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基于肌电的人类意图解码的机器学习方法和特征提取技术比较。

Comparing Machine Learning Methods and Feature Extraction Techniques for the EMG Based Decoding of Human Intention.

出版信息

Annu Int Conf IEEE Eng Med Biol Soc. 2021 Nov;2021:4738-4743. doi: 10.1109/EMBC46164.2021.9630998.

Abstract

With an increasing number of robotic and prosthetic devices, there is a need for intuitive Muscle-Machine Interfaces (MuMIs) that allow the user to have an embodied interaction with the devices they are controlling. Such MuMIs can be developed using machine learning based methods that utilize myoelectric activations from the muscles of the user to decode their intention. However, the choice of the learning method is subjective and depends on the features extracted from the raw Electromyography signals as well as on the intended application. In this work, we compare the performance of five machine learning methods and eight time-domain feature extraction techniques in discriminating between different gestures executed by the user of an EMG based MuMI. From the results, it can be seen that the Willison Amplitude performs consistently better for all the machine learning methods compared in this study, while the Zero Crossings achieves the worst results for the Decision Trees and the Random Forests and the Variance offers the worst performance for all the other learning methods. The Random Forests method is shown to achieve the best results in terms of achieved accuracies (has the lowest variance between subjects). In order to experimentally validate the efficiency of the Random Forest classifier and the Willison Amplitude technique, a series of gestures were decoded in a real-time manner from the myoelectric activations of the operator and they were used to control a robot hand.

摘要

随着越来越多的机器人和假肢设备的出现,人们需要直观的肌肉-机器接口(MMI),使用户能够与他们正在控制的设备进行实体交互。这种 MMI 可以使用基于机器学习的方法来开发,该方法利用来自用户肌肉的肌电活动来解码他们的意图。然而,学习方法的选择是主观的,取决于从原始肌电图信号中提取的特征以及预期的应用。在这项工作中,我们比较了五种机器学习方法和八种时域特征提取技术在区分基于肌电的 MMI 用户执行的不同手势方面的性能。从结果可以看出,与本研究中比较的所有机器学习方法相比,Willison 幅度在所有情况下的表现都一致更好,而零交叉在决策树和随机森林中表现最差,方差在所有其他学习方法中表现最差。随机森林方法在准确性方面表现最好(受试者之间的方差最小)。为了实验验证随机森林分类器和 Willison 幅度技术的效率,从操作员的肌电活动中实时解码了一系列手势,并将它们用于控制机器人手。

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