RAG-based Explainable Prediction of Road Users Behaviors for Automated Driving using Knowledge Graphs and Large Language Models
Mohamed Manzour Hussien, Angie Nataly Melo, Augusto Luis Ballardini,, Carlota Salinas Maldonado, Rub\'en Izquierdo, Miguel \'Angel Sotelo

TL;DR
This paper introduces an explainable system for predicting road users' behaviors in autonomous driving by combining Knowledge Graphs and Large Language Models with RAG techniques, outperforming current methods.
Contribution
It proposes a novel integration of Knowledge Graphs, LLMs, and RAG for explainable, context-aware behavior prediction in autonomous driving, including inductive reasoning capabilities.
Findings
Outperforms state-of-the-art in anticipation and F1-score
Successfully predicts pedestrians' crossing actions
Accurately predicts lane change maneuvers
Abstract
Prediction of road users' behaviors in the context of autonomous driving has gained considerable attention by the scientific community in the last years. Most works focus on predicting behaviors based on kinematic information alone, a simplification of the reality since road users are humans, and as such they are highly influenced by their surrounding context. In addition, a large plethora of research works rely on powerful Deep Learning techniques, which exhibit high performance metrics in prediction tasks but may lack the ability to fully understand and exploit the contextual semantic information contained in the road scene, not to mention their inability to provide explainable predictions that can be understood by humans. In this work, we propose an explainable road users' behavior prediction system that integrates the reasoning abilities of Knowledge Graphs (KG) and the…
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Taxonomy
TopicsHuman-Automation Interaction and Safety · Traffic Prediction and Management Techniques · Computational and Text Analysis Methods
MethodsFocus
