河北水利电力学院学报 ›› 2026, Vol. 36 ›› Issue (2): 73-78.DOI: 10.16046/j.cnki.issn2096-5680.2026.02.012

• 计算机应用与自动控制 • 上一篇    下一篇

基于YOLOv8-pose构建的多模态居家安全监护系统

李亚男, 董子阳, 刘然, 刘雨佳   

  1. 河北水利电力学院计算机系,河北省沧州市黄河西路49号 061001
  • 收稿日期:2025-03-27 修回日期:2025-06-16 出版日期:2026-06-30 发布日期:2026-06-22
  • 作者简介:李亚男(1990-),女,河北黄骅人,博士,研究方向:交通运输管理、数据统计分析。E-mail:yananlii@163.com
  • 基金资助:
    河北省大学生创新训练项目(S202410085027);河北省高等学校科学研究计划青年拔尖人才项目(BJK2023061);河北水利电力学院基本科研业务费研究项目(SYKY2207)

Multimodal Home Safety Monitoring System Based on YOLOv8-Pose

Li Yanan, Dong Ziyang, Liu Ran, Liu Yujia   

  1. Department of Computer Science, Hebei University of Water Resources and Electric Engineering, 06001, Cangzhou, Hebei, China
  • Received:2025-03-27 Revised:2025-06-16 Online:2026-06-30 Published:2026-06-22

摘要: 针对我国老龄化加剧,独居老人日益增多而引发的居家安全问题,文中提出基于YOLOv8-pose构建的多模态居家安全监护系统。该系统包括硬件、软件和服务器端3部分,通过多模态数据采集、模型检测与大数据分析,实现对独居老人全面监护与健康管理。硬件以树莓派4B采集数据,软件采用前后端分离架构搭建管理平台,服务器端运行基于YOLOv8-pose训练的姿态检测模型,可精准识别老人行为并预警。同时,利用大数据分析技术建立老人生活规律数据集,当发现老人异常时,系统即刻通过小程序和Web端提醒子女与社区人员,解决老人突发状况救助问题。实验表明,检测模型的人体姿态识别准确率高达96.3%,且系统在整体成本控制上表现出色,可为我国智慧养老体系完善提供实践参考。

关键词: YOLOv8-pose, 多模态, 居家安全监护系统, 树莓派

Abstract: With the aging population increasing in China, the number of elderly people living alone has risen, highlighting home safety concerns. A multimodal home safety monitoring system based on YOLOv8-pose was proposed. The system integrated hardware, software, and server components to achieve comprehensive monitoring and health management for elderly individuals through multimodal data collection, model detection, and big data analysis. Hardware based on Raspberry Pi 4B was used for data acquisition. A management platform was built using a front-end and back-end separated architecture. The server-side deployed a posture detection model trained on YOLOv8-pose, enabling accurate behavior recognition and real-time alerts. A dataset of daily activity patterns was established using big data analysis techniques. When abnormalities were detected, alerts were sent to family members and community staff via a mini-program and web interface in no time, addressing emergency response challenges. Experiments showed that the human pose recognition accuracy of the detection model reached as high as 96.3%. The system also demonstrated excellent performance in overall cost control, providing practical references for the improvement of China’s smart elderly care system.

Key words: YOLOv8-pose, multimodal, home safety monitoring system, Raspberry Pi

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