Risk-Aware Reasoning for Autonomous Vehicles
Majid Khonji, Jorge Dias, and Lakmal Seneviratne

TL;DR
This paper presents a comprehensive risk-aware system architecture for autonomous vehicles that explicitly reasons about uncertainty in perception, intention, and planning to ensure safety and collision risk bounds.
Contribution
It introduces a novel white-box architecture integrating perception, intention recognition, and planning subsystems for risk-aware autonomous driving.
Findings
Quantifies uncertainty in perception and communication modalities.
Predicts driving style and intentions of other agents.
Propagates uncertainty through planning to bound collision risk.
Abstract
A significant barrier to deploying autonomous vehicles (AVs) on a massive scale is safety assurance. Several technical challenges arise due to the uncertain environment in which AVs operate such as road and weather conditions, errors in perception and sensory data, and also model inaccuracy. In this paper, we propose a system architecture for risk-aware AVs capable of reasoning about uncertainty and deliberately bounding the risk of collision below a given threshold. We discuss key challenges in the area, highlight recent research developments, and propose future research directions in three subsystems. First, a perception subsystem that detects objects within a scene while quantifying the uncertainty that arises from different sensing and communication modalities. Second, an intention recognition subsystem that predicts the driving-style and the intention of agent vehicles (and…
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Taxonomy
TopicsAutonomous Vehicle Technology and Safety · Adversarial Robustness in Machine Learning · Reinforcement Learning in Robotics
