Department of Mechanical Engineering and Construction, Universitat Jaume I, 12071, Castelló de la Plana, Spain.
Sci Data. 2023 Nov 20;10(1):814. doi: 10.1038/s41597-023-02723-w.
This work presents a dataset of human hand kinematics and forearm muscle activation collected during the performance of a wide variety of activities of daily living (ADLs), with tagged characteristics of products and tasks. A total of 26 participants performed 161 ADLs selected to be representative of common elementary tasks, grasp types, product orientations and performance heights. 105 products were used, being varied regarding shape, dimensions, weight and type (common products and assistive devices). The data were recorded using CyberGlove instrumented gloves on both hands measuring 18 degrees of freedom on each and seven surface EMG sensors per arm recording muscle activity. Data of more than 4100 ADLs is presented in this dataset as MATLAB structures with full continuous recordings, which may be used in applications such as machine learning or to characterize healthy human hand behaviour. The dataset is accompanied with a custom data visualization application (ERGOMOVMUS) as a tool for ergonomics applications, allowing visualization and calculation of aggregated data from specific task, product and/or participants' characteristics.
本工作介绍了一个人类手部运动学和前臂肌肉激活数据集,这些数据是在执行各种日常生活活动(ADL)时采集的,具有标记的产品和任务特征。共有 26 名参与者执行了 161 项 ADL,这些 ADL 被选择为常见基本任务、抓握类型、产品方向和操作高度的代表。使用了 105 种产品,这些产品在形状、尺寸、重量和类型(常见产品和辅助设备)方面有所不同。数据是使用 CyberGlove 仪器手套在双手上记录的,每个手套测量 18 个自由度,每个手臂有 7 个表面肌电图传感器记录肌肉活动。该数据集中提供了超过 4100 项 ADL 的数据,以 MATLAB 结构的形式呈现,具有完整的连续记录,可用于机器学习等应用,或用于描述健康人类手部行为。该数据集还附带了一个自定义数据可视化应用程序(ERGOMOVMUS),作为人体工程学应用的工具,允许从特定任务、产品和/或参与者特征可视化和计算聚合数据。