Smartphone-Based Localization for Passengers Commuting in Traffic Hubs
Abstract
:1. Introduction
2. Data Collection
3. Passenger Localization
- In the front pocket of the trousers;
- Held in the hand.
3.1. Step Detection
3.2. Step Length Estimation
3.3. Vertical Displacement Estimation
3.4. Landmark Detection and Association
3.5. Orientation and Position Estimation
- The Euler angles ;
- The position vector ;
- The gyroscope bias .
- Zero Acceleration Assumption update (ZAA): This update is based on the detection of periods when the acceleration is zero or quasi-zero. During these periods of time, the accelerometers only measure gravity and the roll and pitch angles can be estimated as:
- Landmark based passenger’s position update: This update is based on the detection of landmarks in a traffic hub described in Section 3.4. Once a landmark is detected, its position is associated to the passenger’s position. The position of the landmark is taken from the landmark database and it is used to update the passenger’s position as follows:The positon is updated only once when the passenger walks out of the landmark, i.e., when the passenger reaches the upper or lower part of a staircase or when walking out of an elevator, since the landmark database describes the landmark only with their upper and lower positions.The position update is performed towards the position in the database. However, there is an uncertainty in this update related to the physical dimensions of the landmark. In this case, we consider the landmark width as the uncertainty for updating the passenger’s position in X and Y coordinates, and the step height as the uncertainty for updating the passenger’s position in Z coordinate.
- Landmark based passenger’s heading update: This update is also based on the detection of landmarks described in Section 3.4. When a passenger walks a staircase, the passenger’s heading is bounded by the direction in which the staircase is oriented. Therefore, the physical orientation of the staircase can be used to update the passenger’s heading as follows:The heading update is performed constantly while climbing the stairs. This update also has an uncertainty related to the physical width of the staircase, since the passenger can walk the staircase diagonally from one side to the other. We consider the uncertainty of the heading update to be the difference between the heading of a passenger walking the stairs diagonally and the heading when walking the stairs in a straight line.
4. Evaluation
5. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Name | Type | Upper Position | Lower Position | ||
---|---|---|---|---|---|
L1 | Staircase | m | m | ||
L2 | Elevator | m | m | N/A | N/A |
No Landmark Correction | Landmark Correction | |
---|---|---|
m | m | |
Handheld | m | m |
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Jurado Romero, F.; Munoz Diaz, E.; Bousdar Ahmed, D. Smartphone-Based Localization for Passengers Commuting in Traffic Hubs. Sensors 2022, 22, 7199. https://doi.org/10.3390/s22197199
Jurado Romero F, Munoz Diaz E, Bousdar Ahmed D. Smartphone-Based Localization for Passengers Commuting in Traffic Hubs. Sensors. 2022; 22(19):7199. https://doi.org/10.3390/s22197199
Chicago/Turabian StyleJurado Romero, Francisco, Estefania Munoz Diaz, and Dina Bousdar Ahmed. 2022. "Smartphone-Based Localization for Passengers Commuting in Traffic Hubs" Sensors 22, no. 19: 7199. https://doi.org/10.3390/s22197199
APA StyleJurado Romero, F., Munoz Diaz, E., & Bousdar Ahmed, D. (2022). Smartphone-Based Localization for Passengers Commuting in Traffic Hubs. Sensors, 22(19), 7199. https://doi.org/10.3390/s22197199