• DocumentCode
    86492
  • Title

    Toward Automatic Activity Classification and Movement Assessment During a Sports Training Session

  • Author

    Ahmadi, Amin ; Mitchell, Edmond ; Richter, Chris ; Destelle, Francois ; Gowing, Marc ; O´Connor, Noel E. ; Moran, Kieran

  • Author_Institution
    Insight: Center for Data Analytics, Dublin City Univ., Dublin, Ireland
  • Volume
    2
  • Issue
    1
  • fYear
    2015
  • fDate
    Feb. 2015
  • Firstpage
    23
  • Lastpage
    32
  • Abstract
    Motion analysis technologies have been widely used to monitor the potential for injury and enhance athlete performance. However, most of these technologies are expensive, can only be used in laboratory environments, and examine only a few trials of each movement action. In this paper, we present a novel ambulatory motion analysis framework using wearable inertial sensors to accurately assess all of an athlete´s activities in real training environment. We first present a system that automatically classifies a large range of training activities using the discrete wavelet transform (DWT) in conjunction with a random forest classifier. The classifier is capable of successfully classifying various activities with up to 98% accuracy. Second, a computationally efficient gradient descent algorithm is used to estimate the relative orientations of the wearable inertial sensors mounted on the shank, thigh, and pelvis of a subject, from which the flexion-extension knee and hip angles are calculated. These angles, along with sacrum impact accelerations, are automatically extracted for each stride during jogging. Finally, normative data are generated and used to determine if a subject´s movement technique differed to the normative data in order to identify potential injury-related factors. For the joint angle data, this is achieved using a curve-shift registration technique. It is envisaged that the proposed framework could be utilized for accurate and automatic sports activity classification and reliable movement technique evaluation in various unconstrained environments for both injury management and performance enhancement.
  • Keywords
    discrete wavelet transforms; gradient methods; medical signal processing; signal classification; sport; DWT; automatic activity classification; computationally efficient gradient descent algorithm; curve-shift registration technique; discrete wavelet transform; motion analysis technologies; movement assessment; random forest classifier; sports training session; wearable inertial sensors; Accelerometers; Biomedical monitoring; Discrete wavelet transforms; Injuries; Intelligent sensors; Medical devices; Medical services; Motion control; Wireless communication; Wireless sensor networks; Activity classification; Biomechanics; Curve shift registration; Knee joint angle; Sensor fusion; Smart and connected health; Technique assessment; Wearable inertial sensor; biomechanics; curve shift registration; knee joint angle; sensor fusion; smart and connected health; technique assessment; wearable inertial sensor;
  • fLanguage
    English
  • Journal_Title
    Internet of Things Journal, IEEE
  • Publisher
    ieee
  • ISSN
    2327-4662
  • Type

    jour

  • DOI
    10.1109/JIOT.2014.2377238
  • Filename
    6981909