High-density force myography: A possible alternative for upper-limb prosthetic control.

Ashkan Radmand, Erik Scheme, Kevin Englehart
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引用次数: 94

Abstract

Several multiple degree-of-freedom upper-limb prostheses that have the promise of highly dexterous control have recently been developed. Inadequate controllability, however, has limited adoption of these devices. Introducing more robust control methods will likely result in higher acceptance rates. This work investigates the suitability of using high-density force myography (HD-FMG) for prosthetic control. HD-FMG uses a high-density array of pressure sensors to detect changes in the pressure patterns between the residual limb and socket caused by the contraction of the forearm muscles. In this work, HD-FMG outperforms the standard electromyography (EMG)-based system in detecting different wrist and hand gestures. With the arm in a fixed, static position, eight hand and wrist motions were classified with 0.33% error using the HD-FMG technique. Comparatively, classification errors in the range of 2.2%-11.3% have been reported in the literature for multichannel EMG-based approaches. As with EMG, position variation in HD-FMG can introduce classification error, but incorporating position variation into the training protocol reduces this effect. Channel reduction was also applied to the HD-FMG technique to decrease the dimensionality of the problem as well as the size of the sensorized area. We found that with informed, symmetric channel reduction, classification error could be decreased to 0.02%.

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高密度肌力图:上肢假肢控制的一种可能选择。
最近开发了几种具有高度灵巧控制能力的多自由度上肢假肢。然而,不充分的可控性限制了这些设备的采用。引入更稳健的控制方法可能会带来更高的接受率。本研究探讨了高密度肌力图(HD-FMG)用于假肢控制的适用性。HD-FMG使用高密度的压力传感器阵列来检测由前臂肌肉收缩引起的残肢和窝之间压力模式的变化。在这项工作中,HD-FMG在检测不同的手腕和手势方面优于标准的基于肌电图(EMG)的系统。在手臂处于固定、静态位置的情况下,采用HD-FMG技术对8种手部和手腕运动进行分类,误差为0.33%。相比之下,文献中报道的基于多通道肌电信号的方法的分类误差在2.2%-11.3%之间。与肌电图一样,HD-FMG的位置变化可能会引入分类误差,但将位置变化纳入训练方案可以减少这种影响。通道缩减也被应用于HD-FMG技术,以降低问题的维度以及被感测区域的大小。我们发现,通过知情的、对称的通道缩减,分类误差可以降低到0.02%。
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