Spatiotemporal Road Traffic Anomaly Detection: A Tensor-Based Approach

被引:7
|
作者
Tisljaric, Leo [1 ]
Fernandes, Sofia [2 ]
Caric, Tonci [1 ]
Gama, Joao [2 ]
机构
[1] Univ Zagreb, Fac Transport & Traff Sci, Zagreb 10000, Croatia
[2] Univ Porto, Lab Artificial Intelligence & Decis Support, Inst Syst & Comp Engn Technol & Sci, P-4200 Porto, Portugal
来源
APPLIED SCIENCES-BASEL | 2021年 / 11卷 / 24期
关键词
anomaly detection; tensor-based approach; traffic data; speed transition matrix; Intelligent Transport Systems; OUTLIER DETECTION; DATA IMPUTATION;
D O I
10.3390/app112412017
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
The increased development of urban areas results in a larger number of vehicles on the road network, leading to traffic congestion, which often leads to potentially dangerous situations that can be described as anomalies. The tensor-based methods emerged only recently in applications related to traffic anomaly detection. They outperform other models regarding simultaneously capturing spatial and temporal components, which are of immense importance in traffic dataset analysis. This paper presents a tensor-based method for extracting the spatiotemporal road traffic patterns represented with the speed transition matrices, with the goal of anomaly detection. A novel anomaly detection approach is presented, which relies on computing the center of mass of the observed traffic patterns. The method was evaluated on a large road traffic dataset and was able to detect the most anomalous parts of the urban road network. By analyzing spatial and temporal components of the most anomalous traffic patterns, sources of anomalies can be identified. Results were validated using the extracted domain knowledge from the Highway Capacity Manual. The anomaly detection model achieved a precision score of 92.88%. Therefore, this method finds its usages for safety experts in detecting potentially dangerous road segments, urban traffic planners, and routing applications.
引用
收藏
页数:17
相关论文
共 50 条
  • [1] GLOSS: Tensor-based anomaly detection in spatiotemporal urban traffic data
    Sofuoglu, Seyyid Emre
    Aviyente, Selin
    [J]. SIGNAL PROCESSING, 2022, 192
  • [2] SLRTA: A sparse and low-rank tensor-based approach to internet traffic anomaly detection
    Yu, Xiaotong
    Luo, Ziyan
    Qi, Liqun
    Xu, Yanwei
    [J]. Neurocomputing, 2021, 434 : 295 - 314
  • [3] SLRTA: A sparse and low-rank tensor-based approach to internet traffic anomaly detection
    Yu, Xiaotong
    Luo, Ziyan
    Qi, Liqun
    Xu, Yanwei
    [J]. NEUROCOMPUTING, 2021, 434 : 295 - 314
  • [4] Tensor-Based Spatiotemporal Saliency Detection
    Dou, Hao
    Li, Bin
    Deng, Qianqian
    Zhang, Lirui
    Pan, Zhihong
    Tian, Jinwen
    [J]. MIPPR 2017: REMOTE SENSING IMAGE PROCESSING, GEOGRAPHIC INFORMATION SYSTEMS, AND OTHER APPLICATIONS, 2018, 10611
  • [5] Tensor-based anomaly detection: An interdisciplinary survey
    Fanaee-T, Hadi
    Gama, Joao
    [J]. KNOWLEDGE-BASED SYSTEMS, 2016, 98 : 130 - 147
  • [6] A joint tensor-based model for hyperspectral anomaly detection
    Zhang, Lili
    Cheng, Baozhi
    [J]. GEOCARTO INTERNATIONAL, 2021, 36 (01) : 47 - 59
  • [7] A tensor-based hierarchical process monitoring approach for anomaly detection in additive manufacturing
    Yang, Wei
    Grasso, Marco
    Colosimo, Bianca Maria
    Paynabar, Kamran
    [J]. QUALITY AND RELIABILITY ENGINEERING INTERNATIONAL, 2023, 39 (02) : 630 - 650
  • [8] Tensor-Based Online Network Anomaly Detection and Diagnosis
    Shajari, Mehdi
    Geng, Hongxiang
    Hu, Kaixuan
    Leon-Garcia, Alberto
    [J]. IEEE ACCESS, 2022, 10 : 85792 - 85817
  • [9] Tensor-Based Online Network Anomaly Detection and Diagnosis
    Shajari, Mehdi
    Geng, Hongxiang
    Hu, Kaixuan
    Leon-Garcia, Alberto
    [J]. IEEE Access, 2022, 10 : 85792 - 85817
  • [10] Anomaly Detection in X-ray Security Imaging: a Tensor-Based Learning Approach
    Naji, Mohamad
    Anaissi, Ali
    Braytee, Ali
    Goyal, Madhu
    [J]. 2021 INTERNATIONAL JOINT CONFERENCE ON NEURAL NETWORKS (IJCNN), 2021,