Title :
Breaking It Down Is Better: Haptic Decomposition of Complex Movements Aids in Robot-Assisted Motor Learning
Author :
Klein, Julius ; Spencer, Steven J. ; Reinkensmeyer, David J.
Author_Institution :
Dept. of Mech. & Aerosp. Eng., Univ. of California-Irvine, Irvine, CA, USA
fDate :
5/1/2012 12:00:00 AM
Abstract :
Training with haptic guidance has been proposed as a technique for learning complex movements in rehabilitation and sports, but it is unclear how to best deliver guidance-based training. Here, we hypothesized that breaking down a complex movement, similar to a tennis backhand, into simpler parts and then using haptic feedback from a robotic exoskeleton would help the motor system learn the movement. We also examined how the particular form of the decomposition affected learning. Three groups of unimpaired participants trained with the target arm movement broken down in three ways: 1) elbow flexion/extension and the unified shoulder motion independently (“anatomical” decomposition), 2) three component shoulder motions in Euler coordinates and elbow flexion/extension (“Euler” decomposition), or 3) the motion of the tip of the elbow and motion of the hand with respect to the elbow, independently (“visual” decomposition). A control group practiced the same number of movements, but experienced the target motion only, achieving eight times more direct practice with this motion. Despite less experience with the target motion, part training was better, but only when the arm trajectory was decomposed into anatomical components. Varying robotic movement training to include practice of simpler, anatomically-isolated motions may enhance its efficacy.
Keywords :
handicapped aids; haptic interfaces; learning systems; medical robotics; motion control; patient rehabilitation; sport; training; Euler coordinates; Euler decomposition; anatomical decomposition; anatomically-isolated motions; complex movement aids; complex movement learning; component shoulder motions; elbow flexion-extension; guidance-based training; haptic decomposition; haptic feedback; rehabilitation; robot-assisted motor learning; robotic exoskeleton; robotic movement training; sports; tennis backhand; unified shoulder motion; visual decomposition; Elbow; Haptic interfaces; Joints; Robots; Training; Trajectory; Visualization; Haptic arm exoskeleton; motor learning; parallel mechanism; robot assisted movements; whole-part practice; Adult; Algorithms; Arm; Biomechanics; Data Interpretation, Statistical; Female; Gravitation; Humans; Joints; Learning; Male; Memory; Motor Skills; Movement; Robotics; Stroke;
Journal_Title :
Neural Systems and Rehabilitation Engineering, IEEE Transactions on
DOI :
10.1109/TNSRE.2012.2195202