AI Meets Maritime Training: Precision Analytics for Enhanced Safety and Performance
Journal:
arXiv
Published Date:
Jul 2, 2025
Abstract
Traditional simulator-based training for maritime professionals is critical
for ensuring safety at sea but often depends on subjective trainer assessments
of technical skills, behavioral focus, communication, and body language, posing
challenges such as subjectivity, difficulty in measuring key features, and
cognitive limitations. Addressing these issues, this study develops an
AI-driven framework to enhance maritime training by objectively assessing
trainee performance through visual focus tracking, speech recognition, and
stress detection, improving readiness for high-risk scenarios. The system
integrates AI techniques, including visual focus determination using eye
tracking, pupil dilation analysis, and computer vision; communication analysis
through a maritime-specific speech-to-text model and natural language
processing; communication correctness using large language models; and mental
stress detection via vocal pitch. Models were evaluated on data from simulated
maritime scenarios with seafarers exposed to controlled high-stress events. The
AI algorithms achieved high accuracy, with ~92% for visual detection, ~91% for
maritime speech recognition, and ~90% for stress detection, surpassing existing
benchmarks. The system provides insights into visual attention, adherence to
communication checklists, and stress levels under demanding conditions. This
study demonstrates how AI can transform maritime training by delivering
objective performance analytics, enabling personalized feedback, and improving
preparedness for real-world operational challenges.