Self-Supervised Deep Learning Framework for Anomaly Detection in Traffic Data

被引:3
|
作者
Morris, Clint [1 ]
Yang, Jidong J. [1 ]
Chorzepa, Mi Geum [1 ]
Kim, S. Sonny [1 ]
Durham, Stephan A. [1 ]
机构
[1] Univ Georgia, Sch Environm Civil Agr & Mech Engn, Athens, GA 30602 USA
关键词
Anomaly detection; Wavelet transform; Recurrence plots; Variational autoencoder (VAE); Recurrent neural networks (RNN); Self-supervised deep learning; NEURAL-NETWORK MODEL;
D O I
10.1061/JTEPBS.0000666
中图分类号
TU [建筑科学];
学科分类号
0813 ;
摘要
The current state of practice in traffic data quality control features rule-based data checking and validation processes, where the rules are subjective and insensitive to variation inherited with traffic data. In this paper, self-supervised deep learning approaches were explored to leverage the existence of multiple sources of traffic volume data, which permitted cross-checking of one data source against another for improved robustness. Two types of models were developed, aiming at detecting data anomalies at two distinct timescales. Particularly, a novel variational autoencoder (VAE)-based model was formulated for discerning data anomalies at the daily level and four recurrent model structures, including recurrent neural networks (RNN), gated recurrent units (GRU), long short-term memory (LSTM) units, and liquid time constant (LTC) networks, were evaluated for detecting anomalies in finer incremental timescales (i.e., 5-min intervals). The effectiveness of the proposed methods was demonstrated using two independent sources of traffic data from the Georgia Department of Transportation: (1) traffic counts collected by inductive loops as part of the statewide traffic count program, and (2) traffic volumes acquired by a video detection system as part of the Georgia 511, an advanced traveler information system in Georgia. Based on our experiments, the VAE-based model achieved a precision of 0.95, recall of 0.92, and F-1 score of 0.94. Among the recurrent models, the fully connected LTC produced the lowest prediction error and achieved a precision of 0.82, recall of 0.88, and F-1 score of 0.85. (C) 2022 American Society of Civil Engineers.
引用
收藏
页数:15
相关论文
共 50 条
  • [1] A NOVEL CONTRASTIVE LEARNING FRAMEWORK FOR SELF-SUPERVISED ANOMALY DETECTION
    Li, Jingze
    Lian, Zhichao
    Li, Min
    [J]. 2022 IEEE INTERNATIONAL CONFERENCE ON IMAGE PROCESSING, ICIP, 2022, : 3366 - 3370
  • [2] Deep anomaly detection with self-supervised learning and adversarial training
    Zhang, Xianchao
    Mu, Jie
    Zhang, Xiaotong
    Liu, Han
    Zong, Linlin
    Li, Yuangang
    [J]. PATTERN RECOGNITION, 2022, 121
  • [3] Anomaly Detection on Electroencephalography with Self-supervised Learning
    Xu, Junjie
    Zheng, Yaojia
    Mao, Yifan
    Wang, Ruixuan
    Zheng, Wei-Shi
    [J]. 2020 IEEE INTERNATIONAL CONFERENCE ON BIOINFORMATICS AND BIOMEDICINE, 2020, : 363 - 368
  • [4] Adjacent Image Augmentation and Its Framework for Self-Supervised Learning in Anomaly Detection
    Kwon, Gi Seung
    Choi, Yong Suk
    [J]. SENSORS, 2024, 24 (17)
  • [5] Deep, Self-Supervised Learning For Patient-Specific Anomaly Detection in Stereoelectroencephalography
    Martini, Michael
    Costa, Anthony
    Rajan, Kanaka
    Panov, Fedor
    Oermann, Eric
    [J]. JOURNAL OF NEUROSURGERY, 2020, 132 (04) : 37 - 37
  • [6] Self-supervised Learning for Anomaly Detection in Fundus Image
    Ahn, Sangil
    Shin, Jitae
    [J]. OPHTHALMIC MEDICAL IMAGE ANALYSIS, OMIA 2022, 2022, 13576 : 143 - 151
  • [7] CutPaste: Self-Supervised Learning for Anomaly Detection and Localization
    Li, Chun-Liang
    Sohn, Kihyuk
    Yoon, Jinsung
    Pfister, Tomas
    [J]. 2021 IEEE/CVF CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION, CVPR 2021, 2021, : 9659 - 9669
  • [8] SMD Anomaly Detection: A Self-Supervised Texture-Structure Anomaly Detection Framework
    Luo, Jiaxiang
    Lin, Junbin
    Yang, Zhiyu
    Liu, Haiming
    [J]. IEEE TRANSACTIONS ON INSTRUMENTATION AND MEASUREMENT, 2022, 71
  • [9] JOINT ANOMALY DETECTION AND INPAINTING FOR MICROSCOPY IMAGES VIA DEEP SELF-SUPERVISED LEARNING
    Huang, Ling
    Cheng, Deruo
    Yang, Xulei
    Lin, Tong
    Shi, Yiqiong
    Yang, Kaiyi
    Gwee, Bah Hwee
    Wen, Bihan
    [J]. 2021 IEEE INTERNATIONAL CONFERENCE ON IMAGE PROCESSING (ICIP), 2021, : 3497 - 3501
  • [10] Traffic Data Imputation Based on Self-Supervised Learning
    Zhou, Chuhao
    Lin, Peiqun
    Yan, Mingyue
    [J]. Huanan Ligong Daxue Xuebao/Journal of South China University of Technology (Natural Science), 2023, 51 (04): : 101 - 114