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Indoor WLAN Intelligent Target Intrusion Sensing Using Ray-Aided Generative Adversarial Network

机译:使用射线辅助生成对抗网络的室内WLAN智能目标入侵感应

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摘要

An indoor target intrusion sensing technique has been used in many fields, such as smart home management, security monitoring, counter-terrorism, and disaster relief. At the same time, with the wide deployment of wireless local area network (WLAN) and general support of the IEEE 802.11 protocol by various mobile devices, the target intrusion sensing can be realized based on the existing WLAN infrastructure without requiring the target to carry any special device. However, the existing indoor WLAN target intrusion sensing approaches usually depend on the radio map construction with huge labor and time cost, which is the major barrier of current systems. In response to this compelling problem, we propose the new ray-aided generative adversarial model (RaGAM) to automatically construct the radio map, which is used for the indoor WLAN intelligent target intrusion sensing and localization. To achieve the low labor and time cost, the RaGAM uses the adaptive-depth ray tree based the quasi three-dimensional ray-tracing model to depict the difference of WLAN signals between the silence and intrusion environments with the purpose of constructing the synthetic radio map. Considering the gap between the synthetic and actual radio maps, we modify the conventional generative adversarial network by the joint synthetic and unsupervised learning (or called S+U learning) from the actual unlabeled received signal strength (RSS) data to improve the precision of the proposed ray-tracing model, and consequently obtain the refined radio map. After that, the statistical characteristics of the refined radio map are utilized to construct the training set for the probabilistic neural network (PNN), and then by using the well-trained PNN to classify the newly collected RSS data, the target intrusion sensing, and localization are achieved. The experimental results show that the proposed approach cannot only perform well in terms of computation cost and the ray-tracing accuracy, but also sense the target intrusion states accurately.
机译:在许多领域中使用了室内目标入侵传感技术,例如智能家庭管理,安全监测,反恐和救灾和救灾。同时,随着无线局域网(WLAN)的广泛部署和通过各种移动设备的IEEE 802.11协议的一般支持,可以基于现有的WLAN基础架构来实现目标入侵感测,而无需目标携带任何目标特殊设备。然而,现有的室内WLAN目标入侵感测方法通常取决于具有巨大的劳动力和时间成本的无线电映射结构,这是当前系统的主要屏障。为了响应这个引人注目的问题,我们提出了新的射线辅助生成的对抗性模型(RAGAM)自动构建无线电映射,用于室内WLAN智能目标入侵感应和本地化。为了实现低劳动力和时间成本,RAGAM基于基于准三维射线追踪模型的自适应深度射线树,以描绘沉默和入侵环境之间的WLAN信号的差异,目的是构建合成式无线电映射。考虑到合成和实际无线电贴图之间的差距,我们通过与实际未标记的接收信号强度(RSS)数据的联合合成和无人学习(或称为S + U学习)来修改常规的生成的对抗性网络,以提高所提出的射线跟踪模型,从而获得精制的无线电贴图。之后,利用精细无线电贴图的统计特性来构建概率神经网络(PNN)的训练集,然后通过使用良好训练的PNN来分类新收集的RSS数据,目标入侵感测和实现了本地化。实验结果表明,在计算成本和光线跟踪精度方面,所提出的方法不能简单,而且还可以准确地感知目标入侵状态。

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