基于WiFi信号的GMM-HMM人体跌倒检测系统

Xiaoyan Cheng, Binke Huang, Jing Zong
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引用次数: 1

摘要

人类寿命的延长产生了对老年人保健和远程监测技术的需求,而跌倒是独居者的主要保健威胁之一。传统的基于视觉、传感器网络或可穿戴设备的跌倒检测系统存在一些固有的局限性,难以在工程应用中推广。本文提出了一种基于商用WiFi设备的实时、非接触、低成本、准确的室内跌倒检测系统。采用CSI相位差展开矩阵作为跌倒检测特征,采用滑动窗口和标记方法设计了一种有效的跌倒活动信号拦截方法。此外,将高斯混合模型-隐马尔可夫模型(GMM-HMM)方法创新性地移植到基于wifi的识别系统中,该系统最初用于基于人体三维骨骼的活动识别。与LSTM、Random forest等其他分类算法相比,该方法具有较高的准确率。基于上述方法,我们提出的系统在两台配备商用802.1 ln网卡的计算机上实现,并在三个典型的室内场景下对系统性能进行了评估。实验结果表明,该系统性能优越,可以实现对单个人的实时跌倒检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Device-free Human Fall Detection System Based on GMM-HMM Using WiFi Signals
The increase in human life span has created a demand for health care and remote monitoring technologies for the elderly, and falls are one of the major health care threats for those living alone. Traditional fall detection systems based on vision, sensor networks, or wearable devices have some inherent limitations, which makes it difficult to be popularized in engineering applications. In this paper, we propose a real-time, non-contact, low-cost but accurate indoor fall detection system using commercial WiFi equipment. The CSI phase difference expansion matrix is used as the fall detection feature and an effective approach is designed to intercept fall activity signals by using sliding window and labeling methods. Furthermore, the Gaussian Mixture Model-Hidden Markov Model (GMM-HMM) approach is innovatively migrated to a WiFi-based identification system which is originally used for human 3D skeleton-based activity recognition. The approach is of great value for its high accuracy compared with other classification algorithms, such as LSTM, Random forest. Based on the above approaches, our proposed system is implemented on two computers equipped with commercial 802.1 ln NIC, and the system performance is evaluated in three typical indoor scenarios. The experimental results show that the system has superior performance and can realize real-time fall detection for a single person.
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