Boreas Road Trip: A Multi-Sensor Autonomous Driving Dataset on Challenging Roads
Daniil Lisus, Katya M. Papais, Cedric Le Gentil, Elliot Preston-Krebs, Andrew Lambert, Keith Y.K. Leung, Timothy D. Barfoot

TL;DR
The Boreas Road Trip dataset offers a comprehensive, multi-sensor collection of challenging real-world driving scenarios for evaluating autonomous vehicle algorithms across diverse conditions.
Contribution
This paper introduces Boreas-RT, a new multi-sensor dataset with challenging routes, detailed calibration, and a benchmarking platform for autonomous driving research.
Findings
State-of-the-art algorithms overfit to simple environments
Algorithms degrade significantly on challenging routes
The dataset enables robust evaluation across diverse conditions
Abstract
The Boreas Road Trip (Boreas-RT) dataset extends the multi-season Boreas dataset to new and diverse locations that pose challenges for modern autonomous driving algorithms. Boreas-RT comprises 60 sequences collected over 9 real-world routes, totalling 643 km of driving. Each route is traversed multiple times, enabling evaluation in identical environments under varying traffic and, in some cases, weather conditions. The data collection platform includes a 5MP FLIR Blackfly S camera, a 360 degree Navtech RAS6 Doppler-enabled spinning radar, a 128-channel 360 degree Velodyne Alpha Prime lidar, an Aeva Aeries II FMCW Doppler-enabled lidar, a Silicon Sensing DMU41 inertial measurement unit, and a Dynapar wheel encoder. Centimetre-level ground truth is provided via post-processed Applanix POS LV GNSS-INS data. The dataset includes precise extrinsic and intrinsic calibrations, a publicly…
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Taxonomy
TopicsRobotics and Sensor-Based Localization · Autonomous Vehicle Technology and Safety · Remote Sensing and LiDAR Applications
