Wifi-based robust indoor localization for daily activity monitoring

Sai Deepika Regani, Yuqian Hu, Beibei Wang, K. Liu
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引用次数: 4

Abstract

Achieving indoor localization enables several intelligent home applications, such as monitoring overall activities of daily living (ADL) and triggering location-specific IoT devices. In addition, ADL information further facilitates physical and mental health monitoring and extracting valuable activity insights. While many approaches are proposed to attack this problem, WiFi-based solutions are widely celebrated due to their ubiquity and privacy protection. However, current WiFi-based localization approaches either focus on fine-grained target localization demanding high calibration efforts or cannot localize multiple people at the coarser level, making them unfit for robust ADL applications. In this work, we propose a robust WiFi-based room/zone-level localization solution that is calibration-free, device-free(passive), and built with commercial WiFi chipsets. We extract features indicative of the motion and breathing patterns, thus detecting and localizing a person even when there is only subtle physical movement. Furthermore, we used the correlation between the movement patterns to break ambiguous location scenarios. As a result, we achieved an average detection rate of 96.13%, including different activity levels, and localization accuracy of 98.5% in experiments performed across different environments.
基于wifi的鲁棒室内定位,用于日常活动监测
实现室内定位可以实现多种智能家居应用,例如监控日常生活的整体活动(ADL)和触发特定位置的物联网设备。此外,ADL信息进一步促进了身体和心理健康监测,并提取有价值的活动见解。虽然提出了许多方法来解决这个问题,但基于wifi的解决方案因其无处不在和隐私保护而广受欢迎。然而,目前基于wifi的定位方法要么专注于需要高校准工作的细粒度目标定位,要么不能在较粗的层次上定位多人,这使得它们不适合稳健的ADL应用。在这项工作中,我们提出了一个强大的基于WiFi的房间/区域级定位解决方案,该解决方案无需校准,无需设备(无源),并使用商用WiFi芯片组构建。我们提取指示运动和呼吸模式的特征,从而检测和定位一个人,即使只有细微的身体运动。此外,我们利用运动模式之间的相关性来打破模糊的位置场景。结果表明,在不同的活动水平下,我们的平均检测率为96.13%,在不同环境下进行的实验中,我们的定位准确率为98.5%。
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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