Andrews Alex, Morin Evelyn, McLean Linda
Department of Electrical and Computer Engineering, Queen's University, Kingston, Ontario, Canada.
Annu Int Conf IEEE Eng Med Biol Soc. 2009;2009:2987-90. doi: 10.1109/IEMBS.2009.5332520.
The myoelectric signal has played a major role in the development of prosthesis control technology. A myoelectric classification system has the ability to determine a prosthesis user's intent based solely on his or her muscle activity, thereby allowing for more intuitive prosthetic control. Much work has been done on the recognition of upper arm and gross hand movement tasks, but it was not until accuracy levels approached 100% [3] that more attention was given to specific finger movements. In this study, the effect of electrode array size and arrangement on classification accuracy is investigated for a four-finger typing task. This follows from previous work [1] in which the classification system itself was optimized. Unique advantages were found using array sizes of three and seven electrodes; classification accuracy of 92.7+/-3.9% was found in the latter case across twelve subjects.
肌电信号在假肢控制技术的发展中发挥了重要作用。肌电分类系统能够仅根据假肢使用者的肌肉活动来确定其意图,从而实现更直观的假肢控制。在上臂和手部整体运动任务的识别方面已经开展了大量工作,但直到准确率接近100%[3]时,才开始更多地关注特定手指的运动。在本研究中,针对四指打字任务,研究了电极阵列大小和排列对分类准确率的影响。这是基于之前对分类系统本身进行优化的工作[1]。使用三个和七个电极的阵列尺寸发现了独特的优势;在十二名受试者中,后一种情况下的分类准确率为92.7±3.9%。