| Literature DB >> 29329226 |
Xiaolong Li1,2, Yifu Yang3, Jun Cai4, Yun Deng5, Junfeng Yang6, Xinmin Zhou7, Lina Tan8.
Abstract
Reducing costs is a pragmatic method for promoting the widespread usage of indoor localization technology. Conventional indoor localization systems (ILSs) exploit relatively expensive wireless chips to measure received signal strength for positioning. Our work is based on a cheap and widely-used commercial off-the-shelf (COTS) wireless chip, i.e., the Nordic Semiconductor nRF24LE1, which has only several output power levels, and proposes a new power level based-ILS, called Plils. The localization procedure incorporates two phases: an offline training phase and an online localization phase. In the offline training phase, a self-organizing map (SOM) is utilized for dividing a target area into k subregions, wherein their grids in the same subregion have similar fingerprints. In the online localization phase, the support vector machine (SVM) and back propagation (BP) neural network methods are adopted to identify which subregion a tagged object is located in, and calculate its exact location, respectively. The reasonable value for k has been discussed as well. Our experiments show that Plils achieves 75 cm accuracy on average, and is robust to indoor obstacles.Entities:
Keywords: cheap communication chip; fingerprint; subregion clustering; wireless indoor localization system
Year: 2018 PMID: 29329226 PMCID: PMC5795826 DOI: 10.3390/s18010205
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Rough prices for several popular wireless communication chips.
| nRF24LE1 | CC2530 | LSR450 | CC2540 |
|---|---|---|---|
| $0.5∼1 | $1.5∼2 | $5∼10 | $2∼5 |
Figure 1A photo of the layout of the experimental environment. RFID: radio frequency identification technology.
Figure 2The illustration of the mapping relationship when the back propagation (BP) neural network directly uses plain fingerprint data.
Figure 3The main framework of the proposed Plils system. SVM: support vector machine; SOM: self-organizing map.
Figure 4An illustrated layout of the experimental environment.
The localization error distance (cm) of the SOM + SVMBP of the parameters.
| 83.12 | 82.03 | 80.11 | 82.96 | |
| 81.10 | 77.65 | 74.68 | 78.41 | |
| 89.42 | 85.88 | 83.12 | 83.02 |
The localization error distance (cm) for different algorithms.
| BP | SOM + SVMBP | CMTL+ | |
|---|---|---|---|
| 82.98 | 80.11 | - | |
| 84.73 | 74.68 | 89.59 | |
| 87.25 | 83.12 | - |
Figure 5Cumulative distribution function (CDF) of localization error distance for different under environments with obstacles.
Figure 6Cumulative distribution function (CDF) of localization error distance for different under empty environments.
Figure 7Cumulative distribution function (CDF) of localization error distance for different under obstacle-rich environments.