PersonalPT: One-shot approach for skeletal-based repetitive action counting for physical therapy

Q2 Health Professions
Alexander Postlmayr, Bhanu Garg, Pamela Cosman, Sujit Dey
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引用次数: 0

Abstract

There are thousands of physical therapy exercises which can be selected to tailor an individual’s rehabilitation program. In addition, exercises can be modified to accommodate a patient’s strength and range of motion as they recover and progress. The large size of the resulting set of exercises and their variations is problematic for current evaluation and feedback techniques, which are trained on a small number of exercises. Real-time exercise repetition counting, a core functionality for automated exercise feedback, is useful for promoting better health outcomes for physical therapy patients performing at-home exercises. We propose PersonalPT, a smartphone-based solution which can be used by physical therapists to customize individual patient treatment plans with a single training example. Our proposed one-shot exercise repetition segmentation model allows physical therapists to enable repetition counting on any exercise for individual patients based on their physical ability and rehabilitative needs. Our machine learning model outperforms other repetition counting algorithms (another semi-supervised and a supervised approach) on three exercise datasets. We demonstrate the feasibility of using computer vision and machine learning, on a smartphone, to perform repetition counting for exercises in real-time.

Abstract Image

PersonalPT:用于物理治疗的基于骨骼的重复动作计数一次性方法
有成千上万种物理治疗运动可以供选择,以量身定制个人的康复计划。此外,随着患者的康复和进步,还可以对练习进行修改,以适应患者的力量和活动范围。由此产生的大量练习及其变化对于目前的评估和反馈技术来说是个问题,因为目前的评估和反馈技术只对少量练习进行训练。实时运动重复次数计算是自动运动反馈的核心功能,它有助于提高物理治疗患者在家进行运动时的健康状况。我们提出的 PersonalPT 是一种基于智能手机的解决方案,物理治疗师可利用它通过单个训练示例为患者定制个性化治疗方案。我们提出的单次运动重复细分模型可让理疗师根据患者的体能和康复需求,对其进行任何运动的重复计数。在三个运动数据集上,我们的机器学习模型优于其他重复计数算法(另一种半监督方法和一种监督方法)。我们证明了在智能手机上使用计算机视觉和机器学习来实时进行运动重复次数计算的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Smart Health
Smart Health Computer Science-Computer Science Applications
CiteScore
6.50
自引率
0.00%
发文量
81
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