LSNetv2: Improving weakly supervised power line detection with bipartite matching
Permanent link
https://hdl.handle.net/10037/35198Date
2024-03-24Type
Journal articleTidsskriftartikkel
Peer reviewed
Author
Tran, Duy Khoi; Nguyen, van Nhan; Roverso, Davide; Jenssen, Robert; Kampffmeyer, Michael ChristianAbstract
This paper addresses the crucial task of power line detection and localization in electrical infrastructure
inspection using Unmanned Aerial Vehicles (UAVs) from weak supervision, polyline annotations. We first
identify several limitations in the state-of-the-art approach LSNet. In particular, the inability of LSNet to detect
line-crossings and lines in close proximity. To overcome these limitations, we propose LSNetv2, which enhances
LSNet with multi-line segment detection capability facilitated via a bipartite matching loss. Additionally,
we update LSNet’s regression loss in order to stabilize training by reducing the interdependence between
predicted coordinates. Finally, LSNetv2 makes use of an increased receptive field to extract global information,
improving overall detection performance. Through extensive evaluations on various power line detection
datasets, LSNetv2 demonstrates superior performance and robustness. On the public datasets PLDU, PLDM and
TTPLA, it achieved 𝐹�𝛽�
scores of 0.857, 0.875, and 0.671, respectively, while using only modified weak polyline
annotation, establishing itself as an effective and efficient solution for power line detection in UAV-based
electrical infrastructure inspections.
Publisher
ElsevierCitation
Tran, Nguyen, Roverso, Jenssen, Kampffmeyer. LSNetv2: Improving weakly supervised power line detection with bipartite matching. Expert Systems With Applications. 2024;250Metadata
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