Author/Authors :
Huang, Pingao Shenzhen Institutes of Advanced Technology (SIAT) - Chinese Academy of Sciences (CAS) - Shenzhen, China , Wang, Hui Shenzhen Institutes of Advanced Technology (SIAT) - Chinese Academy of Sciences (CAS) - Shenzhen, China , Wang, Yuan Shenzhen Institutes of Advanced Technology (SIAT) - Chinese Academy of Sciences (CAS) - Shenzhen, China , Liu, Zhiyuan Shenzhen Institutes of Advanced Technology (SIAT) - Chinese Academy of Sciences (CAS) - Shenzhen, China , Williams Samuel, Oluwarotimi Shenzhen Institutes of Advanced Technology (SIAT) - Chinese Academy of Sciences (CAS) - Shenzhen, China , Yu, Mei Shenzhen Institutes of Advanced Technology (SIAT) - Chinese Academy of Sciences (CAS) - Shenzhen, China , Li, Xiangxin Shenzhen Institutes of Advanced Technology (SIAT) - Chinese Academy of Sciences (CAS) - Shenzhen, China , Chen, Shixiong Shenzhen Institutes of Advanced Technology (SIAT) - Chinese Academy of Sciences (CAS) - Shenzhen, China , Li, Guanglin Shenzhen Institutes of Advanced Technology (SIAT) - Chinese Academy of Sciences (CAS) - Shenzhen, China
Abstract :
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. +e 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. +ese 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.
Keywords :
Upper-Limb , Human-Robot , EMG , Muscle