下一代跌倒检测:利用人体姿态估计和变压器技术。

IF 1.2 Q4 HEALTH POLICY & SERVICES
Health Systems Pub Date : 2024-10-26 eCollection Date: 2025-01-01 DOI:10.1080/20476965.2024.2395574
Edward R Sykes
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引用次数: 0

摘要

老年人跌倒正以惊人的速度发生,给老年人带来重大健康风险。目前的跌倒检测系统往往缺乏准确性、有效性和隐私考虑。本研究结合变压器深度学习模型,研究了三种领先的人体姿势估计框架,以开发轻量级、隐私保护的跌倒检测系统。主要特点包括:1)它运行在低功耗设备上,如树莓派;2)被动监控老年人,不需要主动参与;3)它可以部署在任何住宅或高级护理机构;4)不依赖可穿戴设备;5)所有处理都在本地进行,确保隐私,只有跌倒警报才会发送给护理人员。在实际测试中,该模型的灵敏度为95.24%,特异度为89.80%,准确率为98.00%,F1评分为90.91%,准确率为95.24%,在保护隐私和安全的前提下,对老年人跌倒进行检测的有效性得到了突出体现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Next-generation fall detection: harnessing human pose estimation and transformer technology.

Elderly falls are occurring at an alarming rate, with significant health risks for seniors. Current fall detection systems often lack accuracy, efficacy, and privacy considerations. This study examines three leading human pose estimation frameworks combined with transformer deep learning models to develop a lightweight, privacy-preserving fall detection system. Key features include: 1) It runs on low-power devices like Raspberry Pis; 2) It monitors seniors passively, without requiring active participation; 3) It can be deployed in any residential or senior care setting; 4) It does not rely on wearables; and 5) All processing occurs locally, ensuring privacy with only fall alerts transmitted to caregivers. In real-world tests, the model achieved 95.24% sensitivity, 89.80% specificity, 98.00% accuracy, a 90.91% F1 score, and 95.24% precision, highlighting its effectiveness in detecting falls among the elderly while maintaining privacy and security.

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来源期刊
Health Systems
Health Systems HEALTH POLICY & SERVICES-
CiteScore
4.20
自引率
11.10%
发文量
20
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