基于机器学习方法的肌电信号提取、处理与分析及肌肉疲劳检测

D. V. Pravin, A. J. Ragavkumar, S. Abinesh, G. Kavitha
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引用次数: 1

摘要

肌肉疲劳是指一块肌肉或一组肌肉失去收缩和产生力量的能力。这可能是由于多种因素造成的,包括长时间的体育活动、缺氧和肌肉中储存的能量消耗。利用附着在右臂二头肌上的凝胶电极提取原始肌电信号。本文采用的预处理方法涉及不同阶次的滤波器对原始信号进行处理。此外,滤波后的信号还使用仪表放大器进行放大。所设计的硬件提取频率范围在56 Hz到170 Hz之间的信号。在时域中从滤波后的信号中提取6个统计特征。提取的特征被给予各种训练有素的机器学习模型,使用不同的算法,如随机森林(RF),支持向量机(SVM)和逻辑回归(LR)。随机森林算法的准确率最高,约为87.5%,准确率为90%。结果证明,机器学习方法可以有效地从表面肌电信号中检测肌肉疲劳。该方法在精度和决断性方面取得了良好的效果。它可以用于运动训练、康复和人体工程学等领域。该完整电路易于制作和实现,可用于可穿戴和便携式设备的开发。
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Extraction, Processing and Analysis of Surface Electromyogram Signal and Detection of Muscle Fatigue Using Machine Learning Methods
Muscle fatigue is a condition where a muscle or group of muscles lose their ability to contract and generate force. This can happen due to a variety of factors, including prolonged physical activity, lack of oxygen, and depletion of energy stores in the muscle. The raw sEMG signal is extracted by means of gel electrode attached to biceps of right arm. The preprocessing method used in the work involves different order of filters to process the raw signal. Further, the filtered signal is also amplified using instrumentation amplifier. The designed hardware extracts the signal at a frequency range between 56 Hz and 170 Hz. Six statistical features are extracted from the filtered signal in the time domain. The extracted features are given to various trained machine learning models using different algorithms such as Random Forest (RF), Support Vector Machine (SVM) and Logistic Regression (LR). The highest accuracy of about 87.5 % is achieved using random forest algorithm with the precision of 90%. The results that are obtained proves that machine learning methods can be used effectively to detect muscle fatigue from sEMG signals. The proposed method shows the propitious results in terms of accuracy and decisiveness. It can be used in areas such as sports training, rehabilitation, and ergonomics. This complete circuit is easy to produce and implement which could be used in the development of wearable and portable devices.
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