LUMPI: The Leibniz University Multi-Perspective Intersection Dataset
NOTE: The full dataset will be released together with its corresponding publication soon.
Abstract
Increasing improvements in sensor technologies as well as machine learning methods allow an efficient collection, processing and analysis of the dynamic environment, which can be used for detection and tracking of traffic participants. Current datasets in this domain mostly present a single view, preventing high accurate pose estimations by occlusions.
The integration of different, simultaneously acquired data allows to exploit and develop collaboration principles to increase the quality, reliability and integrity of the derived information.
This work addresses this problem by providing a multi-view dataset, including 2D image information (videos) and 3D point clouds with labels of the traffic participants in the scene. The dataset was recorded during different weather and light conditions on several days at a large junction in Hanover, Germany.
Paper
Dataset teaser video: https://youtu.be/elwFdCu5IFo
Dataset download path: https://data.uni-hannover.de:8080/dataset/upload/users/ikg/busch/
Labeling process pipeline: https://youtu.be/Ns6qsHsb06E
Citation
If you use LUMPI for your work, please cite our paper:
*Busch, Steffen, et al. "LUMPI: The Leibniz University Multi-Perspective Intersection Dataset." 2022 IEEE Intelligent Vehicles Symposium (IV). IEEE, 2022.
@inproceedings{busch2022lumpi,
title={LUMPI: The Leibniz University Multi-Perspective Intersection Dataset},
author={Busch, Steffen and Koetsier, Christian and Axmann, Jeldrik and Brenner, Claus},
booktitle={2022 IEEE Intelligent Vehicles Symposium (IV)},
pages={1127--1134},
year={2022},
organization={IEEE}
}
Newsletter
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BibTex: