3D Object Detection in LIDAR Point Cloud Based on Background Subtraction

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Abstract
Autonomous vehicles have a key role in transportation systems of the future, but there are still many difficulties to overcome. Nowadays one of the most critical problems in autonomous driving is the precise and robust detection of traffic participants. This paper presents a LIDAR-based 3D object detection method. The algorithm uses HD Map to subtract the static background points from the LIDAR point cloud. The remaining points are grouped by clustering, then 3D boxes are fitted to the clusters. The object detection method presented in this paper was tested on real sensor data collected by a solid-state LIDAR on the highway module of the ZalaZONE proving ground. The results showed that the developed algorithm performs as intended in a highway scenario, detecting vehicles even more than 100 meters away from the sensor by a framerate of ~20FPS.- Title
- 3D Object Detection in LIDAR Point Cloud Based on Background Subtraction
- Author
- Nagy, Szabolcs
- Rövid, András
- Date of issue
- 2022
- Access level
- Open access
- Copyright owner
- Budapest University of Technology and Economics
- Conference title
- The First Conference on ZalaZONE Related R&I Activities of Budapest University of Technology and Economics 2022
- Conference place
- Budapest University of Technology and Economics
- Conference date
- 2022.03.31
- Language
- en
- Page
- 20 - 23
- Subject
- background subtraction, HD map, LIDAR point cloud, object detection
- Version
- Kiadói változat
- Identifiers
- DOI: 10.3311/BMEZalaZONE2022-004
- Title of the container document
- Proceedings of The First Conference on ZalaZONE Related R&I Activities of Budapest University of Technology and Economics 2022
- ISBN, e-ISBN
- ISBN 978-963-421-873-9
- University
- Budapest University of Technology and Economics
- Faculty
- Faculty of Transportation Engineering and Vehicle Engineering
- Department
- Department of Automotive Technologies