Active Learning-augmented Intention-aware Obstacle Avoidance of Autonomous Surface Vehicles in High-traffic Waters
This paper enhances the obstacle avoidance of Autonomous Surface Vehicles (ASVs) for safe navigation in high-traffic waters with an active state estimation of obstacle's passing intention and reducing its uncertainty. We introduce a topological modeling of passing intention of obstacles, which...
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Zusammenfassung: | This paper enhances the obstacle avoidance of Autonomous Surface Vehicles
(ASVs) for safe navigation in high-traffic waters with an active state
estimation of obstacle's passing intention and reducing its uncertainty. We
introduce a topological modeling of passing intention of obstacles, which can
be applied to varying encounter situations based on the inherent embedding of
topological concepts in COLREGs. With a Long Short-Term Memory (LSTM) neural
network, we classify the passing intention of obstacles. Then, for determining
the ASV maneuver, we propose a multi-objective optimization framework including
information gain about the passing obstacle intention and safety. We validate
the proposed approach under extensive Monte Carlo simulations (2,400 runs) with
a varying number of obstacles, dynamic properties, encounter situations, and
different behavioral patterns of obstacles (cooperative, non-cooperative). We
also present the results from a real marine accident case study as well as
real-world experiments of a real ASV with environmental disturbances, showing
successful collision avoidance with our strategy in real-time. |
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DOI: | 10.48550/arxiv.2411.01011 |