Department of Bioengineering, Faculty of Engineering, Universidad El Bosque, Bogotá, Colombia.
Biomedical Engineering Research Centre (CREB), Department of Automatic Control (ESAII), Universitat Politècnica de Catalunya (UPC), Barcelona, Spain.
Sci Data. 2020 Nov 16;7(1):397. doi: 10.1038/s41597-020-00717-6.
This paper presents a dataset of high-density surface EMG signals (HD-sEMG) designed to study patterns of sEMG spatial distribution over upper limb muscles during voluntary isometric contractions. Twelve healthy subjects performed four different isometric tasks at different effort levels associated with movements of the forearm. Three 2-D electrode arrays were used for recording the myoelectric activity from five upper limb muscles: biceps brachii, triceps brachii, anconeus, brachioradialis, and pronator teres. Technical validation comprised a signals quality assessment from outlier detection algorithms based on supervised and non-supervised classification methods. About 6% of the total number of signals were identified as "bad" channels demonstrating the high quality of the recordings. In addition, spatial and intensity features of HD-sEMG maps for identification of effort type and level, have been formulated in the framework of this database, demonstrating better performance than the traditional time-domain features. The presented database can be used for pattern recognition and MUAP identification among other uses.
本文提出了一个高密度表面肌电信号(HD-sEMG)数据集,旨在研究自愿等长收缩过程中上肢肌肉表面肌电信号空间分布模式。12 名健康受试者在前臂运动相关的不同努力水平下完成了四项不同的等长任务。三个 2D 电极阵列用于记录来自五个上肢肌肉的肌电活动:肱二头肌、肱三头肌、肘肌、桡侧腕屈肌和旋前圆肌。技术验证包括基于监督和非监督分类方法的异常值检测算法的信号质量评估。约 6%的总信号数被确定为“坏”通道,这表明记录的信号质量很高。此外,在这个数据库的框架中,已经制定了用于识别努力类型和水平的 HD-sEMG 图谱的空间和强度特征,其性能优于传统的时域特征。所提出的数据库可用于模式识别和 MUAP 识别等用途。