Car-following-response Based Vehicle Classification via Deep Learning

Author:

Li Tianyi1,Stern Raphael1

Affiliation:

1. University of Minnesota, USA

Abstract

The driving characteristics of individual vehicles in the flow have been shown to influence the aggregate traffic flow characteristics. This is true both for individual human drivers as well as vehicles with some level of automation, such as adaptive cruise control (ACC). Knowledge of the individual constituents of the traffic flow will allow for more advanced traffic control strategies that are tailored to the individual vehicles and their respective driving characteristics. Therefore, there is a need to rapidly assess the car-following dynamics of individual vehicles and identify their level of automation based on their car-following trajectory. This study proposed a time-series based deep learning classification method to classify and identify human-driven and driver-assist vehicles in real-time from driving data. Powered by the recent advances in deep learning, we are able to identify individual vehicles in the flow using only car-following trajectory data and identify both ACC vehicles and human drivers. This paper represents the first step toward assessing vehicle characteristics in real-time. Furthermore, the proposed method can classify vehicles within a couple of seconds with high accuracy. Comparison with existing state-of-the-art methods shows the superior performance of the proposed method.

Publisher

Association for Computing Machinery (ACM)

Reference60 articles.

1. Abien Fred Agarap. 2018. Deep learning using rectified linear units (relu). arXiv preprint arXiv:1803.08375(2018). Abien Fred Agarap. 2018. Deep learning using rectified linear units (relu). arXiv preprint arXiv:1803.08375(2018).

2. Anthony Bagnall , Jason Lines , Aaron Bostrom, James Large, and Eamonn Keogh. 2017 . The great time series classification bake off: a review and experimental evaluation of recent algorithmic advances. Data mining and knowledge discovery 31, 3 (2017), 606–660. Anthony Bagnall, Jason Lines, Aaron Bostrom, James Large, and Eamonn Keogh. 2017. The great time series classification bake off: a review and experimental evaluation of recent algorithmic advances. Data mining and knowledge discovery 31, 3 (2017), 606–660.

3. Yingfeng Cai , Hai Wang , Xiaobo Chen , and Haobin Jiang . 2015. Trajectory-based anomalous behaviour detection for intelligent traffic surveillance. IET intelligent transport systems 9, 8 ( 2015 ), 810–816. Yingfeng Cai, Hai Wang, Xiaobo Chen, and Haobin Jiang. 2015. Trajectory-based anomalous behaviour detection for intelligent traffic surveillance. IET intelligent transport systems 9, 8 (2015), 810–816.

4. Sing Yiu Cheung , Sinem Coleri , Baris Dundar , Sumitra Ganesh , Chin-Woo Tan , and Pravin Varaiya . 2005. Traffic measurement and vehicle classification with single magnetic sensor. Transportation research record 1917 , 1 (2005), 173–181. Sing Yiu Cheung, Sinem Coleri, Baris Dundar, Sumitra Ganesh, Chin-Woo Tan, and Pravin Varaiya. 2005. Traffic measurement and vehicle classification with single magnetic sensor. Transportation research record 1917, 1 (2005), 173–181.

5. Benjamin Coifman and SeoungBum Kim. 2009. Speed estimation and length based vehicle classification from freeway single-loop detectors. Transportation research part C: emerging technologies 17 4(2009) 349–364. Benjamin Coifman and SeoungBum Kim. 2009. Speed estimation and length based vehicle classification from freeway single-loop detectors. Transportation research part C: emerging technologies 17 4(2009) 349–364.

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