| Literature DB >> 31284676 |
Yuqing Yin1,2, Changze Song1,2, Ming Li1,2, Qiang Niu3,4.
Abstract
Convenient indoor positioning has become an urgent need due to the improvement it offers to quality of life, which inspires researchers to focus on device-free indoor location. In areas covered with Wi-Fi, people in different locations will to varying degrees have an impact on the transmission of channel state information (CSI) of Wi-Fi signals. Because space is divided into several small regions, the idea of classification is used to locate. Therefore, a novel localization algorithm is put forward in this paper based on Deep Neural Networks (DNN) and a multi-model integration strategy. The approach consists of three stages. First, the local outlier factor (LOF), the anomaly detection algorithm, is used to correct the abnormal data. Second, in the training phase, 3 DNN models are trained to classify the region fingerprints by taking advantage of the processed CSI data from 3 antennas. Third, in the testing phase, a model fusion method named group method of data handling (GMDH) is adopted to integrate 3 predicted results of multiple models and give the final position result. The test-bed experiment was conducted in an empty corridor, and final positioning accuracy reached at least 97%.Entities:
Keywords: channel state information; indoor fingerprinting localization; multi-model integration
Year: 2019 PMID: 31284676 PMCID: PMC6651718 DOI: 10.3390/s19132998
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1The amplitude distribution of different positions at 1000 time points. (a) Position 6; (b) Position 14; (c) Position 22.
Figure 2ModelF structure.
Figure 3Anomaly detection based on LOF algorithm. The blue points represent the amplitude values of each subcarrier, and the point with a large degree of separation is marked with a red circle.
Figure 4The experimental environment.
The maximum, minimum, and mean of distance error value of ModelF.
| Max Error | Min Error | Mean Error | |
|---|---|---|---|
| ModelF | 3.8079 | 0 | 0.0568 |
Figure 5CSI data processing. (a,b) are original data; (c,d) are processed data.
The maximum, minimum, and mean of distance error value of the CSI and RSS.
| Max Error | Min Error | Mean Error | |
|---|---|---|---|
| CSI | 3.8079 | 0 | 0.0568 |
| RSS | 4.4721 | 0 | 1.3047 |
Figure 6Localization precision of different sources of data.
The maximum, minimum, and mean of distance error value of the DNN and SVM.
| Max Error | Min Error | Mean Error | |
|---|---|---|---|
| DNN | 3.8079 | 0 | 0.0568 |
| SVM | 4.4621 | 0 | 0.5326 |
Figure 7Localization precision of different classifier.
The maximum, minimum and mean of distance error value of the integration and no integration.
| Max Error | Min Error | Mean Error | |
|---|---|---|---|
| Fusion | 3.8079 | 0 | 0.0568 |
| No Fusion | 4.3012 | 0 | 0.1261 |
Figure 8Localization precision of different method.
Figure 9Localization precision with denoising and no-denoising.
Figure 10ROC curves under different antennas.
Figure 11Localization precision with different antenna.
Figure 12Localization precision with different activation function.
Figure 13Localization precision with different optimization method.