Nagata Kentaro, Ando Keiichi, Magatani Kazushige, Yamada Masafumi
Kanagawa Rehabilitation Institute, Japan.
Annu Int Conf IEEE Eng Med Biol Soc. 2007;2007:5214-7. doi: 10.1109/IEMBS.2007.4353517.
Conventional research on motion recognition using surface electromyogram (SEMG) is mainly focused on how to process with the signals for pattern recognition. However, it is of much consequence to the motion recognition that measurement channels position including useful information about SEMG pattern recognition is selected. In this paper, we present two topics for the hand motion recognition system based on SEMG. First described is the method to select the suitable measurement channels position of multichannel SEMG for the recognition of hand motion, and the second described is an applied systems based on our proposed method. About channel selection, we use a multichannel matrix-type surface electrode attached to the forearm in order to measure the SEMG generated from many active muscles during hand motions. From those electrodes, system decided the number of measurement channels and the position of measurement channels. This can be achieved by using the Monte Carlo method. The recognition experiments of 18 hand motions show that the average rate was measured to be greater than 96%. And the number of selected channels ranged from 4 to 7. About applied systems, our developed system works as an input interface for the computer (keyboard and pointing device) and a robot hand.
利用表面肌电图(SEMG)进行运动识别的传统研究主要集中在如何处理信号以进行模式识别。然而,选择包含有关SEMG模式识别有用信息的测量通道位置对于运动识别至关重要。在本文中,我们提出了基于SEMG的手部运动识别系统的两个主题。首先描述的是为手部运动识别选择多通道SEMG合适测量通道位置的方法,其次描述的是基于我们提出的方法的应用系统。关于通道选择,我们使用附着在前臂上的多通道矩阵型表面电极来测量手部运动期间许多活跃肌肉产生的SEMG。系统从这些电极中确定测量通道的数量和测量通道的位置。这可以通过使用蒙特卡罗方法来实现。18种手部运动的识别实验表明,平均识别率测得大于96%。所选通道数量范围为4至7个。关于应用系统,我们开发的系统可作为计算机(键盘和指点设备)和机器人手的输入接口。