Domain adaptation for vehicle detection from bird's eye view lidar point cloud data
Version 2 2024-06-04, 02:22Version 2 2024-06-04, 02:22
Version 1 2020-04-14, 11:11Version 1 2020-04-14, 11:11
conference contribution
posted on 2024-06-04, 02:22 authored by K Saleh, A Abobakr, M Attia, J Iskander, D Nahavandi, M Hossny, S Nahavandi© 2019 IEEE. Point cloud data from 3D LiDAR sensors are one of the most crucial sensor modalities for versatile safety-critical applications such as self-driving vehicles. Since the annotations of point cloud data is an expensive and time-consuming process, therefore recently the utilisation of simulated environments and 3D LiDAR sensors for this task started to get some popularity. However, the generated synthetic point cloud data are still missing the artefacts usually exist in point cloud data from real 3D LiDAR sensors. Thus, in this work, we are proposing a domain adaptation framework for bridging this gap between synthetic and real point cloud data. Our proposed framework is based on the deep cycle-consistent generative adversarial networks (CycleGAN) architecture. We have evaluated the performance of our proposed framework on the task of vehicle detection from a bird's eye view (BEV) point cloud images coming from real 3D LiDAR sensors. The framework has shown competitive results with an improvement of more than 7% in average precision score over other baseline approaches when tested on real BEV point cloud images.
History
Pagination
3235-3242Location
Seoul, South KoreaPublisher DOI
Start date
2019-10-27End date
2019-10-28ISBN-13
9781728150239Language
engPublication classification
E1 Full written paper - refereedTitle of proceedings
ICCVW 2019 : Proceedings of the 2019 International Conference on Computer Vision WorkshopEvent
Computer Vision Workshop. Conference (2019 : Seoul, South Korea)Publisher
IEEEPlace of publication
Piscataway, N.J.Usage metrics
Categories
No categories selectedLicence
Exports
RefWorksRefWorks
BibTeXBibTeX
Ref. managerRef. manager
EndnoteEndnote
DataCiteDataCite
NLMNLM
DCDC