利用WiFi通道状态信息对老年痴呆症患者进行无创监测

Cristian Turetta, Florenc Demrozi, Sofia Franceschi, Davide Zamboni, G. Pravadelli
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引用次数: 0

摘要

近年来,设计用于监测人们活动的非侵入性系统已成为人们关注的焦点。这种系统对于那些受疾病影响的人来说是必不可少的,这些疾病会改变他们的认知状态,并且在使用可穿戴或交互式系统(例如,移动应用程序进行通信)时不能进行协作。对于涉及记忆丧失、认知能力下降、沟通困难、行为改变、独立性丧失和身体并发症的神经退行性疾病尤其如此。为了响应医疗机构和护理人员在家庭日常生活中监测这类人的需求,本文提出了一种非侵入式系统,能够检测一个人是否在他/她的房间里,如果他/她躺在床上。检查这些情况至关重要,特别是在夜间,以支持照顾痴呆症和阿尔茨海默病患者的护理人员和社会保健操作员的监测活动。该系统利用WiFi的信道状态信息(CSI),这些信息是由安装在房间里的普通接入点收集的。然后使用CSI数据来训练卷积神经网络(CNN),并应用微调技术来提高CNN模型在新环境下的泛化能力。在我们的实验分析中,我们通过在四个不同的房间收集CSI数据来训练CNN模型,这些房间来自两个受试者进行三种不同的活动。在识别目标活动方面取得了良好的效果(准确率>97.5%)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Non-Invasive Monitoring of Alzheimer’s patients through WiFi Channel State Information
The design of non-invasive systems for monitoring people’s activities is becoming of central interest in recent years. Such systems are essential for those affected by diseases that modify their cognitive status and are not collaborative in using wearable or interactive systems (e.g., mobile apps to communicate). This is particularly true regarding neurodegenerative diseases that involve memory loss, cognitive decline, communication difficulties, behavioral changes, loss of independence, and physical complications. In response to the need of healthcare structures and caregivers to monitor this category of people during their in-home daily life, this paper proposes a nonintrusive system capable of detecting whether or not a person is in his/her room and if he/she is lying on the bed. Checking these conditions is of utmost importance, in particular, during the night to support the monitoring activity of caregivers and social-health operators taking care of people with Dementia and Alzheimer’s disease. The proposed system exploits WiFi’s Channel State Information (CSI) gathered by common access points installed in the room. CSI data are then used to train a Convolutional Neural Network (CNN) and a fine-tuning technique is applied to increase the generalization capabilities of the CNN model on new environments. In our experimental analysis, we trained the CNN model by collecting CSI data in four different rooms, from two subjects performing three distinct activities. Promising results have been achieved (accuracy >97.5%) in recognizing the target activities.
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