Risk-Aware Human-in-the-Loop Framework with Adaptive Intrusion Response for Autonomous Vehicles
Dawood Wasif, Terrence J. Moore, Seunghyun Yoon, Hyuk Lim, Dan Dongseong Kim, Frederica F. Nelson, and Jin-Hee Cho

TL;DR
RAIL is a risk-aware human-in-the-loop framework for autonomous vehicles that integrates multiple signals to adapt control and improve safety during rare scenarios and cyber-physical attacks, outperforming existing methods.
Contribution
The paper introduces RAIL, a novel framework combining risk assessment, adaptive shielding, and reinforcement learning to enhance autonomous vehicle safety in challenging scenarios.
Findings
RAIL achieves high safety and success rates on MetaDrive.
It effectively mitigates cyber-physical attacks.
Outperforms prior RL and safe RL baselines.
Abstract
Autonomous vehicles must remain safe and effective when encountering rare long-tailed scenarios or cyber-physical intrusions during driving. We present RAIL, a risk-aware human-in-the-loop framework that turns heterogeneous runtime signals into calibrated control adaptations and focused learning. RAIL fuses three cues (curvature actuation integrity, time-to-collision proximity, and observation-shift consistency) into an Intrusion Risk Score (IRS) via a weighted Noisy-OR. When IRS exceeds a threshold, actions are blended with a cue-specific shield using a learned authority, while human override remains available; when risk is low, the nominal policy executes. A contextual bandit arbitrates among shields based on the cue vector, improving mitigation choices online. RAIL couples Soft Actor-Critic (SAC) with risk-prioritized replay and dual rewards so that takeovers and near misses steer…
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Taxonomy
TopicsAutonomous Vehicle Technology and Safety · Vehicular Ad Hoc Networks (VANETs) · Adversarial Robustness in Machine Learning
