LSS-RM: Using Multi-Mounted Devices to Construct a Lightweight Site-Survey Radio Map for WiFi Positioning
A WiFi-received signal strength index (RSSI) fingerprinting-based indoor positioning system (WiFi-RSSI IPS) is widely studied due to advantages of low cost and high accuracy, especially in a complex indoor environment where performance of the ranging method is limited. The key drawback that limits t...
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doaj-ef23e9fb92e147aa84b743018e6848f12020-11-25T02:49:12ZengMDPI AGMicromachines2072-666X2018-09-019945810.3390/mi9090458mi9090458LSS-RM: Using Multi-Mounted Devices to Construct a Lightweight Site-Survey Radio Map for WiFi PositioningWei Yang0Chundi Xiu1Jiarui Ye2Zhixing Lin3Haisong Wei4Dayu Yan5Dongkai Yang6School of Electronic and Information Engineering, Beihang University, Beijing 100083, ChinaSchool of Electronic and Information Engineering, Beihang University, Beijing 100083, ChinaSchool of Electronic and Information Engineering, Beihang University, Beijing 100083, ChinaSchool of Electronic and Information Engineering, Beihang University, Beijing 100083, ChinaSchool of Electronic and Information Engineering, Beihang University, Beijing 100083, ChinaSchool of Electronic and Information Engineering, Beihang University, Beijing 100083, ChinaSchool of Electronic and Information Engineering, Beihang University, Beijing 100083, ChinaA WiFi-received signal strength index (RSSI) fingerprinting-based indoor positioning system (WiFi-RSSI IPS) is widely studied due to advantages of low cost and high accuracy, especially in a complex indoor environment where performance of the ranging method is limited. The key drawback that limits the large-scale deployment of WiFi-RSSI IPS is time-consuming offline site surveys. To solve this problem, we developed a method using multi-mounted devices to construct a lightweight site-survey radio map (LSS-RM) for WiFi positioning. A smartphone was mounted on the foot (Phone-F) and another on the waist (Phone-W) to scan WiFi-RSSI and simultaneously sample microelectromechanical system inertial measurement-unit (MEMS-IMU) readings, including triaxial accelerometer, gyroscope, and magnetometer measurements. The offline site-survey phase in LSS-RM is a client–server model of a data collection and preprocessing process, and a post calibration process. Reference-point (RP) coordinates were estimated using the pedestrian dead-reckoning algorithm. The heading was calculated with a corner detected by Phone-W and the preassigned site-survey trajectory. Step number and stride length were estimated using Phone-F based on the stance-phase detection algorithm. Finally, the WiFi-RSSI radio map was constructed with the RP coordinates and timestamps of each stance phase. Experimental results show that our LSS-RM method can reduce the time consumption of constructing a WiFi-RSSI radio map from 54 min to 7.6 min compared with the manual site-survey method. The average positioning error was below 2.5 m with three rounds along the preassigned site-survey trajectory. LSS-RM aims to reduce offline site-survey time consumption, which would cut down on manpower. It can be used in the large-scale implementation of WiFi-RSSI IPS, such as shopping malls, hospitals, and parking lots.http://www.mdpi.com/2072-666X/9/9/458indoor positioningWiFi-RSSI radio mapMEMS-IMU accelerometerzero-velocity updatestep detectionstride length estimation |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Wei Yang Chundi Xiu Jiarui Ye Zhixing Lin Haisong Wei Dayu Yan Dongkai Yang |
spellingShingle |
Wei Yang Chundi Xiu Jiarui Ye Zhixing Lin Haisong Wei Dayu Yan Dongkai Yang LSS-RM: Using Multi-Mounted Devices to Construct a Lightweight Site-Survey Radio Map for WiFi Positioning Micromachines indoor positioning WiFi-RSSI radio map MEMS-IMU accelerometer zero-velocity update step detection stride length estimation |
author_facet |
Wei Yang Chundi Xiu Jiarui Ye Zhixing Lin Haisong Wei Dayu Yan Dongkai Yang |
author_sort |
Wei Yang |
title |
LSS-RM: Using Multi-Mounted Devices to Construct a Lightweight Site-Survey Radio Map for WiFi Positioning |
title_short |
LSS-RM: Using Multi-Mounted Devices to Construct a Lightweight Site-Survey Radio Map for WiFi Positioning |
title_full |
LSS-RM: Using Multi-Mounted Devices to Construct a Lightweight Site-Survey Radio Map for WiFi Positioning |
title_fullStr |
LSS-RM: Using Multi-Mounted Devices to Construct a Lightweight Site-Survey Radio Map for WiFi Positioning |
title_full_unstemmed |
LSS-RM: Using Multi-Mounted Devices to Construct a Lightweight Site-Survey Radio Map for WiFi Positioning |
title_sort |
lss-rm: using multi-mounted devices to construct a lightweight site-survey radio map for wifi positioning |
publisher |
MDPI AG |
series |
Micromachines |
issn |
2072-666X |
publishDate |
2018-09-01 |
description |
A WiFi-received signal strength index (RSSI) fingerprinting-based indoor positioning system (WiFi-RSSI IPS) is widely studied due to advantages of low cost and high accuracy, especially in a complex indoor environment where performance of the ranging method is limited. The key drawback that limits the large-scale deployment of WiFi-RSSI IPS is time-consuming offline site surveys. To solve this problem, we developed a method using multi-mounted devices to construct a lightweight site-survey radio map (LSS-RM) for WiFi positioning. A smartphone was mounted on the foot (Phone-F) and another on the waist (Phone-W) to scan WiFi-RSSI and simultaneously sample microelectromechanical system inertial measurement-unit (MEMS-IMU) readings, including triaxial accelerometer, gyroscope, and magnetometer measurements. The offline site-survey phase in LSS-RM is a client–server model of a data collection and preprocessing process, and a post calibration process. Reference-point (RP) coordinates were estimated using the pedestrian dead-reckoning algorithm. The heading was calculated with a corner detected by Phone-W and the preassigned site-survey trajectory. Step number and stride length were estimated using Phone-F based on the stance-phase detection algorithm. Finally, the WiFi-RSSI radio map was constructed with the RP coordinates and timestamps of each stance phase. Experimental results show that our LSS-RM method can reduce the time consumption of constructing a WiFi-RSSI radio map from 54 min to 7.6 min compared with the manual site-survey method. The average positioning error was below 2.5 m with three rounds along the preassigned site-survey trajectory. LSS-RM aims to reduce offline site-survey time consumption, which would cut down on manpower. It can be used in the large-scale implementation of WiFi-RSSI IPS, such as shopping malls, hospitals, and parking lots. |
topic |
indoor positioning WiFi-RSSI radio map MEMS-IMU accelerometer zero-velocity update step detection stride length estimation |
url |
http://www.mdpi.com/2072-666X/9/9/458 |
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