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Sparse Representation for Device-Free Human Detection and Localization with COTS RFID

机译:使用COTS RFID进行无设备人体检测和定位的稀疏表示

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Passive human detection and localization is the basis for a broad range of intelligent scenarios including unmanned supermarket, health monitoring, etc. Existing computer vision or wearable sensor based methods though can obtain high precision, they still face some inherent defects, such as privacy issues, battery power limitations. Based on the human movement induced backscattered signal changes, we propose a device-free human detection and localization system on radio-frequency identification (RFID) devices. The system extracts environment-independent features from both RSSI and phase for dynamic monitoring in the first stage, then the target is further located if the moving human is detected. In particular, an overcomplete dictionary is learned when creating the fingerprint library, which helps to make the representation of the location more compact and computationally simple. Moreover, PCA based dimensionality reduction method is then adopted to acquire valid features to determine the final position. Extensive experiments conducted in real-life office and bedroom demonstrate that the proposed system provides high accuracy for human detection and achieves the average distance error of less than 1 m.
机译:被动人员的检测和定位是各种智能场景的基础,包括无人超市,健康监测等。现有的计算机视觉或基于可穿戴传感器的方法虽然可以获得很高的精度,但它们仍然面临一些固有的缺陷,例如隐私问题,电池电量限制。基于人体运动引起的后向散射信号变化,我们提出了一种在射频识别(RFID)设备上无需设备的人体检测和定位系统。该系统从RSSI和阶段中提取与环境无关的特征,以便在第一阶段进行动态监视,然后如果检测到移动中的人,则可以进一步定位目标。特别是,在创建指纹库时会学习到不完整的字典,这有助于使位置的表示更加紧凑和计算简单。此外,基于PCA的降维方法随后被采用来获取有效特征以确定最终位置。在现实生活中的办公室和卧室中进行的大量实验表明,该系统为人类检测提供了高精度,并实现了小于1 m的平均距离误差。

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