Boreas: A multi-season autonomous driving dataset
/ Authors
Keenan Burnett, David J. Yoon, Yuchen Wu, A. Z. Li, Haowei Zhang, Shichen Lu, Jingxing Qian, Wei-Kang Tseng, A. Lambert, K. Leung
and 2 more authors
/ Abstract
The Boreas dataset was collected by driving a repeated route over the course of 1 year, resulting in stark seasonal variations and adverse weather conditions such as rain and falling snow. In total, the Boreas dataset includes over 350 km of driving data featuring a 128-channel Velodyne Alpha-Prime lidar, a 360° Navtech CIR304-H scanning radar, a 5MP FLIR Blackfly S camera, and centimetre-accurate post-processed ground truth poses. Our dataset will support live leaderboards for odometry, metric localization, and 3D object detection. The dataset and development kit are available at boreas.utias.utoronto.ca.
Journal: The International Journal of Robotics Research