Title :
Discrete Versus Continuous Mapping of Facial Electromyography for Human–Machine Interface Control: Performance and Training Effects
Author :
Cler, Meredith J. ; Stepp, Cara E.
Author_Institution :
Boston Univ., Boston, MA, USA
Abstract :
Individuals with high spinal cord injuries are unable to operate a keyboard and mouse with their hands. In this experiment, we compared two systems using surface electromyography (sEMG) recorded from facial muscles to control an onscreen keyboard to type five-letter words. Both systems used five sEMG sensors to capture muscle activity during five distinct facial gestures that were mapped to five cursor commands: move left, move right, move up, move down, and “click”. One system used a discrete movement and feedback algorithm in which the user produced one quick facial gesture, causing a corresponding discrete movement to an adjacent letter. The other system was continuously updated and allowed the user to control the cursor´s velocity by relative activation between different sEMG channels. Participants were trained on one system for four sessions on consecutive days, followed by one crossover session on the untrained system. Information transfer rates (ITRs) were high for both systems compared to other potential input modalities, both initially and with training (Session 1: 62.1 bits/min, Session 4: 105.1 bits/min). Users of the continuous system showed significantly higher ITRs than the discrete users. Future development will focus on improvements to both systems, which may offer differential advantages for users with various motor impairments.
Keywords :
body sensor networks; electromyography; feedback; injuries; man-machine systems; medical signal processing; neurophysiology; continuous mapping; discrete mapping; distinct facial gestures; facial electromyography; facial muscles; feedback algorithm; human-machine interface control; information transfer rates; motor impairments; muscle activity; onscreen keyboard; performance effects; potential input modalities; sEMG channels; sEMG sensors; spinal cord injuries; surface electromyography recording; training effects; Accuracy; Calibration; Continuous time systems; Electrodes; Keyboards; Muscles; Training; Communication rate; electromyography (EMG); human–machine interfaces;
Journal_Title :
Neural Systems and Rehabilitation Engineering, IEEE Transactions on
DOI :
10.1109/TNSRE.2015.2391054