• Title of article

    Visualisation of gait data with Kohonen self-organising neural maps

  • Author/Authors

    Gabor Barton، نويسنده , , Adrian Lees، نويسنده , , Paulo Lisboa، نويسنده , , Steve Attfield، نويسنده ,

  • Issue Information
    روزنامه با شماره پیاپی سال 2006
  • Pages
    8
  • From page
    46
  • To page
    53
  • Abstract
    Self-organising artificial neural networks were used to reduce the complexity of joint kinematic and kinetic data, which form part of a typical instrumented gait assessment. Three-dimensional joint angles, moments and powers during the gait cycle were projected from the multi-dimensional data space onto a topological neural map, which thereby identified gait stem-patterns. Patients were positioned on the map in relation to each other and this enabled them to be compared from their gait patterns. The visualisation of large amounts of complex data in a two-dimensional map labelled with gait patterns is a step towards more objective analysis protocols which may enhance decision making.
  • Keywords
    Self-organising map , Kohonen neural network , Gait , Dimensionality reduction , Visualisation
  • Journal title
    Gait and Posture
  • Serial Year
    2006
  • Journal title
    Gait and Posture
  • Record number

    488797