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Agent-based Simulation Model and Deep Learning Techniques to Evaluate and Predict Transportation Trends around COVID-19 (2010.09648v1)
Published 23 Sep 2020 in cs.MA, cs.CV, eess.IV, and physics.soc-ph
Abstract: The COVID-19 pandemic has affected travel behaviors and transportation system operations, and cities are grappling with what policies can be effective for a phased reopening shaped by social distancing. This edition of the white paper updates travel trends and highlights an agent-based simulation model's results to predict the impact of proposed phased reopening strategies. It also introduces a real-time video processing method to measure social distancing through cameras on city streets.
- Ding Wang (71 papers)
- Fan Zuo (11 papers)
- Jingqin Gao (11 papers)
- Yueshuai He (3 papers)
- Zilin Bian (18 papers)
- Suzana Duran Bernardes (4 papers)
- Chaekuk Na (3 papers)
- Jingxing Wang (5 papers)
- John Petinos (1 paper)
- Kaan Ozbay (24 papers)
- Joseph Y. J. Chow (41 papers)
- Shri Iyer (6 papers)
- Hani Nassif (3 papers)
- Xuegang Jeff Ban (2 papers)