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基于智能手机的无标记运动捕捉用于无障碍康复:一项计算机视觉研究。

Smartphone-Based Markerless Motion Capture for Accessible Rehabilitation: A Computer Vision Study.

作者信息

Cunha Bruno, Maçães José, Amorim Ivone

机构信息

CINTESIS@RISE, CINTESIS.UPT, Department of Science and Technology, Portucalense University, Rua Dr. António Bernardino de Almeida 541, 4200-072 Porto, Portugal.

Porto Research, Technology & Innovation Center, Polytechnic of Porto (IPP), Rua Arquitecto Lobão Vital, 172, 4200-375 Porto, Portugal.

出版信息

Sensors (Basel). 2025 Sep 2;25(17):5428. doi: 10.3390/s25175428.

DOI:10.3390/s25175428
PMID:40942854
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC12431438/
Abstract

Physical rehabilitation is crucial for injury recovery, offering pain relief and faster healing. However, traditional methods rely heavily on in-person professional feedback, which can be time-consuming, expensive, and prone to human error, limiting accessibility and effectiveness. As a result, patients are often encouraged to perform exercises at home; however, due to the lack of professional guidance, motivation dwindles and adherence becomes a challenge. To address this, this paper proposes a smartphone-based solution that enables patients to receive exercise feedback independently. This paper reviews current Computer Vision systems for assessing rehabilitation exercises and introduces an intelligent system designed to assist patients in their recovery. Our proposed system uses motion tracking based on Computer Vision, analyzing videos recorded with a smartphone. With accessibility as a priority, the system is evaluated against the advanced Qualysis Motion Capture System using a dataset labeled by expert physicians. The framework focuses on human pose detection and movement quality assessment, aiming to reduce recovery times, minimize human error, and make rehabilitation more accessible. This proof-of-concept study was conducted as a pilot evaluation involving 15 participants, consistent with earlier work in the field, and serves to assess feasibility before scaling to larger datasets. This innovative approach has the potential to transform rehabilitation, providing accurate feedback and support to patients without the need for in-person supervision or specialized equipment.

摘要

物理康复对于损伤恢复至关重要,可缓解疼痛并加快愈合。然而,传统方法严重依赖当面的专业反馈,这可能既耗时又昂贵,还容易出现人为错误,从而限制了其可及性和有效性。因此,患者常被鼓励在家中进行锻炼;然而,由于缺乏专业指导,积极性会逐渐下降,坚持锻炼也成为一项挑战。为解决这一问题,本文提出了一种基于智能手机的解决方案,使患者能够独立获得锻炼反馈。本文回顾了当前用于评估康复锻炼的计算机视觉系统,并介绍了一个旨在帮助患者康复的智能系统。我们提出的系统使用基于计算机视觉的运动跟踪技术,分析用智能手机录制的视频。以可及性为首要目标,该系统使用由专家医生标注的数据集,与先进的Qualysis运动捕捉系统进行对比评估。该框架专注于人体姿态检测和运动质量评估,旨在缩短恢复时间、减少人为错误并使康复更易实现。这项概念验证研究作为一项试点评估开展,涉及15名参与者,与该领域早期的工作一致,旨在在扩展到更大数据集之前评估其可行性。这种创新方法有潜力改变康复方式,无需当面监督或专用设备就能为患者提供准确的反馈和支持。

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