Navigating Mixed Traffic: Current State and Future Challenges in Integrating Autonomous and Human-Driven Vehicles.

Kai-Fung Chu,Chenchen Fan, Fumiya Iida

International Conference on Advanced Robotics and its Social Impacts(2024)

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Abstract
As autonomous vehicles (AVs) become increasingly prevalent in our society, it is crucial to address the technical challenges coexisting with human-driven vehicles (HVs) on the roads. Transportation administrators and constructors must be poised to harness the controllability and potential offered by these innovative vehicles when they gradually penetrate the roads in the near future. However, existing studies often focus on either the safe autonomous driving technology of single AVs alongside HVs or on collective coordination among AVs exclusively, neglecting the challenges inherent in heterogeneous multi-agent transportation systems. These challenges encompass critical aspects such as safety, human-robot interactions, and infrastructure adaptation, which Requires detailed exploration. This paper aims to explore the current state and future challenges in mixed traffic scenarios that lie at the intersection of artificial intelligence, multi-agent systems, safe control, and intelligent systems design in the context of advancing AV technology while ensuring safety and effective interaction between human, robot, and road infrastructure. We examine the current state-of-the-art of AV technology, identify key challenges for integrating human-centric approaches into the design, development, and deployment of AVs. Drawing upon insights from safety standards, human-robot interaction, and road infrastructure design frameworks, we highlight the important aspects surrounding AV and HV designs to enhance user trust, acceptance, and overall societal impact.
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Key words
Autonomous Vehicles,Human-driven Vehicles,Control System,Transport System,Intelligent Systems,Multi-agent Systems,Safety Control,Human-robot Interaction,Road Infrastructure,Mixed Scenario,Heterogeneous Multi-agent Systems,Pedestrian,Traffic Flow,Action Recognition,Situational Awareness,Cooperative Control,Traffic Control,Traffic Safety,Traffic System,Intelligent Transportation Systems,Human Drivers,Gesture Recognition,V2V Communication,Traffic Control System,Driver Behavior,Road Intersections,Motion Prediction,Crucial Role In Shaping,Intelligent Control,Traffic Efficiency
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