Litcius/Paper detail

Enhanced Wi-Fi RTT Ranging: A Sensor-Aided Learning Approach

Jeongsik Choi

2022IEEE Transactions on Vehicular Technology26 citationsDOI

Abstract

The fine timing measurement (FTM) protocol is designed to determine precise ranging between Wi-Fi devices using round-trip time (RTT) measurements. However, the multipath propagation of radio waves generates inaccurate timing information, degrading the ranging performance. In this study, we use a neural network (NN) to adaptively learn the unique measurement patterns observed at different indoor environments and produce enhanced ranging outputs from raw FTM measurements. Moreover, the NN is trained based on an unsupervised learning framework, using the naturally accumulated sensor data acquired from users accessing location services. Therefore, the effort involved in collecting training data is significantly minimized. The experimental results verified that the collection of unlabeled data for a short duration is sufficient to learn the pattern in raw FTM measurements and produce improved ranging results. The proposed method reduced the errors in raw distance measurements and well-calibrated ranging results requiring the collection of ground truth data by 47–50% and 17–29%, respectively. Consequently, positioning errors were reduced by 17–30% compared to the well-calibrated ranging scenario.

Topics & Concepts

RangingComputer scienceGround truthMultipath propagationReal-time computingData collectionDose-ranging studyRaw dataArtificial intelligenceChannel (broadcasting)TelecommunicationsStatisticsMathematicsProgramming languagePlaceboAlternative medicineDouble blindMedicinePathologyIndoor and Outdoor Localization TechnologiesUnderwater Vehicles and Communication SystemsMillimeter-Wave Propagation and Modeling