Li Kaitai, Wang Daming, Chen Zuobing, Guo Dazhi, Pan Shuyi, Liu Hui, Zhou Congcong, Ye Xuesong
The College of Biomedical Engineering and Instrument Science, Biosensor National Special Laboratory, Zhejiang University, Hangzhou, People's Republic of China.
Departments of Physical Medicine and Rehabilitation, The First Affiliated Hospital, Zhejiang University School of Medicine, Hangzhou, People's Republic of China.
Physiol Meas. 2024 Oct 1;45(9). doi: 10.1088/1361-6579/ad7776.
Accurate prediction of unmeasured muscle excitations can reduce the required wearable surface electromyography (sEMG) sensors, which is a critical factor in the study of physiological measurement. Synergy extrapolation uses synergy excitations as building blocks to reconstruct muscle excitations. However, the practical application of synergy extrapolation is still limited as the extrapolation process utilizes unmeasured muscle excitations it seeks to reconstruct. This paper aims to propose and derive methods to provide an avenue for the practical application of synergy extrapolation with non-negative matrix factorization (NMF) methods.Specifically, a tunable Gaussian-Laplacian mixture distribution NMF (GLD-NMF) method and related multiplicative update rules are derived to yield appropriate synergy excitations for extrapolation. Furthermore, a template-based extrapolation structure (TBES) is proposed to extrapolate unmeasured muscle excitations based on synergy weighting matrix templates totally extracted from measured sEMG datasets, improving the extrapolation performance. Moreover, we applied the proposed GLD-NMF method and TBES to selected muscle excitations acquired from a series of single-leg stance tests, walking tests and upper limb reaching tests.Experimental results show that the proposed GLD-NMF and TBES could extrapolate unmeasured muscle excitations accurately. Moreover, introducing synergy weighting matrix templates could decrease the number of sEMG sensors in a series of experiments. In addition, verification results demonstrate the feasibility of applying synergy extrapolation with NMF methods.With the TBES method, synergy extrapolation could play a significant role in reducing data dimensions of sEMG sensors, which will improve the portability of sEMG sensors-based systems and promotes applications of sEMG signals in human-machine interfaces scenarios.
准确预测未测量的肌肉兴奋可以减少所需的可穿戴表面肌电图(sEMG)传感器,这是生理测量研究中的一个关键因素。协同外推法使用协同兴奋作为构建块来重建肌肉兴奋。然而,协同外推法的实际应用仍然有限,因为外推过程利用了它试图重建的未测量肌肉兴奋。本文旨在提出并推导相关方法,为协同外推法与非负矩阵分解(NMF)方法的实际应用提供一条途径。具体而言,推导了一种可调谐高斯 - 拉普拉斯混合分布NMF(GLD - NMF)方法及相关的乘法更新规则,以产生适用于外推的协同兴奋。此外,提出了一种基于模板的外推结构(TBES),用于基于从测量的sEMG数据集中完全提取的协同加权矩阵模板来外推未测量的肌肉兴奋,从而提高外推性能。此外,我们将所提出的GLD - NMF方法和TBES应用于从一系列单腿站立测试、步行测试和上肢伸展测试中获取的选定肌肉兴奋。实验结果表明,所提出的GLD - NMF和TBES能够准确地外推未测量的肌肉兴奋。此外,引入协同加权矩阵模板可以在一系列实验中减少sEMG传感器的数量。此外,验证结果证明了应用NMF方法进行协同外推的可行性。使用TBES方法,协同外推法可以在减少sEMG传感器的数据维度方面发挥重要作用,这将提高基于sEMG传感器的系统的便携性,并促进sEMG信号在人机接口场景中的应用。