Fang Yinfeng, Lu Huiqiao, Liu Han
School of Communication Engineering, Hangzhou Dianzi University, Hangzhou, 310018 Zhejiang China.
College of Computer Science and Software Engineering, Shenzhen University, Shenzhen, 518060 Guangdong China.
Int J Mach Learn Cybern. 2023;14(4):1119-1131. doi: 10.1007/s13042-022-01687-4. Epub 2022 Nov 1.
Bio-signal based hand motion recognition plays a critical role in the tasks of human-machine interaction, such as the natural control of multifunctional prostheses. Although a large number of classification technologies have been taken to improve the motion recognition accuracy, it is still a challenge to achieve acceptable performance for multiple modality input. This study proposes a multi-modality deep forest (MMDF) framework to identify hand motions, in which surface electromyographic signals (sEMG) and acceleration signals (ACC) are fused at the input level. The proposed MMDF framework constitutes of three main stages, sEMG and ACC feature extraction, feature dimension reduction, and a cascade structure deep forest for classification. A public database "Ninapro DB7" is used to evaluate the performance of the proposed framework, and the experimental results show that it can achieve a significantly higher accuracy than that of competitors. Besides, our experimental results also show that MMDF outperforms other traditional classifiers with the input of the single modality of sEMG signals. In sum, this study verifies that ACC signals can be an excellent supplementary for sEMG, and MMDF is a plausible solution to fuse mulit-modality bio-signals for human motion recognition.
基于生物信号的手部运动识别在人机交互任务中起着关键作用,例如对多功能假肢的自然控制。尽管已经采用了大量分类技术来提高运动识别精度,但对于多模态输入而言,实现可接受的性能仍然是一项挑战。本研究提出了一种多模态深度森林(MMDF)框架来识别手部运动,其中表面肌电信号(sEMG)和加速度信号(ACC)在输入层面进行融合。所提出的MMDF框架由三个主要阶段组成,即sEMG和ACC特征提取、特征降维以及用于分类的级联结构深度森林。使用公共数据库“Ninapro DB7”来评估所提出框架的性能,实验结果表明它能够实现比竞争对手显著更高的准确率。此外,我们的实验结果还表明,在仅输入sEMG信号单模态的情况下,MMDF优于其他传统分类器。总之,本研究验证了ACC信号可以作为sEMG的出色补充,并且MMDF是融合多模态生物信号用于人体运动识别的一种可行解决方案。