GMH-D: Combining Google MediaPipe and RGB-Depth Cameras for Hand Motor Skills Remote Assessment

G. Amprimo, Claudia Ferraris, Giulia Masi, G. Pettiti, L. Priano
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引用次数: 9

Abstract

Impairment in the execution of simple motor tasks involving hands and fingers could hint at a general worsening of health conditions, particularly in the elderly and in people affected by neurological diseases. The deterioration of hand motor function strongly impacts autonomy in daily activities and, consequently, the perceived quality of life. The early detection of alterations in hand motor skills would allow, for example, to promptly activate treatments and mitigate this discomfort. This preliminary study examines an innovative pipeline based on a single RGB-Depth camera and Google MediaPipe Hands, that is suitable for the remote assessment of hand motor skills through simple tasks commonly used in clinical practice. The study includes several phases. First, the quality of hand tracking is evaluated by comparing reconstructed and real hand 3D trajectories. The proposed solution is then tested on a cohort of healthy volunteers to estimate specific kinematic features for each task. Finally, these features are used to train supervised classifiers and distinguish between “normal” and “altered” performance by simulating typical motor behaviour of real impaired subjects. The preliminary results show the ability of the proposed solution to automatically highlight alterations in hand performance, providing an easy-to-use and non-invasive tool suitable for remote monitoring of hand motor skills.
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GMH-D:结合谷歌MediaPipe和rgb深度相机手部运动技能远程评估
涉及手和手指的简单运动任务的执行受损可能暗示健康状况普遍恶化,特别是在老年人和受神经系统疾病影响的人群中。手部运动功能的恶化严重影响日常活动的自主性,从而影响感知的生活质量。例如,早期发现手部运动技能的变化将允许及时启动治疗并减轻这种不适。本初步研究探讨了一种基于单个RGB-Depth相机和Google MediaPipe Hands的创新管道,该管道适用于通过临床实践中常用的简单任务远程评估手部运动技能。这项研究包括几个阶段。首先,通过对比重建的和真实的手部三维轨迹来评估手部跟踪的质量。然后在一组健康志愿者身上对提出的解决方案进行测试,以估计每个任务的具体运动学特征。最后,这些特征被用于训练监督分类器,并通过模拟真实受损受试者的典型运动行为来区分“正常”和“改变”的表现。初步结果表明,所提出的解决方案能够自动突出手部表现的变化,为手部运动技能的远程监测提供了一种易于使用和非侵入性的工具。
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