余剑峤
James Jianqiao Yu
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教授、博士生导师

计算机科学与技术学院

哈尔滨工业大学(深圳)

广东省深圳市南山区深圳大学城

jqyu(at)hit.edu.cn jqyu(at)ieee.org Google Scholar
Real-Time Traffic Speed Estimation with Graph Convolutional Generative Autoencoder

作者
James J.Q. Yu and Jiatao Gu

发表
IEEE Transactions on Intelligent Transportation Systems, Volume 20, Issue 10, October 2019, Pages 3940--3951

摘要
Real-time traffic speed estimation is an essential component of intelligent transportation system technologies. It is the foundation of modern transportation control and management applications. However, existing traffic speed acquisition systems can only provide real-time speed measurements of a small number of roads with stationary speed sensors and crowdsourcing vehicles. How to utilize these information to provide traffic speed maps for transportation networks is becoming a key problem in intelligent transportation systems. In this work, we present a novel deep learning model called graph convolutional generative autoencoder to fully address the real-time traffic speed estimation problem. The proposed model incorporates the recent development of deep learning techniques to extract the spatial correlation of the transportation network from the input incomplete historical data. To evaluate the proposed speed estimation technique, we conduct comprehensive case studies on a real-world transportation network and vehicular traces. The simulation results demonstrate that the proposed technique can notably outperform existing traffic speed estimation and deep learning techniques. In addition, the impact of dataset properties and control parameters are investigated.