Indoor Positioning on Disparate Commercial Smartphones Using Wi-Fi Access Points Coverage Area
Abstract
:1. Introduction
- An indoor positioning approach is presented which solves the problem of device dependence. The proposed approach is tested with three different smartphones including Galaxy S8, LG G6, and LG G7.
- The proposed approach is tested in a static as well as dynamic environment with human presence. The impact of human body loss is evaluated at a public place with low, medium, and high human presence.
- The proposed approach works with different phone orientations in a similar fashion. Also, the testing is performed with user data while walking in different directions.
2. Limitations of Wi-Fi Fingerprinting Positioning
2.1. Similar RSS at Distinct Locations
2.2. Impact of Device Diversity
2.3. Phone Orientation and User’s Direction
2.4. Varying Indoor Conditions and RSS
3. Related Work
4. Proposed Approach
4.1. Assumptions for the Proposed Approach
- The Wi-Fi APs’ position remains the same during the training and testing phases.
- We assume that the RSS value at a particular location is normally distributed. The same assumption has been made by other works as well [42].
- Another assumption made is that the RSS values of different APs are independent of other APs.
4.2. Theoretical Formulations of the Proposed Approach
4.2.1. APs Coverage Uniqueness
4.2.2. AP Coverage Overlapping
4.3. Fingerprinting Process
4.4. Positioning Process
Algorithm 1 Algorithm for position estimation |
Input: User scan |
Output: Position P(longitude, latitude) |
Initialisation:
|
|
5. Experiment Setup
6. Results and Discussion
6.1. Results for Static Environment
6.2. Performance Appraisal
6.3. Results in a Dynamic Environment with Human Presence
- Low body loss: 50 to 200 people are present.
- Medium body loss: 201 to 350 people are present.
- High body loss: More than 350 people are present in the area.
6.4. Constraints and Limitations of the Proposed Approach
7. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Building-Device | Mean Error | Std. Dev | Max. Error | 75% Error |
---|---|---|---|---|
IT-S8 | 4.11 | 3.35 | 11.95 | 7.59 |
IT-G6 | 4.27 | 3.68 | 12.68 | 7.69 |
IT-G7 | 3.61 | 3.56 | 12.63 | 8.39 |
RIC-S8 | 3.85 | 2.67 | 10.27 | 5.54 |
RIC-G6 | 4.89 | 2.71 | 10.93 | 7.29 |
RIC-G7 | 4.72 | 2.78 | 11.40 | 6.21 |
TE-S8 | 4.61 | 3.20 | 14.43 | 6.57 |
TE-G6 | 4.84 | 3.35 | 14.14 | 6.72 |
TE-G7 | 4.28 | 3.40 | 14.00 | 7.00 |
CRC-S8 | 4.00 | 2.53 | 12.14 | 5.69 |
CRC-G6 | 4.14 | 2.91 | 12.72 | 6.34 |
CRC-G7 | 4.40 | 2.69 | 13.43 | 6.21 |
Building-Technique | Mean Error | Std. Dev | Max. Error | 75% Error |
---|---|---|---|---|
S8-WRSS | 7.01 | 5.06 | 20.17 | 11.47 |
S8-KNN | 10.16 | 6.65 | 27.76 | 14.59 |
S8-proposed | 4.27 | 3.10 | 14.43 | 6.68 |
G6-WRSS | 9.15 | 6.61 | 25.63 | 14.99 |
G6-KNN | 10.57 | 8.82 | 32.42 | 19.69 |
G6-proposed | 4.79 | 3.31 | 14.13 | 7.21 |
G7-WRSS | 6.57 | 5.52 | 22.25 | 11.62 |
G7-KNN | 11.17 | 8.04 | 30.54 | 18.99 |
G7-proposed | 4.43 | 3.19 | 14.01 | 6.90 |
Human Body-Loss | Mean Error | Std. Dev | Max. Error | 75% Error |
---|---|---|---|---|
Galaxy S8 | ||||
Low | 5.62 | 3.59 | 17.39 | 7.87 |
Medium | 6.57 | 4.15 | 21.50 | 9.47 |
High | 8.04 | 5.13 | 23.68 | 12.31 |
LG G6 | ||||
Low | 6.45 | 3.89 | 15.88 | 9.96 |
Medium | 7.19 | 4.42 | 20.72 | 10.57 |
High | 9.23 | 5.59 | 24.79 | 14.55 |
LG G7 | ||||
Low | 5.90 | 3.75 | 17.70 | 8.50 |
Medium | 7.33 | 4.83 | 23.32 | 10.09 |
High | 7.81 | 5.51 | 25.69 | 12.68 |
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Ashraf, I.; Hur, S.; Park, Y. Indoor Positioning on Disparate Commercial Smartphones Using Wi-Fi Access Points Coverage Area. Sensors 2019, 19, 4351. https://doi.org/10.3390/s19194351
Ashraf I, Hur S, Park Y. Indoor Positioning on Disparate Commercial Smartphones Using Wi-Fi Access Points Coverage Area. Sensors. 2019; 19(19):4351. https://doi.org/10.3390/s19194351
Chicago/Turabian StyleAshraf, Imran, Soojung Hur, and Yongwan Park. 2019. "Indoor Positioning on Disparate Commercial Smartphones Using Wi-Fi Access Points Coverage Area" Sensors 19, no. 19: 4351. https://doi.org/10.3390/s19194351
APA StyleAshraf, I., Hur, S., & Park, Y. (2019). Indoor Positioning on Disparate Commercial Smartphones Using Wi-Fi Access Points Coverage Area. Sensors, 19(19), 4351. https://doi.org/10.3390/s19194351