Abstract:
This study addresses the enhancement of maritime navigational safety through intelligent ship type identification based on visual-geometric features, particularly under conditions of reduced visibility and dense traffic where human-factor risks increase. The research proposes a software approach that classifies vessels using structured descriptive or catalog data while ensuring interpretability of results in terms aligned with navigational expert reasoning. The objective is to achieve a stable and reproducible classification accuracy of approximately 65 – 70%, supporting its application in simulator training, maritime education, and decision-support systems, and contributing to the development of explainable AI tools in maritime safety contexts.