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Harmony: Exploiting coarse-grained received signal strength from IoT devices for human activity recognition

机译:和谐:利用来自物联网设备的粗粒度接收信号强度进行人类活动识别

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The emerging smart health and smart home applications require pervasive and non-intrusive human activity recognition and monitoring. Traditional technologies (e.g., using cameras or accelerometers and gyroscopes) may introduce privacy issues or require people to wear sensors. To address these issues, recent approaches exploit fine-grained wireless signals for activity recognition. However, these approaches require devices that are costly or need to provide unique wireless features (e.g., Doppler shifts or phase information). With the increasingly available Internet of Things (IoT) devices, in this paper, we propose Harmony, a human activity recognition and monitoring middleware which can utilize the coarse-grained (but pervasively available) received signal strength (RSS) measurements from the radios of IoT devices. We implement a complete evaluation platform (from data collection to data analysis) of the middleware on top of low cost ZigBee compliant MICAz nodes and a laptop. We also conducted extensive experiments. Our results show that our design can achieve similar accuracy as fine-grained WiFi channel state information (CSI) measurement-based approaches. Specifically, our overall human activities recognition accuracy is up to 74% and 90% for RSS readings from a single pair and 3 pairs of IoT devices, respectively.
机译:新兴的智能健康和智能家庭应用需要普遍性和非侵入性的人类活动识别和监测。传统技术(例如,使用摄像机或加速度计和陀螺仪)可能会引入隐私问题或要求人们佩戴传感器。为了解决这些问题,最近的方法利用用于活动识别的细粒度无线信号。然而,这些方法需要昂贵或需要提供唯一的无线特征的设备(例如,多普勒班次或相位信息)。利用越来越多的物联网(物联网)设备,在本文中,我们提出了和谐,人类活动识别和监测中间件,该中间件可以利用来自无线电的粗粒(但普遍可用的)接收的信号强度(RSS)测量值物联网设备。我们在低成本ZigBee符合MICAZ节点和笔记本电脑的顶部实现了中间件的完整评估平台(从数据收集到数据分析)。我们还进行了广泛的实验。我们的研究结果表明,我们的设计可以实现与微粒无线网络频道状态信息(CSI)基于测量的方法相似的准确性。具体而言,我们的整体人类活动识别准确性分别从单对和3对IOT设备的RSS读数高达74%和90%。

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