Yuan Yangyang, Liu Jionghui, Dai Chenyun, Liu Xiao, Hu Bo, Fan Jiahao
School of Information Science and Technology, Fudan University, Shanghai, 200433, China.
Institute of Science and Technology for Brain-Inspired Intelligence, Fudan University, Shanghai, 200433, China.
J Neuroeng Rehabil. 2024 Dec 31;21(1):233. doi: 10.1186/s12984-024-01526-3.
For surface electromyography (sEMG) based human-machine interaction systems, accurately recognizing the users' gesture intent is crucial. However, due to the existence of subject-specific components in sEMG signals, subject-specific models may deteriorate when applied to new users. In this study, we hypothesize that in addition to subject-specific components, sEMG signals also contain pattern-specific components, which is independent of individuals and solely related to gesture patterns. Based on this hypothesis, we disentangled these two components from sEMG signals with an auto-encoder and applied the pattern-specific components to establish a general gesture recognition model in cross-subject scenarios. Furthermore, we compared the characteristics of the pattern-specific information contained in three categories of EMG measures: signal waveform, time-domain features, and frequency-domain features. Our hypothesis was validated on an open source database. Ultimately, the combination of time- and frequency-domain features achieved the best performance in gesture classification tasks, with a maximum accuracy of 84.3%. For individual feature, frequency-domain features performed the best and were proved most suitable for separating the two components. Additionally, we intuitively visualized the heatmaps of pattern-specific components based on the topological position of electrode arrays and explored their physiological interpretability by examining the correspondence between the heatmaps and muscle activation areas.
对于基于表面肌电图(sEMG)的人机交互系统而言,准确识别用户的手势意图至关重要。然而,由于sEMG信号中存在个体特异性成分,当应用于新用户时,个体特异性模型的性能可能会下降。在本研究中,我们假设除了个体特异性成分外,sEMG信号还包含模式特异性成分,该成分与个体无关,仅与手势模式相关。基于这一假设,我们使用自动编码器从sEMG信号中分离出这两种成分,并应用模式特异性成分在跨个体场景中建立通用的手势识别模型。此外,我们比较了三类肌电测量中包含的模式特异性信息的特征:信号波形、时域特征和频域特征。我们的假设在一个开源数据库上得到了验证。最终,时域和频域特征的组合在手势分类任务中表现最佳,最高准确率达到84.3%。对于单个特征,频域特征表现最佳,被证明最适合分离这两种成分。此外,我们基于电极阵列的拓扑位置对手势模式特异性成分的热图进行了直观可视化,并通过检查热图与肌肉激活区域之间的对应关系来探索其生理可解释性。