2023
DOI: 10.21203/rs.3.rs-3127372/v1
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Uncovering Drone Intentions using Control Physics Informed Machine Learning

Abstract: Fully autonomous aerial platforms or drones are increasingly used across diverse application areas. Uncooperative drones do not announce their identity nor file flight plans and can pose a potential risk to a variety of critical infrastructures. Understanding an uncooperative drone's intention is important to assigning risk and executing countermeasures. Drones have rapidly changing design, flexible capabilities, and diverse underpinning algorithms. This makes distinguishing malicious from naive intentions acr… Show more

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“…Another point that needs to take into account is that previous approaches [4] do not exploit the drone contextual information, e.g., its size, model characteristics and type of drone [13]. These features could provide useful situation awareness about the tracked drone and infer its hidden intent.…”
Section: Introductionmentioning
confidence: 99%
“…Another point that needs to take into account is that previous approaches [4] do not exploit the drone contextual information, e.g., its size, model characteristics and type of drone [13]. These features could provide useful situation awareness about the tracked drone and infer its hidden intent.…”
Section: Introductionmentioning
confidence: 99%