TY - GEN
T1 - Data Protection Regulation Compliant Dataset Generation for LiDAR-Based People Detection Using Neural Networks
AU - Haas, Lukas
AU - Zedelmeier, Johann
AU - Bindges, Florian
AU - Kuba, Matthias
AU - Zeh, Thomas
AU - Jakobi, Martin
AU - Koch, Alexander W.
N1 - Publisher Copyright:
© 2024 IEEE.
PY - 2024
Y1 - 2024
N2 - The use of LiDAR sensor technology for people detection offers a significant advantage in terms of data pro-tection. In LiDAR point clouds, unlike camera images, people can be detected but not identified without further information. LiDAR sensors are, therefore, particularly suitable for detecting people in publicly accessible places and reacting accordingly to the number of people, for example, with on demand services at airports. Due to the anonymity of people in LiDAR point clouds, personal data is protected, and approval for implementing such a detection system is simpler than that of comparable camera systems. In this paper, we present a measurement setup that covers the configuration of the sensor setup, the creation of a dataset for training neural networks for object detection, and the object detection itself. The measurement setup generates an average of 2408 automatically labeled point clouds per sensor, per hour. The SECOND network trained with this dataset achieves average precision for the intersection over union of the 2D view with a threshold of 0.5 of 87.67 %, the PV-RCNN of 85.74 % and an average precision for the average orientation similarity with a threshold of 0.5 of 89.56 %, and for the PV-RCNN of 87.81 %.
AB - The use of LiDAR sensor technology for people detection offers a significant advantage in terms of data pro-tection. In LiDAR point clouds, unlike camera images, people can be detected but not identified without further information. LiDAR sensors are, therefore, particularly suitable for detecting people in publicly accessible places and reacting accordingly to the number of people, for example, with on demand services at airports. Due to the anonymity of people in LiDAR point clouds, personal data is protected, and approval for implementing such a detection system is simpler than that of comparable camera systems. In this paper, we present a measurement setup that covers the configuration of the sensor setup, the creation of a dataset for training neural networks for object detection, and the object detection itself. The measurement setup generates an average of 2408 automatically labeled point clouds per sensor, per hour. The SECOND network trained with this dataset achieves average precision for the intersection over union of the 2D view with a threshold of 0.5 of 87.67 %, the PV-RCNN of 85.74 % and an average precision for the average orientation similarity with a threshold of 0.5 of 89.56 %, and for the PV-RCNN of 87.81 %.
KW - camera
KW - deep learning
KW - labeling
KW - LiDAR sensor
KW - neural networks
KW - people detection
KW - point cloud
UR - http://www.scopus.com/inward/record.url?scp=85215079067&partnerID=8YFLogxK
U2 - 10.1109/AIxSET62544.2024.00019
DO - 10.1109/AIxSET62544.2024.00019
M3 - Conference contribution
AN - SCOPUS:85215079067
T3 - Proceedings - 2024 Conference on AI, Science, Engineering, and Technology, AIxSET 2024
SP - 98
EP - 105
BT - Proceedings - 2024 Conference on AI, Science, Engineering, and Technology, AIxSET 2024
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 2024 IEEE International Conferences of AI, Science, Engineering, and Technology, AIxSET 2024
Y2 - 30 September 2024 through 2 October 2024
ER -