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Identification of Upper-Limb Movements Based on Muscle Shape Change Signals for Human-Robot Interaction

机译:基于肌肉形状改变信号的人机交互识别抗肢体运动

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Towards providing efficient human-robot interaction, surface electromyogram (EMG) signals have been widely adopted for the identification of different limb movement intentions. Since the available EMG signal sensors are highly susceptible to external interferences such as electromagnetic artifacts and muscle fatigues, the quality of EMG recordings would be mostly corrupted, which may decay the performance of EMG-based control systems. Given the fact that the muscle shape changes (MSC) would be different when doing various limb movements, the MSC signal would be nonsensitive to electromagnetic artifacts and muscle fatigues and maybe promising for movement intention recognition. In this study, a novel nanogold flexible and stretchable sensor was developed for the acquisition of MSC signals utilized for decoding multiple classes of limb movement intents. More precisely, four sensors were used to measure the MSC signals from the right forearm of each subject when they performed seven classes of movements. Also, six different features were extracted from the measured MSC signals, and a linear discriminant analysis- (LDA-) based classifier was built for movement classification tasks. The experimental results showed that using MSC signals could achieve an average recognition rate of about 96.06?±?1.84% by properly placing the four flexible and stretchable sensors on the forearm. Additionally, when the MSC sampling rate was greater than 100?Hz and the analysis window length was greater than 20?ms, the movement recognition accuracy would be only slightly increased. These pilot results suggest that the MSC-based method should be feasible in movement identifications for human-robot interaction, and at the same time, they provide a systematic reference for the use of the flexible and stretchable sensors in human-robot interaction systems.
机译:为了提供有效的人机相互作用,已经广泛采用了表面电灰度(EMG)信号用于识别不同的肢体运动意图。由于可用的EMG信号传感器非常容易受到外部干扰的影响,例如电磁伪影和肌肉疲劳,因此EMG记录的质量主要损坏,这可能损坏基于EMG的控制系统的性能。鉴于肌肉形状变化(MSC)在做各种肢体运动时会不同,MSC信号对电磁伪影和肌肉疲劳是不敏感的,并且可能有希望用于运动意向识别。在该研究中,开发了一种新颖的纳米型柔性和可拉伸传感器,用于获取用于解码多种类别的肢体运动意义的MSC信号。更确切地说,在进行七种运动时,使用四个传感器来测量来自每个受试者的右前臂的MSC信号。此外,从测量的MSC信号中提取了六种不同的特征,并且建立了基于线性判别分析 - (LDA-)的分类器,用于移动分类任务。实验结果表明,使用MSC信号可以通过适当地放置前臂上的四个柔性和可拉伸的传感器来实现约96.06Ω±1.84%的平均识别率。另外,当MSC采样率大于100·Hz并且分析窗口长度大于20?MS时,运动识别精度将仅略微增加。这些导频结果表明,基于MSC的方法对于人机交互的运动标识应该是可行的,同时,它们为使用人机机器人交互系统中的柔性和可拉伸传感器提供了系统的系统参考。

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