IEEE Access | |
Muscle Activity Analysis Using Higher-Order Tensor Decomposition: Application to Muscle Synergy Extraction | |
Eli Kinney-Lang1  Javier Escudero1  Ahmed Ebied1  Loukianos Spyrou1  | |
[1] School of Engineering, Institute for Digital Communications, The University of Edinburgh, Edinburgh, U.K.; | |
关键词: Muscle synergy; NMF; PARAFAC; shared synergies; task-specific synergies; tensor decomposition; | |
DOI : 10.1109/ACCESS.2019.2902122 | |
来源: DOAJ |
【 摘 要 】
Higher order tensor decompositions have hardly been used in muscle activity analysis despite multichannel electromyography (EMG) datasets naturally occurring as multi-way structures. Here, we seek to demonstrate and discuss the potential of tensor decompositions as a framework to estimate muscle synergies from the third-order EMG tensors built by stacking repetitions of multi-channel EMG for several tasks. We compare the two most widespread tensor decomposition models-parallel factor analysis (PARAFAC) and Tucker-in muscle synergy analysis of the wrist's three main degrees of freedom (DoF) using the public first Ninapro database. Furthermore, we proposed a constrained Tucker decomposition (consTD) method for efficient synergy extraction building on the power of tensor decompositions. This method is proposed as a direct novel approach for shared and task-specific synergy estimation from two biomechanically related tasks. Our approach is compared with the current standard approach of repetitively applying non-negative matrix factorization (NMF) to a series of movements. The results show that the consTD method is suitable for synergy extraction compared with PARAFAC and Tucker. Moreover, exploiting the multi-way structure of muscle activity, the proposed methods successfully identified shared and task-specific synergies for all three DoFs tensors. These were found to be robust to disarrangement with regard to task-repetition information, unlike the commonly used NMF. In summary, we demonstrate how to use tensors to characterize muscle activity and develop a new consTD method for muscle synergy extraction that could be used for shared and task-specific synergies identification. We expect that this paper will pave the way for the development of novel muscle activity analysis methods based on higher order techniques.
【 授权许可】
Unknown