Joint Positioning and Radio Map Generation Based on Stochastic Variational Bayesian Inference for FWIPS
Caifa Zhou, Yang Gu

TL;DR
This paper introduces a probabilistic model using stochastic variational Bayesian inference to jointly estimate positions and generate radio maps for indoor WLAN positioning, reducing the need for extensive site surveys.
Contribution
It proposes a novel SVBI-based approach that simultaneously predicts positions and radio maps, requiring only one training phase, thus improving efficiency over existing methods.
Findings
Predicts distribution of position and RSS accurately
Reduces site survey effort significantly
Outperforms previous approaches in accuracy and efficiency
Abstract
Fingerprinting based WLAN indoor positioning system (FWIPS) provides a promising indoor positioning solution to meet the growing interests for indoor location-based services (e.g., indoor way finding or geo-fencing). FWIPS is preferred because it requires no additional infrastructure for deploying an FWIPS and achieving the position estimation by reusing the available WLAN and mobile devices, and capable of providing absolute position estimation. For fingerprinting based positioning (FbP), a model is created to provide reference values of observable features (e.g., signal strength from access point (AP)) as a function of location during offline stage. One widely applied method to build a complete and an accurate reference database (i.e. radio map (RM)) for FWIPS is carrying out a site survey throughout the region of interest (RoI). Along the site survey, the readings of received signal…
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Taxonomy
TopicsIndoor and Outdoor Localization Technologies · Speech and Audio Processing · Distributed Sensor Networks and Detection Algorithms
