2020
DOI: 10.48550/arxiv.2010.09776
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SMARTS: Scalable Multi-Agent Reinforcement Learning Training School for Autonomous Driving

Abstract: Multi-agent interaction is a fundamental aspect of autonomous driving in the real world. Despite more than a decade of research and development, the problem of how to competently interact with diverse road users in diverse scenarios remains largely unsolved. Learning methods have much to offer towards solving this problem. But they require a realistic multi-agent simulator that generates diverse and competent driving interactions. To meet this need, we develop a dedicated simulation platform called SMARTS (Sca… Show more

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Cited by 32 publications
(39 citation statements)
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“…The vehicle needs to reinforce learning from experience, usually at the cost of collisions, to gain autonomous knowledge and achieve higher rewards. Recent research on the DRLbased driving domain focused on the long-term accumulative reward or averaged reward as the critical performance metrics [18], [19]. Nevertheless, the literature rarely paid attention to a safety measure to evaluate the autonomous performance of DRL models.…”
Section: Related Workmentioning
confidence: 99%
“…The vehicle needs to reinforce learning from experience, usually at the cost of collisions, to gain autonomous knowledge and achieve higher rewards. Recent research on the DRLbased driving domain focused on the long-term accumulative reward or averaged reward as the critical performance metrics [18], [19]. Nevertheless, the literature rarely paid attention to a safety measure to evaluate the autonomous performance of DRL models.…”
Section: Related Workmentioning
confidence: 99%
“…Despite those introduced in Section 4.6, simulation continues to be a significant engineering and research challenge. We have not yet seen comparable simulation granularity as that of the environments for traffic management, (e.g., SUMO [Lopez et al, 2018], Flow ) or autonomous driving (e.g., SMARTS [Zhou et al, 2020], CARLA [Dosovitskiy et al, 2017]). The opportunity is an agent-based microscopic simulation environment for ridesharing that accounts for both ride-hailing and carpool, as well as driver and passenger behavior details, e.g., price sensitivity, cancellation behavior, driver entrance/exit behavior.…”
Section: Simulation and Sim2realmentioning
confidence: 99%
“…PLOP [6] and Argoverse [7] use the ego trajectory in a bird's eye view map. Simaug and SMARTS [25,52] take advantage of simulation data to train the prediction model. Others [5,8,11,24,26,49] have explored multimodal inputs, such as Lidar [9,31,36,47], to aid in trajectory prediction.…”
Section: Related Workmentioning
confidence: 99%