Title :
Compressive sensing based location estimation using channel impulse response measurements
Author :
Yu-Pei Lin ; Po-Hsuan Tseng ; Kai-Ten Feng
Author_Institution :
Dept. of Electr. & Comput. Eng., Nat. Chiao Tung Univ., Hsinchu, Taiwan
Abstract :
Due to the popularity of location-based services in environment with weak GPS signals, indoor location estimation problem have attracted more and more attention in recent years. Among several distance-related measurements, channel impulse response (CIR) reflects multi-path situation between the transmitter and receiver pair and is suitable to describe the characteristic of different positions. Note that CIR, which can be obtained from the inverse Fourier transform of channel frequency response in broadband wireless networks, is supported in most of the commercial standards. In this paper, a novel compressive sensing based location estimation using CIR measurements (CS-CIR) is proposed as well as fingerprinting algorithm. CIR information is collected from each reference point (RP) to access point (AP) and stored in the database. During the on-line stage, the mobile user measures CIR from the AP and compares measured CIR with those CIR values in the database. Note that user position is close to one of the RPs and user position vector is represented as a sparse vector. By applying compressive sensing theory, user position can be recovered by solving l1-minimization problem. Simulation result validate that the CS-CIR outperforms the K-nearest neighbour method using CIR measurements and conventional received signal strength based methods.
Keywords :
Fourier transforms; Global Positioning System; RSSI; broadband networks; compressed sensing; fingerprint identification; indoor radio; inverse transforms; mobile radio; multipath channels; radio receivers; radio transmitters; transient response; wireless channels; CS-CIR measurement; broadband wireless network; channel frequency response; channel impulse response measurement; compressive sensing based location estimation; compressive sensing theory; fingerprinting algorithm; indoor location estimation problem; inverse Fourier transform; l1-minimization problem; mobile user transmitter; multipath receiver; received signal strength; sparse vector; weak GPS signal; Channel estimation; Compressed sensing; Current measurement; Databases; Estimation; Measurement uncertainty; Signal to noise ratio; channel impulse response; compressive sensing; fingerprinting;
Conference_Titel :
Personal, Indoor, and Mobile Radio Communication (PIMRC), 2014 IEEE 25th Annual International Symposium on
DOI :
10.1109/PIMRC.2014.7136512