Mixed Traffic Control and Coordination from Pixels
Michael Villarreal, Bibek Poudel, Jia Pan, Weizi Li

TL;DR
This paper explores using image observations for mixed traffic control with reinforcement learning, demonstrating competitive and sometimes superior performance compared to precise data-based methods across various traffic scenarios.
Contribution
It introduces a novel approach of using image-based observations for RL in mixed traffic control, reducing infrastructure needs and maintaining high performance.
Findings
Image observations achieve competitive performance in traffic scenarios.
In some cases, image-based RL outperforms precise observation methods.
Up to 8% increase in vehicle velocity in merge scenarios.
Abstract
Traffic congestion is a persistent problem in our society. Previous methods for traffic control have proven futile in alleviating current congestion levels leading researchers to explore ideas with robot vehicles given the increased emergence of vehicles with different levels of autonomy on our roads. This gives rise to mixed traffic control, where robot vehicles regulate human-driven vehicles through reinforcement learning (RL). However, most existing studies use precise observations that require domain expertise and hand engineering for each road network's observation space. Additionally, precise observations use global information, such as environment outflow, and local information, i.e., vehicle positions and velocities. Obtaining this information requires updating existing road infrastructure with vast sensor environments and communication to potentially unwilling human drivers. We…
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Taxonomy
TopicsAdvanced Steganography and Watermarking Techniques · Image and Video Quality Assessment · Traffic control and management
