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GPU-Oriented Environmental Cognition of Power Transmission Lines Through LiDAR-Equipped UAVs

Authors
Kim, S.Jeong, S.Kim, D.Jeon, M.Moon, J.Kim, J.Oh, K.
Issue Date
Sep-2022
Publisher
Institute of Electrical and Electronics Engineers Inc.
Keywords
Cognition; Environmental cognition; graphical processing unit (GPU); Graphics processing units; Hardware; Inspection; Laser radar; light detection and ranging (LiDAR); point cloud data (PCD); probabilistic downsampling; Real-time systems; Unmanned aerial vehicles
Citation
IEEE Systems Journal, v.16, no.3, pp 4541 - 4551
Pages
11
Journal Title
IEEE Systems Journal
Volume
16
Number
3
Start Page
4541
End Page
4551
URI
https://scholarworks.bwise.kr/cau/handle/2019.sw.cau/62877
DOI
10.1109/JSYST.2021.3100278
ISSN
1932-8184
1937-9234
Abstract
This article proposes an environmental cognition method for execution on a graphics processing unit (GPU) oriented single-board computer (SBC). We develop a lightweight environmental cognition system for real-time mapping by an unmanned aerial vehicle (UAV) by considering the weight of a cognition system as a tradeoff between the flight time and mapping efficiency and loss of environmental cognition capabilities. Heavy systems consume battery power rapidly while ensuring high computational performance and impacting flight envelope. The proposed method enhances real-time mapping speed by using GPU parallelism and minimizing the data transfer between the embedded central processing unit (CPU) and GPU. Specifically, the point cloud data (PCD) from the light detection and ranging are transformed into global coordinates and voxelized. The occupancies of the voxels are updated in a probabilistic manner to eliminate dynamic noise. The analysis of field tests confirms that the proposed method generated and updated the voxel map in real time without losses. In contrast, Octomap executed on a CPU- or GPU-oriented SBC generated and updated the voxel map in a limited manner, resulting in the significant loss of PCD due to the computational burden or heavy data transfer traffic from GPU to CPU. The proposed method contributes to develop a smart environmental cognition system for the autonomous flight of UAVs. IEEE
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