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Comparison of Initialization Techniques for the Accurate Extraction of Muscle Synergies from Myoelectric Signals via Nonnegative Matrix Factorization

机译:初始化技术通过非负矩阵分解精确提取肌电信号的肌肉协同效应的比较

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摘要

The main goal of this work was to assess the performance of different initializations of matrix factorization algorithms for an accurate identification of muscle synergies. Currently, nonnegative matrix factorization (NNMF) is the most commonly used method to identify muscle synergies. However, it has been shown that NNMF performance might be affected by different kinds of initialization. The present study aims at optimizing the traditional NNMF initialization for data with partial or complete temporal dependencies. For this purpose, three different initializations are used random, SVD-based, and sparse. NNMF was used to identify muscle synergies from simulated data as well as from experimental surface EMG signals. Simulated data were generated from synthetic independent and dependent synergy vectors (i.e., shared muscle components), whose activation coefficients were corrupted by simulating controlled degrees of correlation. Similarly, EMG data were artificially modified, making the extracted activation coefficients temporally dependent. By measuring the quality of identification of the original synergies underlying the data, it was possible to compare the performance of different initialization techniques. Simulation results demonstrate that sparse initialization performs significantly better than all other kinds of initialization in reconstructing muscle synergies, regardless of the correlation level in the data.
机译:这项工作的主要目标是评估矩阵分解算法的不同初始化的性能,以准确识别肌肉协同效应。目前,非负矩阵分解(NNMF)是最常用的方法来识别肌肉协同效应。但是,已经表明,NNMF性能可能受到不同类型的初始化的影响。本研究旨在优化具有部分或完整时间依赖性的数据的传统NNMF初始化。为此目的,三种不同的初始化使用随机,基于SVD和稀疏。 NNMF用于识别模拟数据以及从实验表面EMG信号中的肌肉协同效应。模拟数据由合成独立和相关的协同载体(即共享肌肉组件)产生,其激活系数通过模拟受控的相关性损坏。类似地,EMG数据是人工修改的,使提取的激活系数在时间上依赖。通过测量数据底层的原始协同效应的识别质量,可以比较不同初始化技术的性能。仿真结果表明,无论数据中的相关级别如何,稀疏初始化都比重建肌肉协同效应的所有其他类型的初始化更好。

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