Department of Mechanical Engineering and Construction, Universitat Jaume I, Castellon de la Plana, Spain.
Information Systems Institute, University of Applied Sciences Western Switzerland (HES-SO Valais), Sierre, Switzerland.
Sci Data. 2020 Jan 9;7(1):12. doi: 10.1038/s41597-019-0349-2.
Modelling hand kinematics is a challenging problem, crucial for several domains including robotics, 3D modelling, rehabilitation medicine and neuroscience. Currently available datasets are few and limited in the number of subjects and movements. The objective of this work is to advance the modelling of hand kinematics by releasing and validating a large publicly available kinematic dataset of hand movements and grasp kinematics. The dataset is based on the harmonization and calibration of the kinematics data of three multimodal datasets previously released (Ninapro DB1, DB2 and DB5, that include electromyography, inertial and dynamic data). The novelty of the dataset is related to the high number of subjects (77) and movements (40 movements, each repeated several times) for which we release for the first time calibrated kinematic data, resulting in the largest available kinematic dataset. Differently from the previous datasets, the data are also calibrated to avoid sensor nonlinearities. The validation confirms that the data are not affected by experimental procedures and that they are similar to data acquired in real-life conditions.
手部运动学建模是一个具有挑战性的问题,在机器人技术、3D 建模、康复医学和神经科学等多个领域都至关重要。目前可用的数据集很少,且在受试者和运动数量方面都受到限制。本工作的目的是通过发布和验证一个大型公开的手部运动和抓握运动运动学数据集,来推进手部运动学建模。该数据集基于对三个先前发布的多模态数据集(Ninapro DB1、DB2 和 DB5,其中包含肌电图、惯性和动态数据)的运动学数据进行协调和校准。该数据集的新颖之处在于,它包含了大量的受试者(77 名)和运动(40 种运动,每种运动重复多次),我们首次发布了经过校准的运动学数据,这使得它成为了目前可用的最大运动学数据集。与之前的数据集不同,这些数据还经过校准以避免传感器非线性。验证结果表明,这些数据不受实验过程的影响,并且与在实际条件下采集的数据相似。