• DocumentCode
    3125300
  • Title

    An Adapted Gaussian Mixture Model Approach to Accelerometry-Based Movement Classification Using Time-Domain Features

  • Author

    Allen, Felicity R. ; Ambikairajah, Eliathamby ; Lovell, Nigel H. ; Celler, Branko G.

  • Author_Institution
    Graduate Sch. of Biomed. Eng., New South Wales Univ., Sydney, NSW
  • fYear
    2006
  • fDate
    Aug. 30 2006-Sept. 3 2006
  • Firstpage
    3600
  • Lastpage
    3603
  • Abstract
    The accurate classification of everyday movements from accelerometry data will provide a significant step towards the development of effective ambulatory monitoring systems for falls detection and prediction. The search continues for optimal front-end processing methods for use in accelerometry systems. Here, we propose a novel set of time domain features, which achieve a mean accuracy of 91.3% in distinguishing between three postures (sitting, standing and lying) and five movements (sit-to-stand, stand-to-sit, lie-to-stand, stand-to-lie and walking). This is a 39.2% relative improvement in error rate over more commonly used frequency based features. A method for adapting Gaussian Mixture Models to compensate for the problem of limited user-specific training data is also proposed and investigated. The method, which uses Bayesian adaptation, was found to improve classification performance for time domain features, offering a mean relative improvement of 20.2% over a non subject-specific system and 4.5% over a system trained using subject specific data only
  • Keywords
    Gaussian processes; accelerometers; biomechanics; geriatrics; health care; mechanoception; pattern classification; time-domain analysis; Bayesian adaptation; accelerometry-based movement classification; adapted Gaussian mixture model approach; effective ambulatory monitoring system; fall detection; fall prediction; optimal front-end processing method; time-domain features; user-specific training data; Accelerometers; Aging; Classification tree analysis; Frequency; Legged locomotion; Monitoring; Sternum; Support vector machine classification; Support vector machines; Time domain analysis;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    Engineering in Medicine and Biology Society, 2006. EMBS '06. 28th Annual International Conference of the IEEE
  • Conference_Location
    New York, NY
  • ISSN
    1557-170X
  • Print_ISBN
    1-4244-0032-5
  • Electronic_ISBN
    1557-170X
  • Type

    conf

  • DOI
    10.1109/IEMBS.2006.259613
  • Filename
    4462576