Chang Jason, Phinyomark Angkoon, Bateman Scott, Scheme Erik
Annu Int Conf IEEE Eng Med Biol Soc. 2020 Jul;2020:3448-3451. doi: 10.1109/EMBC44109.2020.9176615.
Recent advancements in wearable technologies have increased the potential for practical gesture recognition systems using electromyogram (EMG) signals. However, despite the high classification accuracies reported in many studies (> 90%), there is a gap between academic results and industrial success. This is in part because state-of-the-art EMG-based gesture recognition systems are commonly evaluated in highly-controlled laboratory environments, where users are assumed to be resting and performing one of a closed set of target gestures. In real world conditions, however, a variety of non-target gestures are performed during activities of daily living (ADLs), resulting in many false positive activations. In this study, the effect of ADLs on the performance of EMG-based gesture recognition using a wearable EMG device was investigated. EMG data for 14 hand and finger gestures, as well as continuous activity during uncontrolled ADLs (>10 hours in total) were collected and analyzed. Results showed that (1) the cluster separability of 14 different gestures during ADLs was 171 times worse than during rest; (2) the probability distributions of EMG features extracted from different ADLs were significantly different (p <; 0.05). (3) of the 14 target gestures, a right angle gesture (extension of the thumb and index finger) was least often inadvertently activated during ADLs. These results suggest that ADLs and other non-trained gestures must be taken into consideration when designing EMG-based gesture recognition systems.
可穿戴技术的最新进展增加了使用肌电图(EMG)信号实现实用手势识别系统的可能性。然而,尽管许多研究报告的分类准确率很高(>90%),但学术成果与产业成功之间仍存在差距。部分原因在于,基于EMG的先进手势识别系统通常在高度受控的实验室环境中进行评估,在这种环境中,假定用户处于休息状态并执行一组封闭的目标手势之一。然而,在现实世界中,在日常生活活动(ADL)期间会执行各种非目标手势,从而导致许多误激活。在本研究中,研究了ADL对使用可穿戴EMG设备的基于EMG的手势识别性能的影响。收集并分析了14种手部和手指手势的EMG数据,以及在不受控制的ADL期间的连续活动(总共>10小时)。结果表明:(1)ADL期间14种不同手势的聚类可分离性比休息期间差171倍;(2)从不同ADL中提取的EMG特征的概率分布有显著差异(p<0.05)。(3)在14种目标手势中,直角手势(拇指和食指伸展)在ADL期间最不容易被意外激活。这些结果表明,在设计基于EMG的手势识别系统时,必须考虑ADL和其他未训练的手势。