基于骨骼的变压器在腰痛物理康复训练中的错误分类和更好的反馈。

Aleksa Marusic, Sao Mai Nguyen, Adriana Tapus
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引用次数: 0

摘要

健康护理专家建议的身体康复训练可以帮助从各种肌肉骨骼疾病中恢复,并防止再次受伤。然而,在没有直接监督的情况下,患者的参与往往会随着时间的推移而减少,这就是为什么需要一个自动监测系统。近年来,在物理康复训练的质量评价方面取得了很大进展。他们中的大多数只提供一个二元分类,如果性能是正确的或不正确的,少数提供一个连续的分数。这些信息不足以帮助患者提高他们的表现。在这项工作中,我们提出了一种用于康复训练错误分类的算法,从而向更详细地反馈给患者迈出了第一步。我们专注于基于骨骼的运动评估,它利用人体姿势估计来评估运动。受近期康复训练质量评估算法的启发,我们提出了一种基于transformer的分类模型。我们的模型受到HyperFormer人类动作识别方法的启发,并适应我们的问题和数据集。评估是在KERAAL数据集上完成的,因为它是唯一一个具有明确错误标签的医学数据集,并且我们的模型明显优于最先进的方法。此外,我们通过提出一种计算每次运动中关节重要性的方法,弥合了向更好地反馈给患者的差距。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Skeleton-Based Transformer for Classification of Errors and Better Feedback in Low Back Pain Physical Rehabilitation Exercises.

Physical rehabilitation exercises suggested by healthcare professionals can help recovery from various musculoskeletal disorders and prevent re-injury. However, patients' engagement tends to decrease over time without direct supervision, which is why there is a need for an automated monitoring system. In recent years, there has been great progress in quality assessment of physical rehabilitation exercises. Most of them only provide a binary classification if the performance is correct or incorrect, and a few provide a continuous score. This information is not sufficient for patients to improve their performance. In this work, we propose an algorithm for error classification of rehabilitation exercises, thus making the first step toward more detailed feedback to patients. We focus on skeleton-based exercise assessment, which utilizes human pose estimation to evaluate motion. Inspired by recent algorithms for quality assessment during rehabilitation exercises, we propose a Transformer-based model for the described classification. Our model is inspired by the HyperFormer method for human action recognition, and adapted to our problem and dataset. The evaluation is done on the KERAAL dataset, as it is the only medical dataset with clear error labels for the exercises, and our model significantly surpasses state-of-the-art methods. Furthermore, we bridge the gap towards better feedback to the patients by presenting a way to calculate the importance of joints for each exercise.

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