Sinopec Petroleum Engineering Corporation, Dongying 257026, China.
College of Control Science and Engineering, China University of Petroleum (East China), Qingdao 266580, China.
Sensors (Basel). 2023 Jun 22;23(13):5830. doi: 10.3390/s23135830.
Indoor localization is one of the key techniques for location-based services (LBSs), which play a significant role in applications in confined spaces, such as tunnels and mines. To achieve indoor localization in confined spaces, the channel state information (CSI) of WiFi can be selected as a feature to distinguish locations due to its fine-grained characteristics compared with the received signal strength (RSS). In this paper, two indoor localization approaches based on CSI fingerprinting were designed: amplitude-of-CSI-based indoor fingerprinting localization (AmpFi) and full-dimensional CSI-based indoor fingerprinting localization (FuFi). AmpFi adopts the amplitude of the CSI as the localization fingerprint in the offline phase, and in the online phase, the improved weighted K-nearest neighbor (IWKNN) is proposed to estimate the unknown locations. Based on AmpFi, FuFi is proposed, which considers all of the subcarriers in the MIMO system as the independent features and adopts the normalized amplitudes of the full-dimensional subcarriers as the fingerprint. AmpFi and FuFi were implemented on a commercial network interface card (NIC), where FuFi outperformed several other typical fingerprinting-based indoor localization approaches.
室内定位是基于位置的服务 (LBS) 的关键技术之一,在隧道和矿山等封闭空间的应用中具有重要作用。为了在封闭空间中实现室内定位,可以选择 WiFi 的信道状态信息 (CSI) 作为特征来区分位置,因为与接收信号强度 (RSS) 相比,CSI 具有更细粒度的特性。本文设计了两种基于 CSI 指纹的室内定位方法:基于 CSI 幅度的室内指纹定位 (AmpFi) 和基于全维 CSI 的室内指纹定位 (FuFi)。AmpFi 在离线阶段采用 CSI 的幅度作为定位指纹,在线阶段提出了改进的加权 K-最近邻 (IWKNN) 来估计未知位置。基于 AmpFi,提出了 FuFi,它将 MIMO 系统中的所有子载波视为独立特征,并采用全维子载波的归一化幅度作为指纹。AmpFi 和 FuFi 都在商业网络接口卡 (NIC) 上实现,其中 FuFi 优于其他几种典型的基于指纹的室内定位方法。