A Robust Noise Mitigation Method for the Mobile RFID Location in Built Environment
Abstract
:1. Introduction
2. Related Works
2.1. RFID-Based Location
2.2. RFID Noise Mitigation Methods
3. Mobile Localization and Problem Formulation
3.1. Mobile Localization Method
3.2. Noise Influence
4. A RANSAC Based Noise Mitigation Method
4.1. Delta Filter for RFID Measurement Data
Algorithm 1: Delta filter algorithm | |
Input: GNSS signal data, RFID ranging data | |
Output: Satisfied and well-conditioned triangle data | |
1 | setp = point coordinate of the new point from GNSS signal data |
2 | setr = distance from RFID ranging signal data |
3 | For each point in saved reader location points set do |
4 | set pi = point coordinate of points set |
5 | set r1 = distance between pi and tag |
6 | set r2 = distance between p and tag |
7 | set r3 = distance between pi and p |
8 | calculate vertex angle of tag point from r1, r2, and r3 |
9 | if the value of the angle is within (30,120) then |
10 | The p, pi and tag point can build a well-conditioned triangle, |
11 | then add the triangle data (p, pi, target point) to a data set for the next process |
12 | else |
13 | continuous the next loop |
14 | end if |
15 | End for |
16 | Add (p, r) to reader location points set for next reader location processing |
4.2. A RANSAC-Based Robust Noise Detection
4.2.1. Making Hypothesis for the Mobile Localization
4.2.2. Parameters Definition for Verification
5. Experiment and Result
5.1. Experiment Setup
5.2. Field Test Result
6. Comparison with Existing Methods
7. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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WCL | k-Means | LMS | LMedS | SVR | RANSAC | |
---|---|---|---|---|---|---|
Line Route | 3.6293 | 3.6957 | 4.5916 | 4.3050 | 3.2740 | 2.6529 |
Circle Route | 1.6345 | 3.2779 | 2.2975 | - 1 | 1.3573 | 1.2605 |
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Jing, C.; Sun, T.; Chen, Q.; Du, M.; Wang, M.; Wang, S.; Wang, J. A Robust Noise Mitigation Method for the Mobile RFID Location in Built Environment. Sensors 2019, 19, 2143. https://doi.org/10.3390/s19092143
Jing C, Sun T, Chen Q, Du M, Wang M, Wang S, Wang J. A Robust Noise Mitigation Method for the Mobile RFID Location in Built Environment. Sensors. 2019; 19(9):2143. https://doi.org/10.3390/s19092143
Chicago/Turabian StyleJing, Changfeng, Tiancheng Sun, Qiang Chen, Mingyi Du, Mingshu Wang, Shouqing Wang, and Jian Wang. 2019. "A Robust Noise Mitigation Method for the Mobile RFID Location in Built Environment" Sensors 19, no. 9: 2143. https://doi.org/10.3390/s19092143
APA StyleJing, C., Sun, T., Chen, Q., Du, M., Wang, M., Wang, S., & Wang, J. (2019). A Robust Noise Mitigation Method for the Mobile RFID Location in Built Environment. Sensors, 19(9), 2143. https://doi.org/10.3390/s19092143