An Effective Fingerprint-Based Indoor Positioning Algorithm Based on Extreme Values
Abstract
:1. Introduction
2. Related Work
3. Preliminaries and Framework of Proposed Algorithm
3.1. Subsection Problem Description
3.2. Preliminary Experiment
3.3. Framework
4. Algorithms
4.1. AP Selection Algorithm
4.1.1. IOD Algorithm
4.1.2. Issue Statement of the IOD Algorithm
4.1.3. The Proposed DIOD Algorithm
4.2. Positioning Algorithm
4.2.1. SRPs Selection Module
The RSS Extreme Values Collected at RPs in a Circle
The SRPs Selection Criterion
4.2.2. UAPs Selection Module
4.2.3. Weighted Average Module
5. Experiments
5.1. Experimental Settings
5.2. Comparison Algorithms and Performance Metric
5.3. Feasibility Evaluation
5.4. Positioning Accuracy Evaluation
5.5. Time Cost of Proposed Positioning Algorithm
6. Further Discussions
7. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Notations | Definition |
---|---|
N | Number of RPs |
M | Number of APs |
The RSS sampling of APm at RPn | |
T | Number of samplings |
The overlap length between and | |
ρ | The length of the radius |
Cn | The circle with RPn as center and ρ as the radius |
fn | Number of RPs in Cn |
The maximum RSS value of APm at RPs in Cn | |
The minimum RSS value of APm at RPs in Cn | |
RSS of APm at RPi in Cn in the tth second | |
The whole minimum RSS value of APm in Cn | |
The whole maximum RSS value of APm in Cm | |
SCi | The ith similar circle (SC) |
SCAPi | Unchanged APs in SCi |
q | Largest number of unchanged APs |
Similar Circle | Unchanged APs of each SC (SCAP) |
---|---|
sc1 | AP1, AP2, AP3, AP4, AP5, AP6, AP7 |
sc2 | AP1, AP2, AP3, AP4, AP5, AP6, AP7 |
sc3 | AP1, AP2, AP3, AP4, AP5, AP6, AP7 |
sc4 | AP1, AP2, AP3, AP4, AP5, AP6, AP7 |
sc5 | AP1, AP2, AP3, AP4, AP5, AP6, AP7 |
sc6 | AP1, AP2, AP3, AP4, AP5, AP6, AP7 |
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Tao, Y.; Yan, R.; Zhao, L. An Effective Fingerprint-Based Indoor Positioning Algorithm Based on Extreme Values. ISPRS Int. J. Geo-Inf. 2022, 11, 81. https://doi.org/10.3390/ijgi11020081
Tao Y, Yan R, Zhao L. An Effective Fingerprint-Based Indoor Positioning Algorithm Based on Extreme Values. ISPRS International Journal of Geo-Information. 2022; 11(2):81. https://doi.org/10.3390/ijgi11020081
Chicago/Turabian StyleTao, Ye, Rongen Yan, and Long Zhao. 2022. "An Effective Fingerprint-Based Indoor Positioning Algorithm Based on Extreme Values" ISPRS International Journal of Geo-Information 11, no. 2: 81. https://doi.org/10.3390/ijgi11020081