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Auteurs principaux: Kayan, Karhan, Alexandropoulos, Stamatis, Jain, Rishabh, Zuo, Yiming, Liang, Erich, Deng, Jia
Format: Preprint
Publié: 2025
Sujets:
Accès en ligne:https://arxiv.org/abs/2506.09035
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author Kayan, Karhan
Alexandropoulos, Stamatis
Jain, Rishabh
Zuo, Yiming
Liang, Erich
Deng, Jia
author_facet Kayan, Karhan
Alexandropoulos, Stamatis
Jain, Rishabh
Zuo, Yiming
Liang, Erich
Deng, Jia
contents We introduce Princeton365, a large-scale diverse dataset of 365 videos with accurate camera pose. Our dataset bridges the gap between accuracy and data diversity in current SLAM benchmarks by introducing a novel ground truth collection framework that leverages calibration boards and a 360-camera. We collect indoor, outdoor, and object scanning videos with synchronized monocular and stereo RGB video outputs as well as IMU. We further propose a new scene scale-aware evaluation metric for SLAM based on the optical flow induced by the camera pose estimation error. In contrast to the current metrics, our new metric allows for comparison between the performance of SLAM methods across scenes as opposed to existing metrics such as Average Trajectory Error (ATE), allowing researchers to analyze the failure modes of their methods. We also propose a challenging Novel View Synthesis benchmark that covers cases not covered by current NVS benchmarks, such as fully non-Lambertian scenes with 360-degree camera trajectories. Please visit https://princeton365.cs.princeton.edu for the dataset, code, videos, and submission.
format Preprint
id arxiv_https___arxiv_org_abs_2506_09035
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Princeton365: A Diverse Dataset with Accurate Camera Pose
Kayan, Karhan
Alexandropoulos, Stamatis
Jain, Rishabh
Zuo, Yiming
Liang, Erich
Deng, Jia
Computer Vision and Pattern Recognition
We introduce Princeton365, a large-scale diverse dataset of 365 videos with accurate camera pose. Our dataset bridges the gap between accuracy and data diversity in current SLAM benchmarks by introducing a novel ground truth collection framework that leverages calibration boards and a 360-camera. We collect indoor, outdoor, and object scanning videos with synchronized monocular and stereo RGB video outputs as well as IMU. We further propose a new scene scale-aware evaluation metric for SLAM based on the optical flow induced by the camera pose estimation error. In contrast to the current metrics, our new metric allows for comparison between the performance of SLAM methods across scenes as opposed to existing metrics such as Average Trajectory Error (ATE), allowing researchers to analyze the failure modes of their methods. We also propose a challenging Novel View Synthesis benchmark that covers cases not covered by current NVS benchmarks, such as fully non-Lambertian scenes with 360-degree camera trajectories. Please visit https://princeton365.cs.princeton.edu for the dataset, code, videos, and submission.
title Princeton365: A Diverse Dataset with Accurate Camera Pose
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2506.09035