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arxiv: 2002.10152 · v1 · pith:BX4ZTWKI · submitted 2020-02-24 · cs.RO · cs.CV

Real-time Kinematic Ground Truth for the Oxford RobotCar Dataset

Reviewed by Pithpith:BX4ZTWKIopen to challenge →

classification cs.RO cs.CV
keywords datasetoxfordconditionsgroundlocalisationlong-termmappingrelease
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We describe the release of reference data towards a challenging long-term localisation and mapping benchmark based on the large-scale Oxford RobotCar Dataset. The release includes 72 traversals of a route through Oxford, UK, gathered in all illumination, weather and traffic conditions, and is representative of the conditions an autonomous vehicle would be expected to operate reliably in. Using post-processed raw GPS, IMU, and static GNSS base station recordings, we have produced a globally-consistent centimetre-accurate ground truth for the entire year-long duration of the dataset. Coupled with a planned online benchmarking service, we hope to enable quantitative evaluation and comparison of different localisation and mapping approaches focusing on long-term autonomy for road vehicles in urban environments challenged by changing weather.

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Cited by 2 Pith papers

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