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Analyzing Closed-loop Training Techniques for Realistic Traffic Agent Models in Autonomous Highway Driving Simulations
by
Naumann, Maximilian
, Ziesche, Sebastian
, Reinis Cimurs
, Bitzer, Matthias
, Goth, Johannes
, Coors, Benjamin
, Geiger, Philipp
in
Closed loops
/ Driving
/ Modelling
/ Multiagent systems
2024
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Analyzing Closed-loop Training Techniques for Realistic Traffic Agent Models in Autonomous Highway Driving Simulations
by
Naumann, Maximilian
, Ziesche, Sebastian
, Reinis Cimurs
, Bitzer, Matthias
, Goth, Johannes
, Coors, Benjamin
, Geiger, Philipp
in
Closed loops
/ Driving
/ Modelling
/ Multiagent systems
2024
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Do you wish to request the book?
Analyzing Closed-loop Training Techniques for Realistic Traffic Agent Models in Autonomous Highway Driving Simulations
by
Naumann, Maximilian
, Ziesche, Sebastian
, Reinis Cimurs
, Bitzer, Matthias
, Goth, Johannes
, Coors, Benjamin
, Geiger, Philipp
in
Closed loops
/ Driving
/ Modelling
/ Multiagent systems
2024
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Analyzing Closed-loop Training Techniques for Realistic Traffic Agent Models in Autonomous Highway Driving Simulations
Paper
Analyzing Closed-loop Training Techniques for Realistic Traffic Agent Models in Autonomous Highway Driving Simulations
2024
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Overview
Simulation plays a crucial role in the rapid development and safe deployment of autonomous vehicles. Realistic traffic agent models are indispensable for bridging the gap between simulation and the real world. Many existing approaches for imitating human behavior are based on learning from demonstration. However, these approaches are often constrained by focusing on individual training strategies. Therefore, to foster a broader understanding of realistic traffic agent modeling, in this paper, we provide an extensive comparative analysis of different training principles, with a focus on closed-loop methods for highway driving simulation. We experimentally compare (i) open-loop vs. closed-loop multi-agent training, (ii) adversarial vs. deterministic supervised training, (iii) the impact of reinforcement losses, and (iv) the impact of training alongside log-replayed agents to identify suitable training techniques for realistic agent modeling. Furthermore, we identify promising combinations of different closed-loop training methods.
Publisher
Cornell University Library, arXiv.org
Subject
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