Published July 23, 2024 | Version 1.0.0
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LIDAROC dataset 10m: Realistic LiDAR Cover Contamination Dataset for Enhancing Autonomous Vehicle Perception Reliability.

Description

Keywords: LiDAR Point Cloud corruption, Sensor phenomena, anomaly, autonomous vehicle, contamination, dataset, object detection benchmark, perception robustness testing, sensor.

LiDAR is the foundation of many autonomous vehicle perception systems, so it is essential to study and ensure the integrity and robustness of the data collected by LiDAR. To facilitate future research into robust and resilient LiDAR processing, we present a dataset containing a collection of uncontaminated and realistically contaminated LiDAR samples.
 

This dataset is the 10m dataset, which is part of the larger LIDAROC dataset.

The experiment was conducted in two environments: The first was a subterranean narrow hallway with the target approximately 5 meters away, referred to as the 5m dataset, simulating a complex urban driving scenario. The second environment was a spacious outdoor area with two distance variations (10 and 20 meters).

For the 5m and 20m datasets, please refer to the link below:

 

Notes

To use this dataset, please cite this paper.

G. Jati, M. Molan, F. Barchi, A. Bartolini, G. Mercurio and A. Acquaviva, "LIDAROC: Realistic LiDAR Cover Contamination Dataset for Enhancing Autonomous Vehicle Perception Reliability," in IEEE Sensors Letters, vol. 8, no. 9, pp. 1-4, Sept. 2024, Art no. 1502404, doi: 10.1109/LSENS.2024.3434624

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Additional details

Related works

Has part
Dataset: 10.5281/zenodo.12800039 (DOI)
Dataset: 10.5281/zenodo.12800632 (DOI)
Is part of
Conference paper: 10.1145/3629527.3652896 (DOI)
Is published in
Journal article: 10.1109/LSENS.2024.3434624 (DOI)
Is supplement to
Conference paper: 10.1145/3649153.3649201 (DOI)

Funding

European Union
EU NRRP (PNNR) DM 352/2022
European Commission
EU Horizon project Edge AI Technologies for Optimised Performance Embedded Processing: EdgeAI 101097300

Software

Repository URL
https://gitlab.com/ecs-lab/lidaroc
Programming language
Python
Development Status
Active