Print Email Facebook Twitter Generating 3D person trajectories from sparse image annotations in an intelligent vehicles setting Title Generating 3D person trajectories from sparse image annotations in an intelligent vehicles setting Author Krebs, S.A. (TU Delft Intelligent Vehicles; Daimler AG) Braun, M. (TU Delft Intelligent Vehicles; Daimler AG) Gavrila, D. (TU Delft Intelligent Vehicles) Date 2019 Abstract This paper presents an approach to generate dense person 3D trajectories from sparse image annotations on-board a moving platform. Our approach leverages the additional information that is typically available in an intelligent vehicle setting, such as LiDAR sensor measurements (to obtain 3D positions from detected 2D image bounding boxes) and inertial sensing (to perform ego-motion compensation). The sparse manual 2D person annotations that are available at regular time intervals (key-frames) are augmented with the output of a state-of-the-art 2D person detector, to obtain frame-wise data. A graph-based batch optimization approach is subsequently performed to find the best 3D trajectories, accounting for erroneous person detector output (false positives, false negatives, imprecise localization) and unknown temporal correspondences. Experiments on the EuroCity Persons dataset show promising results. Subject Multi-Object TrackingIntelligent Vehicles To reference this document use: http://resolver.tudelft.nl/uuid:f7c6c4f8-470b-4963-8bcf-f302e95e96b7 DOI https://doi.org/10.1109/ITSC.2019.8917160 Publisher IEEE, Piscataway, NJ, USA ISBN 978-1-5386-7024-8 Source Proceedings 2019 IEEE Intelligent Transportation Systems Conference (ITSC 2019) Event IEEE Intelligent Transportation Systems Conference, 2019-10-27 → 2019-10-30, Auckland, New Zealand Bibliographical note Accepted Author Manuscript Part of collection Institutional Repository Document type conference paper Rights © 2019 S.A. Krebs, M. Braun, D. Gavrila Files PDF krebs2019itsc_dense_pers_traj.pdf 3.05 MB Close viewer /islandora/object/uuid:f7c6c4f8-470b-4963-8bcf-f302e95e96b7/datastream/OBJ/view