Traffic Anomaly Detection in Intelligent Transport Applications with Time Series Data Using Informer

Peng, X., Lin, Y., Cao, Q. , Cen, Y., Zhuang, H. and Lin, Z. (2022) Traffic Anomaly Detection in Intelligent Transport Applications with Time Series Data Using Informer. In: 25th IEEE International Conference on Intelligent Transportation Systems (ITSC 2022), Macau, China, 8-12 October 2022, pp. 3309-3314. ISBN 9781665468800 (doi: 10.1109/ITSC55140.2022.9922142)

[img] Text
278458.pdf - Accepted Version

552kB

Abstract

Multivariate time series traffic dataset is usually large with multiple feature dimensions for long time duration under certain time intervals or sampling rates. In applications such as intelligent transportation systems, some machine learning methods being applied to traffic anomaly detections are computed under certain assumptions and require further improvements. Transport traffic time series data may also suffer from unbalanced number of training data where large amount of labelled training data available for a few popular classes, but with very small amount of labelled data for corner cases. In this paper, based on the recent long sequences prediction method Informer, an anomaly detection algorithm with an anomaly score generator is proposed that does not require any assumptions of data. The encoder-decoder architecture is adopted in the anomaly score generator. The encoder consists of three stacking ProbSparse self-attention mechanisms that significantly reduce computing complexity. The decoder incorporates two multi-head attention layers and a fully connected layer to obtain an output of anomaly scores. Then a One-Class Support Vector Machines (OCSVM) is applied to be the anomaly classifier. The proposed algorithm is capable of detecting anomalies for both vehicle traffic flows and pedestrian flows. It has been verified by applying to a real-world dataset consisting of traffic flows recorded in 2021, as well as to a public anomaly detection dataset.

Item Type:Conference Proceedings
Status:Published
Refereed:Yes
Glasgow Author(s) Enlighten ID:Cao, Dr Qi
Authors: Peng, X., Lin, Y., Cao, Q., Cen, Y., Zhuang, H., and Lin, Z.
College/School:College of Science and Engineering > School of Computing Science
ISBN:9781665468800
Copyright Holders:Copyright © 2022 IEEE
Publisher Policy:Reproduced in accordance with the copyright policy of the publisher
Related URLs:

University Staff: Request a correction | Enlighten Editors: Update this record