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sEMG-Based Neural Network Prediction Model Selection of Gesture Fatigue and Dataset Optimization

机译:基于SEMG的神经网络预测模型选择手势疲劳和数据集优化

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摘要

The fatigue energy consumption of independent gestures can be obtained by calculating the power spectrum of surface electromyography (sEMG) signals. The existing research studies focus on the fatigue of independent gestures, while the research studies on integrated gestures are few. However, the actual gesture operation mode is usually integrated by multiple independent gestures, so the fatigue degree of integrated gestures can be predicted by training neural network of independent gestures. Three natural gestures including browsing information, playing games, and typing are divided into nine independent gestures in this paper, and the predicted model is established and trained by calculating the energy consumption of independent gestures. The artificial neural networks (ANNs) including backpropagation (BP) neural network, recurrent neural network (RNN), and long short-term memory (LSTM) are used to predict the fatigue of gesture. The support vector machine (SVM) is used to assist verification. Mean square error (MSE), root mean square error (RMSE), and mean absolute error (MAE) are utilized to evaluate the optimal prediction model. Furthermore, the different datasets of the processed sEMG signal and its decomposed wavelet coefficients are trained, respectively, and the changes of error functions of them are compared. The experimental results show that LSTM model is more suitable for gesture fatigue prediction. The processed sEMG signals are appropriate for using as the training set the fatigue degree of one-handed gesture. It is better to use wavelet decomposition coefficients as datasets to predict the high-dimensional sEMG signals of two-handed gestures. The experimental results can be applied to predict the fatigue degree of complex human-machine interactive gestures, help to avoid unreasonable gestures, and improve the user’s interactive experience.
机译:通过计算表面肌电图(SEMG)信号的功率谱来获得独立手势的疲劳能耗。现有的研究研究侧重于独立手势的疲劳,而关于综合手势的研究少数。然而,实际的手势操作模式通常由多个独立的手势整合,因此可以通过培训独立手势的神经网络来预测集成手势的疲劳度。在本文中,三种自然手势包括浏览信息,玩游戏和键入,划分为九个独立手势,通过计算独立手势的能量消耗来建立和培训预测模型。包括背部化(BP)神经网络,经常性神经网络(RNN)和长短期记忆(LSTM)的人工神经网络(ANNS)用于预测手势的疲劳。支持向量机(SVM)用于辅助验证。平均误差(MSE),根均线误差(RMSE),以及平均误差(MAE)用于评估最佳预测模型。此外,分别训练了处理过的SEMG信号的不同数据集及其分解的小波系数,并比较了它们的误差函数的变化。实验结果表明,LSTM模型更适合于姿势疲劳预测。被加工的SEMG信号适用于培训设置单手手势的疲劳度。最好使用小波分解系数作为数据集来预测双手手势的高维半信号。实验结果可以应用于预测复杂的人机交互手势的疲劳度,有助于避免不合理的手势,提高用户的互动体验。

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