论文标题
通过深度学习收集环境RF进行检测
Harvesting Ambient RF for Presence Detection Through Deep Learning
论文作者
论文摘要
本文通过深度学习探讨了环境射频信号(RF)信号用于人类存在检测。以WiFi信号为例,我们证明在接收器上获得的通道状态信息(CSI)包含有关传播环境的丰富信息。通过明智地预处理估计的CSI,然后进行深度学习,可以实现可靠的存在检测。被动RF感应中的几个挑战已解决。在存在检测的情况下,如何在人类存在的情况下收集训练数据可能会对性能产生重大影响。这与当特定运动模式感兴趣时的活动检测相反。第二个挑战是RF信号是复杂的值。在深度学习中处理复杂值的输入需要仔细的数据表示和网络体系结构设计。最后,人类的存在会影响沿多个维度的CSI变化。但是,这种变化通常会被系统障碍(例如时机或频率偏移)所掩盖。在应对这些挑战时,提出的学习系统使用预处理来保留人类运动引起的通道变化,同时无法抵抗其他损害。然后,使用幅度和相信息适当训练的卷积神经网络(CNN)旨在实现可靠的存在检测。进行了广泛的实验。使用现成的WiFi设备,提出的基于深度学习的RF传感在多个延长的测试期间可实现几乎完美的存在检测,并且与前沿被动红外传感器相比,表现出卓越的性能。与现有的基于RF的人类存在检测进行比较也表明了其绩效的鲁棒性,尤其是在部署在全新的环境中时。
This paper explores the use of ambient radio frequency (RF) signals for human presence detection through deep learning. Using WiFi signal as an example, we demonstrate that the channel state information (CSI) obtained at the receiver contains rich information about the propagation environment. Through judicious pre-processing of the estimated CSI followed by deep learning, reliable presence detection can be achieved. Several challenges in passive RF sensing are addressed. With presence detection, how to collect training data with human presence can have a significant impact on the performance. This is in contrast to activity detection when a specific motion pattern is of interest. A second challenge is that RF signals are complex-valued. Handling complex-valued input in deep learning requires careful data representation and network architecture design. Finally, human presence affects CSI variation along multiple dimensions; such variation, however, is often masked by system impediments such as timing or frequency offset. Addressing these challenges, the proposed learning system uses pre-processing to preserve human motion induced channel variation while insulating against other impairments. A convolutional neural network (CNN) properly trained with both magnitude and phase information is then designed to achieve reliable presence detection. Extensive experiments are conducted. Using off-the-shelf WiFi devices, the proposed deep learning based RF sensing achieves near perfect presence detection during multiple extended periods of test and exhibits superior performance compared with leading edge passive infrared sensors. Comparison with existing RF based human presence detection also demonstrates its robustness in performance, especially when deployed in a completely new environment.