Cisotto Giulia, Capuzzo Martina, Guglielmi Anna Valeria, Zanella Andrea
Department of Information Engineering, University of Padova, Via Gradenigo, 6, 35121 Padova, Italy.
Inter-University Consortium for Telecommunications (CNIT), Padova, Italy.
EURASIP J Adv Signal Process. 2022;2022(1):103. doi: 10.1186/s13634-022-00939-3. Epub 2022 Oct 27.
Delivering health care at home emerged as a key advancement to reduce healthcare costs and infection risks, as during the SARS-Cov2 pandemic. In particular, in motor training applications, wearable and portable devices can be employed for movement recognition and monitoring of the associated brain signals. This is one of the contexts where it is essential to minimize the monitoring setup and the amount of data to collect, process, and share. In this paper, we address this challenge for a monitoring system that includes high-dimensional EEG and EMG data for the classification of a specific type of hand movement. We fuse EEG and EMG into the magnitude squared coherence (MSC) signal, from which we extracted features using different algorithms (one from the authors) to solve binary classification problems. Finally, we propose a strategy to increase the interpretability of the machine learning results. The proposed approach provides very low mis-classification errors ( ), with very few and stable MSC features ( of the initial set of available features). Furthermore, we identified a common pattern across algorithms and classification problems, i.e., the activation of the brain areas and 's muscles in 8-80 Hz frequency band, in line with previous literature. Thus, this study represents a step forward to the minimization of a reliable EEG-EMG setup to enable gesture recognition.
如在新冠疫情期间一样,居家提供医疗保健成为降低医疗成本和感染风险的一项关键进展。特别是在运动训练应用中,可穿戴和便携式设备可用于运动识别以及对相关脑信号的监测。在这种情况下,尽量减少监测设置以及要收集、处理和共享的数据量至关重要。在本文中,我们针对一个监测系统应对这一挑战,该系统包含用于特定类型手部运动分类的高维脑电图(EEG)和肌电图(EMG)数据。我们将EEG和EMG融合为幅度平方相干(MSC)信号,从中使用不同算法(其中一种由作者提出)提取特征以解决二分类问题。最后,我们提出一种提高机器学习结果可解释性的策略。所提出的方法具有非常低的误分类错误率( ),且仅需极少且稳定的MSC特征(占初始可用特征集的 )。此外,我们在算法和分类问题中识别出一种共同模式,即在8 - 80赫兹频段激活大脑区域和 的肌肉,这与先前文献一致。因此,本研究朝着最小化可靠的EEG - EMG设置以实现手势识别迈出了一步。