Sensitivity analysis of driving event classification using smartphone motion data: case of classifier type, sensor bundling, and data acquisition rate

被引:1
|
作者
Sarteshnizi, Iman Taheri [1 ]
Khomeini, Farbod Tavakkoli [2 ]
Khedri, Borna [3 ]
Samimi, Amir [1 ]
机构
[1] Sharif Univ Technol, Dept Civil Engn, Tehran, Iran
[2] Southern Methodist Univ, Dept Civil & Environm Engn, Dallas, TX USA
[3] Univ Washington, Dept Civil & Environm Engn, Seattle, WA USA
关键词
driving behavior; machine learning; mobile sensors; sensitivity analysis; SYSTEM;
D O I
10.1080/15472450.2022.2140048
中图分类号
U [交通运输];
学科分类号
08 ; 0823 ;
摘要
Classification of driving events is a crucial stage in driving behavior monitoring using smartphone sensory data. It has not been previously explored that to what extent classification performance depends on the classifier type and input data characteristics. To fill this gap, a real-world experiment is designed for supervised data collection. Then the effects of different machine learning (ML) classifiers, data sampling rates, and sensor combinations on the final classification accuracy are demonstrated. A considerable number of labeled events (4114) containing 11 types of driving maneuvers are collected using base sensors (accelerometer and gyroscope) and composite sensors (linear accelerometer and rotation vector) available in smartphones. Several models using 23 ML algorithms are trained. The sensitivity of these models is analyzed by changing the characteristics of the input data concerning the type of ML classifier, data sampling rate, and the bundle of mobile sensors. It is demonstrated that: (1) F1 scores vary from 70 to 96% for different ML classifiers, (2) F1 scores drop 30-40% depending on the classifier type when reducing the data sampling rate, and (3) using all four sensors as a bundle for classifying driving events is not reasonable since an approximate equal F1 score is achievable by a three-sensor bundle which includes an accelerometer and a linear accelerometer.
引用
收藏
页码:476 / 493
页数:18
相关论文
共 50 条
  • [21] Electrochemiluminescence Mechanisms Investigated with Smartphone-Based Sensor Data Modeling, Parameter Estimation and Sensitivity Analysis
    Rivera, Elmer Ccopa
    Summerscales, Rodney L.
    Uppala, Padma P. Tadi
    Kwon, Hyun J.
    CHEMISTRYOPEN, 2020, 9 (08) : 854 - 863
  • [22] Driving behavior analysis and classification by vehicle OBD data using machine learning
    Kumar, Raman
    Jain, Anuj
    JOURNAL OF SUPERCOMPUTING, 2023, 79 (16): : 18800 - 18819
  • [23] Driving behavior analysis and classification by vehicle OBD data using machine learning
    Raman kumar
    Anuj Jain
    The Journal of Supercomputing, 2023, 79 : 18800 - 18819
  • [24] Classification of Summarized Sensor Data Using Sampling and Clustering: A Performance Analysis
    Lavanya, P. G.
    Mallappa, Suresha
    RECENT TRENDS IN IMAGE PROCESSING AND PATTERN RECOGNITION (RTIP2R 2016), 2017, 709 : 159 - 172
  • [25] Event Classification Using Adaptive Cluster-Based Ensemble Learning of Streaming Sensor Data
    Shahi, Ahmad
    Woodford, Brendon J.
    Deng, Jeremiah D.
    AI 2015: ADVANCES IN ARTIFICIAL INTELLIGENCE, 2015, 9457 : 505 - 516
  • [26] Modeling time-to-event (survival) data using classification tree analysis
    Linden, Ariel
    Yarnold, Paul R.
    JOURNAL OF EVALUATION IN CLINICAL PRACTICE, 2017, 23 (06) : 1299 - 1308
  • [27] Sperm Motility Analysis by using Recursive Kalman Filters with the smartphone based data acquisition and reporting approach
    Ilhan, Hamza Osman
    Yuzkat, Mecit
    Aydin, Nizamettin
    EXPERT SYSTEMS WITH APPLICATIONS, 2021, 186
  • [28] Learning a Privacy-Preserving Global Feature Set for Mood Classification Using Smartphone Activity and Sensor Data
    King, Sayde
    Ebraheem, Mohamed
    Zanna, Khadija
    Neal, Tempestt
    2020 15TH IEEE INTERNATIONAL CONFERENCE ON AUTOMATIC FACE AND GESTURE RECOGNITION (FG 2020), 2020, : 582 - 586
  • [29] Modeling of time-dependent safety performance using anonymized and aggregated smartphone-based dangerous driving event data
    Yang, Di
    Xie, Kun
    Ozbay, Kaan
    Yang, Hong
    Budnick, Noah
    ACCIDENT ANALYSIS AND PREVENTION, 2019, 132
  • [30] Tackling the problem of classification with noisy data using Multiple Classifier Systems: Analysis of the performance and robustness
    Saez, Jose A.
    Galar, Mikel
    Luengo, Julian
    Herrera, Francisco
    INFORMATION SCIENCES, 2013, 247 : 1 - 20