Litcius/Paper detail

Efficient Wi-Fi Fingerprint Crowdsourcing for Indoor Localization

Yongyong Wei, Rong Zheng

2021IEEE Sensors Journal32 citationsDOI

Abstract

Wi-Fi Received Signal Strength (RSS, fingerprints) based indoor localization is promising and widely investigated with the pervasive deployment of Wi-Fi Access Points. However, the process to collect RSS, also known as site survey, is labor-intensive. Thus, we propose and demonstrate an efficient fingerprint crowdsourcing method in this paper. Specifically, RSS measurements are obtained and annotated with location tags while a participant is walking along a chosen path with a smartphone at hand. In the localization stage, we adopt the Gaussian Process based solution and propose a novel mean function selection method. Extensive experiments show that the path-based site survey can achieve a comparable localization performance to the point-based site survey, but takes less survey time. We find that fingerprints collected while walking are more suitable for localizing moving pedestrians. In addition, due to the sparsity of fingerprints collected through crowdsourcing, the proposed mean function selection strategy is advantageous and can reduce localization errors significantly compared to a baseline solution.

Topics & Concepts

RSSCrowdsourcingFingerprint (computing)Computer scienceFingerprint recognitionProcess (computing)Signal strengthSoftware deploymentGaussian processArtificial intelligencePath (computing)Data miningPattern recognition (psychology)GaussianReal-time computingWireless sensor networkComputer networkWorld Wide WebQuantum mechanicsPhysicsOperating systemIndoor and Outdoor Localization TechnologiesMillimeter-Wave Propagation and ModelingSpeech and Audio Processing
Efficient Wi-Fi Fingerprint Crowdsourcing for Indoor Localization | Litcius