Automated Tracking of Ground Handling Vehicles Using Computer Vision for Turnaround Monitoring

Existing methods for measuring aircraft turnaround performance rely on manual data collection, which is labor-intensive and limits the scalability of operational monitoring.

Mariño, Loris, 2025

Art der Arbeit Master Thesis
Auftraggebende
Betreuende Dozierende Renold, Manuel
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To provide a scalable alternative, this thesis develops and evaluates a computer vision-based software artifact designed to automatically detect, track, and spatially localize ground handling vehicles using a single-camera setup.
Following a design science research methodology, the system was trained on a custom video dataset collected at Zurich Airport, utilizing a YOLOv8 object detector, a procedural tracker, and planar homography for coordinate mapping. Evaluation results demonstrate that the system successfully identifies key apron vehicles and achieves high spatial accuracy, projecting real-world coordinates with a margin of error of less than ≈ 0.5 meters. However, while the artifact successfully generates spatial density patterns, the tracking component exhibited instability due to frequent occlusions, which currently limits the extraction of precise process timing data.
The research concludes that a computer vision system is a viable sensor for spatial monitoring but requires enhanced tracking logic to fully automate temporal process analysis.
Studiengang: Business Information Systems (Master)
Keywords
Vertraulichkeit: öffentlich
Art der Arbeit
Master Thesis
Autorinnen und Autoren
Mariño, Loris
Betreuende Dozierende
Renold, Manuel
Publikationsjahr
2025
Sprache der Arbeit
Englisch
Vertraulichkeit
öffentlich
Studiengang
Business Information Systems (Master)
Standort Studiengang
Olten