Segil Jacob L, Controzzi Marco, Weir Richard F ff, Cipriani Christian
Department of Mechanical Engineering, University of Colorado at Boulder, Boulder, CO;
J Rehabil Res Dev. 2014;51(9):1439-54. doi: 10.1682/JRRD.2014.01.0014.
A myoelectric controller should provide an intuitive and effective human-machine interface that deciphers user intent in real-time and is robust enough to operate in daily life. Many myoelectric control architectures have been developed, including pattern recognition systems, finite state machines, and more recently, postural control schemes. Here, we present a comparative study of two types of finite state machines and a postural control scheme using both virtual and physical assessment procedures with seven nondisabled subjects. The Southampton Hand Assessment Procedure (SHAP) was used in order to compare the effectiveness of the controllers during activities of daily living using a multigrasp artificial hand. Also, a virtual hand posture matching task was used to compare the controllers when reproducing six target postures. The performance when using the postural control scheme was significantly better (p < 0.05) than the finite state machines during the physical assessment when comparing within-subject averages using the SHAP percent difference metric. The virtual assessment results described significantly greater completion rates (97% and 99%) for the finite state machines, but the movement time tended to be faster (2.7 s) for the postural control scheme. Our results substantiate that postural control schemes rival other state-of-the-art myoelectric controllers.
肌电控制器应提供直观且有效的人机界面,能够实时解读用户意图,并且强大到足以在日常生活中运行。已经开发了许多肌电控制架构,包括模式识别系统、有限状态机,以及最近的姿势控制方案。在此,我们对两种类型的有限状态机和一种姿势控制方案进行了比较研究,使用虚拟和物理评估程序,测试了七名非残疾受试者。使用南安普敦手部评估程序(SHAP),以便在使用多抓握人工手进行日常生活活动期间比较控制器的有效性。此外,还使用了虚拟手部姿势匹配任务,以在再现六个目标姿势时比较控制器。当使用SHAP百分比差异度量比较受试者内平均值时,在物理评估期间,使用姿势控制方案的性能明显优于有限状态机(p < 0.05)。虚拟评估结果表明,有限状态机的完成率显著更高(97%和99%),但姿势控制方案的移动时间往往更快(2.7秒)。我们的结果证实,姿势控制方案可与其他先进的肌电控制器相媲美。