| Literature DB >> 31151283 |
Zhang Chen1,2, Jinlong Wang3.
Abstract
In this paper, we propose a novel indoor passive localization approach called eigenspace-based DOA with direct-path recognition (ES-DPR), based on a DOA estimation algorithm with multiple omnidirectional antennas deployed in a uniform linear array (ULA). To address the multipath propagation interference problem in the indoor environments, we utilize the azimuth and RSS estimation results, which are calculated by using the eigenspace-based DOA (ES-DOA) algorithm, in a novel style. A direct-path bearing recognition algorithm is introduced to identify the real DOA of the signal source in different indoor environments, by combining the azimuth and RSS estimation with ensemble learning methods. Numerical simulations are conducted to verify the validity and superiority of the proposed method. The results show that the proposed ES-DPR method can achieve high resolution and has strong anti-noise capability in dealing with the multipath signals, and the direct-path recognition algorithm is reliable and robust in different indoor environments, even in undetectable direct-path conditions.Entities:
Keywords: ES-DOA; coherent signal source; direct-path recognition; direction of arrival (DOA); indoor passive positioning; uniform linear antenna
Year: 2019 PMID: 31151283 PMCID: PMC6603689 DOI: 10.3390/s19112482
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Diagram of a N-elements ULA.
Figure 2Diagram of the dynamic auxiliary decision mode.
Figure 3Diagram of different indoor environments.
The grazing angles, reflection coefficients and reflection power loss of P1 and P3.
| P1 | P3 | |
|---|---|---|
|
| 60° | 70° |
|
| 0.27 | 0.39 |
|
| 11.4 dB | 8.1 dB |
Figure 4Azimuth spectrums of ES-DOA and MUSIC algorithms with 100 signal snapshots: (a) SNR = 20 dB; (b) SNR = 10 dB; (c) SNR = 5 dB; (d) SNR = 0 dB.
Figure 5Azimuth spectrums of ES-DOA and MUSIC algorithms when SNR = 10 dB: (a) 1000 signal snapshots; (b) 200 signal snapshots; (c) 50 signal snapshots; (d) 10 signal snapshots.
Figure 6Azimuth spectrums of the various algorithms for coherent signals with 100 signal snapshots when SNR = 10 dB.
Figure 7Azimuth spectrum synthesis of multiple continuous snapshot packets.
Figure 8Statistical histogram of azimuth spectrum synthesis.
The outcome of the proposed DPR method and the multipath suppression method.
| DOA |
|
| |
|---|---|---|---|
| Case 1 | −10° | −10.6° | −10.2° |
| Case 2 | −10° (−12 dB)3 | −11.2° | −10.7° |
| Case 3 | −10° | 19.6° | −10.4° |
| Case 4 | NLOS | 22.3° | No direct path |
1 is the output of the multipath suppression method; 2 is the output of the proposed DPR method; 3 Signal power of the direct-path is attenuated by 12 dB.
Figure 9Direct-path recognition accuracy results from Monte Carlo simulations.