"Why This Avoidance Maneuver?" Contrastive Explanations in Human-Supervised Maritime Autonomous Navigation

arXiv cs.RO / 4/10/2026

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Key Points

  • The paper argues that maritime autonomous collision avoidance will continue to require human supervision, making it critical to provide transparent, understandable explanations of perception and maneuver planning.
  • It proposes a contrastive explanation method that clarifies the system’s chosen avoidance maneuver by comparing it against relevant alternative solutions.
  • The authors evaluate the approach with a visualization-and-text framework built from a state-of-the-art collision avoidance system, aiming to highlight key objectives for supervisors.
  • An exploratory user study with four experienced marine officers indicates that contrastive explanations improve understanding of system objectives, especially in complex multi-vessel encounters.
  • The study also finds a trade-off: such explanations may increase cognitive workload, motivating future interfaces that use demand-driven or scenario-specific explanation strategies.

Abstract

Automated maritime collision avoidance will rely on human supervision for the foreseeable future. This necessitates transparency into how the system perceives a scenario and plans a maneuver. However, the causal logic behind avoidance maneuvers is often complex and difficult to convey to a navigator. This paper explores how to explain these factors in a selective, understandable manner for supervisors with a nautical background. We propose a method for generating contrastive explanations, which provide human-centric insights by comparing a system's proposed solution against relevant alternatives. To evaluate this, we developed a framework that uses visual and textual cues to highlight key objectives from a state-of-the-art collision avoidance system. An exploratory user study with four experienced marine officers suggests that contrastive explanations support the understanding of the system's objectives. However, our findings also reveal that while these explanations are highly valuable in complex multi-vessel encounters, they can increase cognitive workload, suggesting that future maritime interfaces may benefit most from demand-driven or scenario-specific explanation strategies.