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Video-based trajectory extraction with deep learning for High-Granularity Highway Simulation (HIGH-SIM)

Xiaowei Shi et al · Tsinghua University Press · 2021

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High-granularity vehicle trajectory data can help researchers develop traffic simulation models, understand traffic flow characteristics, and thus propose insightful strategies for road traffic management. This paper proposes a novel vehicle trajectory extraction method that can extract high-granularity vehicle trajectories from aerial videos. The proposed method includes video calibration, vehicle detection and tracking, lane marking identification, and vehicle motion characteristics calculation. In particular, the authors propose a Monte-Carlo-based lane marking identification approach to identify each vehicle's lane. This is a challenging problem for vehicle trajectory extraction, especially when the aerial videos are taken from a high altitude. The authors applied the proposed method to extract vehicle trajectories from several high-resolution aerial videos recorded from helicopters. The extracted dataset is named by the High-Granularity Highway Simulation (HIGH-SIM) vehicle trajectory dataset. To demonstrate the effectiveness of the proposed method and understand the quality of the HIGH-SIM dataset, we compared the HIGH-SIM dataset with a well-known dataset, the NGSIM US-101 dataset, regarding the accuracy and consistency aspects. The comparison results showed that the HIGH-SIM dataset has more reasonable speed and acceleration distributions than the NGSIM US-101 dataset. Also, the internal and platoon consistencies of the HIGH-SIM dataset give lower errors compared to the NGSIM US-101 dataset. To benefit future research, the authors have published the HIGH-SIM dataset online for public use.

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APA 7

al, X. S. E. (2021). Video-based trajectory extraction with deep learning for High-Granularity Highway Simulation (HIGH-SIM). https://doi.org/10.1016/j.commtr.2021.100014

MLA

al, Xiaowei Shi et. "Video-based trajectory extraction with deep learning for High-Granularity Highway Simulation (HIGH-SIM)." 2021. https://doi.org/10.1016/j.commtr.2021.100014.

Chicago

al, Xiaowei Shi et. 2021. "Video-based trajectory extraction with deep learning for High-Granularity Highway Simulation (HIGH-SIM).". https://doi.org/10.1016/j.commtr.2021.100014.

Harvard

al, X. S. E. 2021, Video-based trajectory extraction with deep learning for High-Granularity Highway Simulation (HIGH-SIM), Tsinghua University Press, available at: https://doi.org/10.1016/j.commtr.2021.100014 [Accessed 1 Jul. 2026].

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Título
Video-based trajectory extraction with deep learning for High-Granularity Highway Simulation (HIGH-SIM)
Autor / colaboradores
Xiaowei Shi et al
Editorial
Tsinghua University Press
Año de publicación
2021
ISSN
2772-4247
ISSN
2772-4247
Idioma
eng

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