WiFi-Enabled Smart Human Dynamics Monitoring

Xiaonan Guo, Bo Liu, Cong Shi, Hongbo Liu, Yingying Chen, M. Chuah
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引用次数: 50

Abstract

The rapid pace of urbanization and socioeconomic development encourage people to spend more time together and therefore monitoring of human dynamics is of great importance, especially for facilities of elder care and involving multiple activities. Traditional approaches are limited due to their high deployment costs and privacy concerns (e.g., camera-based surveillance or sensor-attachment-based solutions). In this work, we propose to provide a fine-grained comprehensive view of human dynamics using existing WiFi infrastructures often available in many indoor venues. Our approach is low-cost and device-free, which does not require any active human participation. Our system aims to provide smart human dynamics monitoring through participant number estimation, human density estimation and walking speed and direction derivation. A semi-supervised learning approach leveraging the non-linear regression model is developed to significantly reduce training efforts and accommodate different monitoring environments. We further derive participant number and density estimation based on the statistical distribution of Channel State Information (CSI) measurements. In addition, people's walking speed and direction are estimated by using a frequency-based mechanism. Extensive experiments over 12 months demonstrate that our system can perform fine-grained effective human dynamic monitoring with over 90% accuracy in estimating participants number, density, and walking speed and direction at various indoor environments.
支持wifi的智能人体动态监测
快速的城市化和社会经济发展鼓励人们花更多的时间在一起,因此监测人类动态非常重要,特别是对于老年人护理设施和涉及多种活动的设施。传统的方法由于其高昂的部署成本和隐私问题(例如,基于摄像头的监控或基于传感器连接的解决方案)而受到限制。在这项工作中,我们建议使用现有的WiFi基础设施,提供一个细粒度的人类动态综合视图,通常在许多室内场所。我们的方法是低成本和无设备的,不需要任何积极的人类参与。我们的系统旨在通过参与者数量估计、人口密度估计以及步行速度和方向推导来提供智能的人类动态监测。开发了一种利用非线性回归模型的半监督学习方法,以显着减少训练工作量并适应不同的监测环境。我们进一步推导了基于信道状态信息(CSI)测量的统计分布的参与者数量和密度估计。此外,使用基于频率的机制估计人们的行走速度和方向。超过12个月的大量实验表明,我们的系统可以在各种室内环境中进行细粒度有效的人体动态监测,在估计参与者数量、密度、步行速度和方向方面的准确率超过90%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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