In this paper, we present electromyography analysis of human activity - database 1 (EMAHA-DB1), a novel dataset of multi-channel surface electromyography (sEMG) signals to evaluate the activities of daily living (ADL). The dataset is acquired from 25 able-bodied subjects while performing 22 activities categorised according to functional arm activity behavioral system (FAABOS) (3 - full hand gestures, 6 - open/close office draw, 8 - grasping and holding of small office objects, 2 - flexion and extension of finger movements, 2 - writing and 1 - rest). The sEMG data is measured by a set of five Noraxon Ultium wireless sEMG sensors with Ag/Agcl electrodes placed on a human hand. The dataset is analyzed for hand activity recognition classification performance. The classification is performed using four state-ofthe-art machine learning classifiers, including Random Forest (RF), Fine K-Nearest Neighbour (KNN), Ensemble KNN (sKNN) and Support Vector Machine (SVM) with seven combinations of time domain and frequency domain feature sets. The state-of-theart classification accuracy on five FAABOS categories is 83:21% by using the SVM classifier with the third order polynomial kernel using energy feature and auto regressive feature set ensemble. The classification accuracy on 22 class hand activities is 75:39% by the same SVM classifier with the log moments in frequency domain (LMF) feature, modified LMF, time domain statistical (TDS) feature, spectral band powers (SBP), channel cross correlation and local binary patterns (LBP) set ensemble. The analysis depicts the technical challenges addressed by the dataset. The developed dataset can be used as a benchmark for various classification methods as well as for sEMG signal analysis corresponding to ADL and for the development of prosthetics and other wearable robotics.
翻译:在本文中,我们展示了人类活动的电子分析 - 数据库 1 (EMAHA-DB1) 、 多通道表面电子学(sEMG) 信号的新数据集,以评价日常生活活动(ADL) 。 数据集是从25个功能性对象获得的。 同时根据功能性臂活动行为系统(FAABOS) 进行22个分类的活动 (3 - 完整手势, 6 - 开放/ 关闭办公室绘图, 8 - 捕捉和持有小办公对象, 2 - 移动和扩展手指运动, 2 - 移动和扩展, 写和 1 - 休息 。 SEMG 数据由5 Norax Ultion无线 SEMG 传感器来测量 。 数据元性SmellSM 数据集使用SmellM 常规性 数据序列, 将 SMLM 数据序列 和 RDRM 数据序列 数据序列, 将 Slential- 的 Slental- Ral- mexal 的 Ralal 等 和 Ral- mexal 等 的 Ral- mexal- mexal 和 Syal- dal 等数 数据分析。