ARCAS: An Augmented Reality Collision Avoidance System with SLAM-Based Tracking for Enhancing VRU Safety

arXiv — cs.CVMonday, December 8, 2025 at 5:00:00 AM
  • ARCAS, an augmented reality collision avoidance system, has been developed to enhance the safety of vulnerable road users (VRUs) by providing real-time spatial alerts through wearable AR headsets. The system integrates 360-degree 3D LiDAR data with SLAM-based tracking to accurately identify and display hazards in the user's view, significantly improving reaction times in real-world scenarios involving e-scooters and vehicles.
  • This innovation is crucial as it shifts the focus of road safety systems from solely assisting drivers to directly supporting VRUs, addressing a significant gap in current traffic safety measures. The effectiveness of ARCAS, demonstrated through extensive trials, highlights its potential to reduce collision risks for pedestrians and other vulnerable users.
  • The development of ARCAS aligns with ongoing advancements in AI and robotics, particularly in enhancing perception and interaction in mixed traffic environments. As technologies like LiDAR and augmented reality become more integrated into urban mobility solutions, the emphasis on protecting VRUs is increasingly recognized as essential for future transportation systems.
— via World Pulse Now AI Editorial System

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