Quantification of finger grasps during activities of daily life using convolutional neural networks: A pilot study

Manuela Paulina Trejo Ramírez, C. J. Thornton, N. Evans, M. Chappell
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Abstract

Quantifying finger kinematics can improve the authors’ understanding of finger function and facilitate the design of efficient prosthetic devices while also identifying movement disorders and assessing the impact of rehabilitation interventions. Here, the authors present a study that quantifies grasps depicted in taxonomies during selected Activities of Daily Living (ADL). A single participant held a series of standard objects using specific grasps which were used to train Convolutional Neural Networks (CNN) for each of the four fingers individually. The experiment also recorded hand manipulation of objects during ADL. Each set of ADL finger kinematic data was tested using the trained CNN, which identified and quantified the grasps required to accomplish each task. Certain grasps appeared more often depending on the finger studied, meaning that even though there are physiological interdependencies, fingers have a certain degree of autonomy in performing dexterity tasks. The identified and most frequent grasps agreed with the previously reported findings, but also highlighted that an individual might have specific dexterity needs which may vary with profession and age. The proposed method can be used to identify and quantify key grasps for finger/hand prostheses, to provide a more efficient solution that is practical in their day‐to‐day tasks.
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利用卷积神经网络量化日常生活活动中的手指抓握动作:试点研究
量化手指运动学可以提高作者对手指功能的理解,促进高效假肢设备的设计,同时还能识别运动障碍并评估康复干预的影响。在此,作者介绍了一项研究,该研究对分类标准中描述的选定日常生活活动(ADL)中的抓握动作进行量化。一名参与者使用特定的抓握方式握住一系列标准物品,这些抓握方式分别用于训练四个手指的卷积神经网络(CNN)。实验还记录了 ADL 过程中手部对物体的操作。每组 ADL 手指运动学数据都使用训练有素的 CNN 进行了测试,CNN 识别并量化了完成每项任务所需的抓握动作。某些抓握动作的出现频率取决于所研究的手指,这意味着即使存在生理上的相互依存关系,手指在执行灵巧性任务时也有一定程度的自主性。已确定的最常见抓握方式与之前报告的结果一致,但也强调了个人可能有特定的灵巧性需求,这些需求可能随职业和年龄的不同而变化。所提出的方法可用于识别和量化手指/手部假肢的关键抓握动作,从而提供更有效的解决方案,使其在日常任务中切实可行。
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Quantification of finger grasps during activities of daily life using convolutional neural networks: A pilot study
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