基于表面肌电信号的手部运动检测新数据集

Adilbek Turgunov, Kudratjon Zohirov, Bobur Muhtorov
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引用次数: 6

摘要

在本文中,我们想提出一个新的数据集(DS-dataset),旨在基于SEMG(表面肌电信号)信号检测手部运动。这个DS包括42个健康人的数据和7个手部动作,包括三个完整的手臂动作,即打拳、握力、手指触摸、张开手、三指动作,即食指屈曲、中指屈曲、无名指屈曲和一个等待状态。这些数据是使用BTS最先进的自由肌电信号10通道记录仪获得的。基于DS中的数据,生成信号的特征向量,并使用经典的分类算法(支持向量机- SVM,随机森林- RF和k近邻算法- k-NN)进行分类。所提出的DS可以作为确定电极定位和在正确接收表面肌电信号时检测手部运动的基础。
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A new dataset for the detection of hand movements based on the SEMG signal
in this article, we would like to present a new dataset (DS-dataset) designed to detect hand movements based on SEMG (surface electromyography) signal. This DS includes data from 42 healthy people and seven hand movements, which included three complete arm movements, i.e. punch, grip, finger touch, open hand, three-finger movements, i.e. flexion of the index finger, flexion of the middle finger, flexion of the ring finger, and one waiting state. This data was obtained using BTS's state-of-the-art Free-EMG 10-channel recorder. Based on the data in DS, the characteristic vector of the signal was generated, and were classified using classical classification algorithms (support vector machine - SVM, random forest - RF and k-nearest neighbor algorithm - k-NN). The presented DS can be used as a basis for determining the localization of electrodes and for detecting hand movements when receiving the SEMG correctly.
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