm{m}^2$, offering a rich foundation for egocentric 3D vision research. It supports two core benchmarks, NVS and relocalisation, providing a unique platform for evaluating models in realistic and diverse environments.
Zirui Wang、Wenjing Bian、Xinghui Li、Yifu Tao、Jianeng Wang、Maurice Fallon、Victor Adrian Prisacariu
计算技术、计算机技术
Zirui Wang,Wenjing Bian,Xinghui Li,Yifu Tao,Jianeng Wang,Maurice Fallon,Victor Adrian Prisacariu.Seeing in the Dark: Benchmarking Egocentric 3D Vision with the Oxford Day-and-Night Dataset[EB/OL].(2025-06-04)[2025-07-16].https://arxiv.org/abs/2506.04224.点此复制
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