余剑峤
James Jianqiao Yu
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讲师(助理教授)

计算机科学系

约克大学

英国约克 YO10 5GH CSE/139

jqyu(at)ieee.org Google Scholar
Online Traffic Speed Estimation for Urban Road Networks with Few Data: A Transfer Learning Approach

作者
James J.Q. Yu

发表
Proc. IEEE Intelligent Transportation Systems Conference, Auckland, New Zealand, October 2019

摘要
Online traffic speed data of urban road networks serve as the foundation of modern intelligent transportation systems. Much research has been conducted on developing methods, mostly model-based or machine learning ones, to estimate the data with GPS record for one, few adjacent roads, or the entire vehicular transportation network. While the machine learning methods generally yield satisfactory estimation accuracy, their accomplishments are established on a plethora of historical GPS records which may not be readily available for many urban transportation systems. In this paper, we investigate a transfer learning approach to provide speed data estimations with few data. We ground this work on a graph convolutional generative autoencoder that can generate the estimations for an entire transportation network in one go, and modify its internal computation graph to reduce the size of network topology-dependent model parameters. Subsequently, pre-trained models from road networks with massive historical data can be re-used in other networks with few data, which are only employed to adjust a small number of parameters. To assess the effectiveness of the proposed approach, comprehensive case studies are conducted, in which outstanding speed estimations can be obtained with significantly shorter training time.