Vehicular Communication Security: Multi-Channel and Multi-Factor Authentication
By: Marco De Vincenzi , Shuyang Sun , Chen Bo Calvin Zhang and more
Potential Business Impact:
Cars prove they are real using flashing lights.
Secure and reliable communications are crucial for Intelligent Transportation Systems (ITSs), where Vehicle-to-Infrastructure (V2I) communication plays a key role in enabling mobility-enhancing and safety-critical services. Current V2I authentication relies on credential-based methods over wireless Non-Line-of-Sight (NLOS) channels, leaving them exposed to remote impersonation and proximity attacks. To mitigate these risks, we propose a unified Multi-Channel, Multi-Factor Authentication (MFA) scheme that combines NLOS cryptographic credentials with a Line-of-Sight (LOS) visual channel. Our approach leverages a challenge-response security paradigm: the infrastructure issues challenges and the vehicle's headlights respond by flashing a structured sequence containing encoded security data. Deep learning models on the infrastructure side then decode the embedded information to authenticate the vehicle. Real-world experimental evaluations demonstrate high test accuracy, reaching an average of 95% and 96.6%, respectively, under various lighting, weather, speed, and distance conditions. Additionally, we conducted extensive experiments on three state-of-the-art deep learning models, including detailed ablation studies for decoding the flashing sequence. Our results indicate that the optimal architecture employs a dual-channel design, enabling simultaneous decoding of the flashing sequence and extraction of vehicle spatial and locational features for robust authentication.
Similar Papers
Vehicle-to-Infrastructure Collaborative Spatial Perception via Multimodal Large Language Models
Machine Learning (CS)
Helps cars talk to each other better, even in bad weather.
A Vehicle-Infrastructure Multi-layer Cooperative Decision-making Framework
Robotics
Helps self-driving cars safely cross busy roads.
Vision-Aided Channel Prediction Based on Image Segmentation at Street Intersection Scenarios
Information Theory
Cars see roads to talk better.