Channel state information (CSI) based fingerprinting for WIFI indoor localization has attracted lots of attention very recently.The frequency diverse and temporally stable CSI better represents the location dependent channel characteristics than the coarsereceived signal strength (RSS). However, the acquisition of CSI requires the cooperation of access points (APs) and involves only dataframes, which imposes restrictions on real-world deployment. In this paper, we present CRISLoc, the first CSI fingerprinting basedlocalization prototype system using ubiquitous smartphones. CRISLoc operates in a completely passive mode, overhearing thepackets on-the-fly for his own CSI acquisition. The smartphone CSI is sanitized via calibrating the distortion enforced by WiFi amplifiercircuits. CRISLoc tackles the challenge of altered APs with a joint clustering and outlier detection method to find them. A novel transferlearning approach is proposed to reconstruct the high-dimensional CSI fingerprint database on the basis of the outdated fingerprintsand a few fresh measurements, and an enhanced KNN approach is proposed to pinpoint the location of a smartphone. Our studyreveals important properties about the stability and sensitivity of smartphone CSI that has not been reported previously. Experimentalresults show that CRISLoc can achieve a mean error of around 0.29m in a6m times 8mresearch laboratory. The mean error increases by 5.4 cm and 8.6 cm upon the movement of one and two APs, which validates the robustness of CRISLoc against environment changes.
翻译:用于WIFI室内本地化的基于频道状态的指纹信息(CSI)最近引起许多关注。 CSI的频率多种多样,而且时间上稳定,这比粗略的信号强度(RSS)更能代表取决于位置的频道特征。然而,CSI的获取需要接入点的合作,只涉及数据框架,对现实世界的部署施加限制。在本文中,我们介绍了CRISLoc,这是使用无处不在的智能手机的CSI指纹基于本地化的首个CSI指纹原型系统。CRISLoc以完全被动的方式运作,为获取 CSI获取时不全的现场听听听卡片。智能手机CSI通过校准WFi放大器实施的扭曲而变得清洁。CRISLoc处理改变AP的挑战,通过联合集成和外部探测方法来找到它们。我们建议采用新的转移学习方法,在过时的指纹和一些新测量的基础上重建高层次的 CSIA指纹数据库,而强化的KNNW在获取CRIS的准确性变化中,建议通过校正的精确度定位环境定位定位定位定位,以显示CRISISL的精度的精度的精度环境的精度。我们的精确度的精确度研究可以实现。