Choi Changmok, Micera Silvestro, Carpaneto Jacopo, Kim Jung
Mechanical Engineering Department, Korea Advanced Institute of Science and Technology (KAIST), Daejeon 305-701, Korea.
IEEE Trans Biomed Eng. 2009 Jan;56(1):188-91. doi: 10.1109/TBME.2008.2005950.
This paper describes a noninvasive electromyography (EMG) signal-based computer interface and a performance evaluation method based on Fitts' law. The EMG signals induced by volitional wrist movements were acquired from four sites in the lower arm to extract users' intentions, and six classes of wrist movements were distinguished using an artificial neural network. Using the developed interface, a user can move the cursor, click buttons, and type text on a computer. The test setup was built to evaluate the developed interface, and the mouse was tested by five volunteers with intact limbs. The performance of the developed computer interface and the mouse was tested at 1.299 and 7.733 b/s, respectively, and these results were compared with the performance of a commercial noninvasive brain signal interface (0.386 b/s). The results show that the developed interface performed better than the commercial interface, but less satisfactorily than a computer mouse. Although some issues remain to be resolved, the developed EMG interface has the potential to help people with motor disabilities to access computers and Internet environments in a natural and intuitive manner.
本文介绍了一种基于无创肌电图(EMG)信号的计算机接口以及一种基于菲茨定律的性能评估方法。通过从下臂的四个部位采集由随意性腕部运动诱发的肌电信号来提取用户意图,并使用人工神经网络区分六种腕部运动类型。使用所开发的接口,用户可以在计算机上移动光标、点击按钮和输入文本。搭建了测试装置来评估所开发的接口,并由五名肢体健全的志愿者对鼠标进行了测试。所开发的计算机接口和鼠标的性能分别在1.299比特/秒和7.733比特/秒的速度下进行了测试,并将这些结果与一款商用无创脑信号接口的性能(0.386比特/秒)进行了比较。结果表明,所开发的接口比商用接口表现更好,但不如计算机鼠标令人满意。尽管仍有一些问题有待解决,但所开发的肌电接口有潜力帮助运动功能障碍者以自然直观的方式访问计算机和互联网环境。