The analysis of large amounts of multidimensional road traffic data for anomaly detection is a complex task. Visual analytics can bridge the gap between computational and human approaches to detecting anomalous behavior in road traffic, making the data analysis process more transparent. In this paper, we present a visual analytics framework that provides support for: 1) the exploration of multidimensional road traffic data; 2) the analysis of normal behavioral models built from data; 3) the detection of anomalous events; and 4) the explanation of anomalous events. We illustrate the use of this framework with examples from a large database of real road traffic data collected from several areas in Europe. Finally, we report on feedback provided by expert analysts from Volvo Group Trucks Technology, regarding its design and usability.


    Access

    Access via TIB

    Check availability in my library

    Order at Subito €


    Export, share and cite



    Title :

    Anomaly Detection for Road Traffic: A Visual Analytics Framework




    Publication date :

    2017




    Type of media :

    Article (Journal)


    Type of material :

    Print


    Language :

    English



    Classification :

    BKL:    55.84 / 55.24 / 55.84 Straßenverkehr / 55.24 Fahrzeugführung, Fahrtechnik



    Anomaly Detection for Road Traffic: A Visual Analytics Framework

    Riveiro, Maria / Lebram, Mikael / Elmer, Marcus | IEEE | 2017


    Local Anomaly Detection In Maritime Traffic Using Visual Analytics

    Abreu, Fernando Henrique Oliveira / Soares, Amílcar / Paulovich, Fernando V. et al. | TIBKAT | 2021

    Free access

    A data analytics framework for anomaly detection in flight operations

    Coelho e Silva, Lucas / Murça, Mayara Condé Rocha | Elsevier | 2023


    Traffic analytics system for defining road networks

    LEWIS DANIEL JACOB / ZHANG XIAOCHEN / NGUYEN BRENDA | European Patent Office | 2022

    Free access

    TRAFFIC ANALYTICS SYSTEM FOR DEFINING ROAD NETWORKS

    LEWIS DANIEL JACOB / ZHANG XIAOCHEN / NGUYEN BRENDA | European Patent Office | 2020

    Free access