| Literature DB >> 35891044 |
Yunbing Hu1,2, Ao Peng1, Biyu Tang1, Guojian Ou2,3, Xianzhi Lu2.
Abstract
With the increasing demand for wireless location services, it is of great interest to reduce the deployment cost of positioning systems. For this reason, indoor positioning based on WiFi has attracted great attention. Compared with the received signal strength indicator (RSSI), channel state information (CSI) captures the radio propagation environment more accurately. However, it is necessary to take signal bandwidth, interferences, noises, and other factors into account for accurate CSI-based positioning. In this paper, we propose a novel dictionary filtering method that uses the direct weight determination method of a neural network to denoise the dictionary and uses compressive sensing (CS) to extract the channel impulse response (CIR). A high-precision time-of-arrival (TOA) is then estimated by peak search. A median value filtering algorithm is used to locate target devices based on the time-difference-of-arrival (TDOA) technique. We demonstrate the superior performance of the proposed scheme experimentally, using data collected with a WiFi positioning testbed. Compared with the fingerprint location method, the proposed location method does not require a site survey in advance and therefore enables a fast system deployment.Entities:
Keywords: channel estimation; channel state information; compressive sensing
Mesh:
Year: 2022 PMID: 35891044 PMCID: PMC9317736 DOI: 10.3390/s22145364
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.847
Figure 1Structure of the TDOA-based passive WiFi localization system.
Figure 2System model for the TOA computation in WiFi-WASP localization using OFDM.
Figure 3Algorithm framework is based on CSI localization.
Figure 4BP neural network model.
Figure 5An improved power-excited forward neural network model.
Figure 6Comparison of neural network and RLS-DLA denoising.
Figure 7Positioning results in outdoor LOS environments.
Figure 8Cumulative distribution function of the positioning errors for the outdoor LOS test.
Figure 9Estimated target locations in the indoor experiment.
Figure 10Cumulative distribution function of the positioning errors for the indoor test.