Cooperative Robotics Reinforced by Collective Perception for Traffic Moderation
Mohammad Khoshkdahan, John Pravin Arockiasamy, Andy Flores Comeca, Alexey Vinel

TL;DR
This paper presents a cooperative robotic system that uses collective perception and V2X communication to actively moderate traffic at NLOS intersections, enhancing safety by physically stopping unsafe merging vehicles.
Contribution
It introduces a novel active traffic moderation robot that combines vision and V2X data to predict hazards and intervene in real-world NLOS traffic scenarios.
Findings
The system detects approaching vehicles early and predicts hazards reliably.
The robot successfully prevents unsafe merges in real-world NLOS conditions.
Combining vision and V2X perception improves hazard detection accuracy.
Abstract
Collisions at non-line-of-sight (NLOS) intersections remain a major safety concern because drivers have limited visibility of approaching traffic. V2X based warnings can reduce these risks, yet many vehicles are not equipped with V2X and drivers may ignore in vehicle alerts. Collective perception (CP) can compensate for low V2X penetration by extending the awareness of connected vehicles, but it cannot influence unconnected vehicles. To fill this gap, our work introduces a complementary concept that adds a cooperative humanoid robot as an active traffic moderator capable of physically stopping a vehicle that attempts to merge into an unseen traffic stream. The system operates on two parallel perception pathways. A dual camera infrastructure unit detects the position, speed and motion of approaching vehicles and transmits this information to the robot as a collective perception message…
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