Device-free indoor localization and tracking through Human-Object Interactions

Wenjie Ruan, Quan Z. Sheng, Lina Yao, Tao Gu, M. Ruta, Longfei Shangguan
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引用次数: 35

Abstract

Device-free indoor localization aims to localize people without requiring them to carry any devices or being actively involved in the localizing process. It underpins a wide range of applications including older people surveillance, intruder detection and indoor navigation. However, in a cluttered environment such as a residential home, the Received Signal Strength Indicator (RSSI) is heavily obstructed by furniture or metallic appliances, thus reducing the localization accuracy. This environment is important to observe as human-object interaction (HOI) events, detected by pervasive sensors, can potentially reveal people's interleaved locations during daily living activities, such as watching TV, opening the fridge door. This paper aims to enhance the performance of commercial off-the-shelf (COTS) RFID-based localization system by leveraging HOI contexts in a furnished home. Specifically, we propose a general Bayesian probabilistic framework to integrate both RSSI signals and HOI events to infer the most likely location and trajectory. Experiments conducted in a residential house demonstrate the effectiveness of our proposed method, in which we can localize a resident with average 95% accuracy and track a moving subject with 0.58m mean error distance.
通过人机交互实现无设备室内定位和跟踪
无设备室内定位的目的是在不需要人们携带任何设备或积极参与定位过程的情况下对人们进行定位。它支持广泛的应用,包括老年人监视,入侵者检测和室内导航。然而,在住宅等杂乱的环境中,家具或金属器具严重阻碍了接收信号强度指示器(RSSI),从而降低了定位精度。这种环境非常重要,因为通过无处不在的传感器检测到的人-物交互(HOI)事件可能会揭示人们在日常生活活动(如看电视、打开冰箱门)中交错的位置。本文的目的是提高商用现货(COTS) rfid定位系统的性能,利用HOI上下文在一个带家具的家庭。具体来说,我们提出了一个通用的贝叶斯概率框架来整合RSSI信号和HOI事件,以推断最可能的位置和轨迹。在住宅中进行的实验证明了该方法的有效性,该方法对居民的定位准确率平均为95%,对移动目标的跟踪误差平均为0.58m。
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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