• ISSN: 1674-7461
  • CN: 11-5823/TU
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2023, 15(1): 7-12. doi: 10.16670/j.cnki.cn11-5823/tu.2023.01.02

老年人室内危险行为监测预警系统研究

华中科技大学 土木与水利工程学院,武汉 430074

通讯作者: 周迎,

网络出版日期: 2023-02-20

作者简介: 王灵灵(1994-), 女, 在读博士研究生, 主要研究方向: 建筑环境与建筑智能化管理

基金项目: 国家重点研发计划“医养结合服务模式与规范的应用示范”项目 2020YFC2006000

Study on Indoor Risky Behavior Monitoring and Early Warning System for the Elderly

School of Civil and Hydraulic Engineering, Huazhong University of Science and Technology, Wuhan 430074, China

Corresponding author: Ying ZHOU,

Available Online: 2023-02-20

引用本文: 王灵灵, 郭世琪, 周迎, 陈坤辉. 老年人室内危险行为监测预警系统研究[J]. 土木建筑工程信息技术, 2023, 15(1): 7-12. doi: 10.16670/j.cnki.cn11-5823/tu.2023.01.02

Citation: Lingling WANG, Shiqi GUO, Ying ZHOU, Kunhui CHEN. Study on Indoor Risky Behavior Monitoring and Early Warning System for the Elderly[J]. Journal of Information Technologyin Civil Engineering and Architecture, 2023, 15(1): 7-12. doi: 10.16670/j.cnki.cn11-5823/tu.2023.01.02

摘要:为保障老年人室内环境下的安全, 及时发现险情并提供救助支持, 本文开发了一套老年人室内危险行为监测预警系统, 其能够识别老年人常见危险行为, 并能进行预警。研究针对老年人常见危险行为中的异常俯身和跌倒, 基于RGB相机采集人体姿态信息并提取人体骨架的关键特征点; 利用支持向量机对各类危险行为进行分类识别; 进一步结合轨迹和定位信息向相关人员远程预警和紧急呼救。实验结果表明, 本系统对危险行为识别的真正类率达到97.14%, 能够较准确地完成老年人室内危险行为的监测预警, 从而有效减缓意外伤害的扩大, 保障老年人的居家安全。

关键词: 老年人, 危险行为识别, 安全预警, 计算机视觉, 人体骨架提取, 跟踪定位
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老年人室内危险行为监测预警系统研究

王灵灵, 郭世琪, 周迎, 陈坤辉

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