基于图像的步态时空参数估计(使用单摄像头和 CNN 变换器混合网络)。

Ankhzaya Jamsrandorj, Quynh Hoang Ngan Nguyen, Dawoon Jung, Min Seok Baek, Kyung-Ryoul Mun, Jinwook Kim
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引用次数: 0

摘要

基于视觉的步态分析可在远程连续监测老年人健康状况方面发挥重要作用。然而,大多数基于视觉的方法都是利用人体姿势信息计算步态时空参数并提供平均参数。本研究旨在提出一种简单直接的逐步步态时空参数估计方法。共有 160 名老年人参与了这项研究。数据由 GAITRite 系统和移动摄像头同时采集。以几个 RGB 帧作为输入,以包含空间和时间步态参数的连续一维信号作为输出,训练了三个深度学习网络。训练后的网络估算步长的相关性达到 0.938 或更高,检测步态事件的 F1 分数达到 0.914 或更高。我们的方法可用于根据步态参数监测老年人的健康状况,以便早期诊断疾病、正确治疗和及时干预。
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Image-based Gait Spatiotemporal Parameters Estimation using a Single Camera and CNN-Transformer Hybrid Network.

Vision-based gait analysis can play an important role in the remote and continuous monitoring of the elderly's health conditions. However, most vision-based approaches compute gait spatiotemporal parameters using human pose information and provide average parameters. This study aimed to propose a straightforward method for stride-by-stride gait spatiotemporal parameters estimation. A total of 160 elderly individuals participated in this study. Data were gathered with a GAITRite system and a mobile camera simultaneously. Three deep learning networks were trained with a few RGB frames as input and a continuous 1D signal containing both spatial and temporal gait parameters as output. The trained networks estimated the stride lengths with correlations of 0.938 and more and detected gait events with F1-scores of 0.914 and more.Clinical relevance- The proposed method showed excellent agreements with the GAITRite system in analyzing spatiotemporal gait parameters. Our approach can be applied to monitor the elderly's health conditions based on their gait parameters for early diagnosis of diseases, proper treatment, and timely intervention.

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