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Human Locomotion Activity and Speed Recognition Using Electromyography Based Features

机译:基于肌电图特征的人体运动活动和速度识别

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Human locomotion recognition methods based on electromyography (EMG) signals have not shown robust and accurate classification performance. This is due to the limitations of EMG signals such as its stochastic nature and sensitivity to placement of the sensors, as well as the number of sensors, feature extraction and classification algorithms. In this paper, a robust classification approach with only two features derived from EMG signals is developed to recognize locomotion activities and detect changing speeds. The root means square (RMS) and energy of the EMG signals are the features adopted in this method. The energy of the EMG signal is extracted using energy kernel method. The proposed approach uses a low number of sensors and features, online unsupervised classification, and is generalizable to different lower-limb muscle groups. To evaluate the benefits of the proposed approach, it is initially tested on a public dataset of five participants with two EMG sensors on biceps femoris and gastrocnemius, doing separate trials on the treadmill at various speeds and slopes. We performed additional experiments on two participants with EMG sensors on vastus laterialis and vastus medialis, as treadmill speeds changed online within each trial. The proposed approach achieved significant classification accuracy (above 90%) using the standard unsupervised K-means clustering, for both locomotion activity and speed recognition with the public dataset and our collected data.
机译:基于肌电图(EMG)信号的人类运动识别方法尚未显示出强大而准确的分类性能。这是由于EMG信号的局限性,例如其随机性和对传感器放置的敏感性以及传感器的数量,特征提取和分类算法。在本文中,开发了一种鲁棒的分类方法,该方法仅具有从EMG信号派生的两个特征,以识别运动活动并检测变化的速度。该方法采用的特征是均方根(RMS)和EMG信号的能量。 EMG信号的能量使用能量核方法提取。所提出的方法使用少量的传感器和特征,在线无监督分类,并且可以推广到不同的下肢肌肉群。为了评估该方法的好处,首先在五个参与者的公开数据集上进行了测试,并在股二头肌和腓肠肌上安装了两个EMG传感器,分别在跑步机上以不同的速度和坡度进行了试验。由于在每次试验中在线跑步机的速度都发生了变化,因此我们对两名参与者进行了额外的实验,这些参与者使用的是肌电刺激和肌电刺激。提出的方法使用标准无监督K均值聚类实现了显着的分类准确性(超过90%),可用于移动活动和公共数据集和我们收集的数据的速度识别。

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