Vision-Based Gait Analysis for Neurodegenerative Disorders Detection

Vincent Wei Sheng Tan, Wei Xiang Ooi, Yi Fan Chan, Connie Tee, Michael Kah Ong Goh
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Abstract

Parkinson’s Disease (PD) is a debilitating neurodegenerative disorder that affects a significant portion of aging population. Early detection of PD symptoms is crucial to prevent the progression of the disease. Research has revealed that gait attributes can provide valuable insights into PD symptoms. The gait acquisition techniques used in current research can be broadly divided into two categories: vision-based and sensor-based. The markerless vision-based classification model has become a prominent research trend due to its simplicity, low cost and patient comfort. In this study, we propose a novel markerless vision-based approach to obtain gait features from participants' gait videos. A dataset containing gait videos from normal subjects and PD patients were collected, along with a control group of 25 healthy adults. The participants were requested to perform a Timed Up and Go (TUG) test, during which their walking sequences were recorded using two smartphones positioned at different angles, namely side and front. A multi-person pose estimator is used to estimate human skeletal joint points from the collected gait videos. Different gait features associated with PD including stride length, number of steps taken during turn, turning duration, speed and cadence are derived from these key point information to perform PD detection. Experimental results show that the proposed solution achieves an accuracy of 89.39%. The study's findings demonstrate the potential of markerless vision-based gait acquisition techniques for early detection of PD symptoms.
基于视觉的步态分析用于神经退行性疾病检测
帕金森病(Parkinson's Disease,PD)是一种使人衰弱的神经退行性疾病,影响着很大一部分老龄人口。早期发现帕金森病的症状对于防止病情恶化至关重要。研究发现,步态属性可以为了解帕金森病症状提供有价值的信息。目前研究中使用的步态采集技术可大致分为两类:基于视觉的和基于传感器的。基于视觉的无标记分类模型因其简单、低成本和患者舒适度等优点已成为一种突出的研究趋势。在本研究中,我们提出了一种基于视觉的无标记新方法,从参与者的步态视频中获取步态特征。我们收集了一个数据集,其中包含正常人和帕金森病患者的步态视频,以及由 25 名健康成年人组成的对照组。参与者被要求进行定时起立行走(TUG)测试,在测试过程中,使用两部智能手机从侧面和正面等不同角度记录他们的行走序列。从收集到的步态视频中使用多人姿势估算器估算人体骨骼关节点。从这些关键点信息中推导出与肢体缺损相关的不同步态特征,包括步长、转身时的步数、转身持续时间、速度和步频,从而进行肢体缺损检测。实验结果表明,所提出的解决方案达到了 89.39% 的准确率。研究结果证明了基于视觉的无标记步态采集技术在早期检测帕金森病症状方面的潜力。
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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