ACCES: Offline accuracy estimation for fingerprint-based localization
Date
2017Author
Nikitin, A.
Chatzimilioudis, Georgios
Karras, P.

ISBN
978-1-5386-3932-0Publisher
Institute of Electrical and Electronics Engineers Inc.Source
Proceedings - 18th IEEE International Conference on Mobile Data Management, MDM 201718th IEEE International Conference on Mobile Data Management, MDM 2017
Pages
358-359Google Scholar check
Keyword(s):
Metadata
Show full item recordAbstract
In this demonstration we present ACCES, a novel framework that enables quality assessment of arbitrary fingerprint maps and offline accuracy estimation for the task of fingerprint-based indoor localization. Our framework considers collected fingerprints disregarding the physical origin of the data. First, it applies a widely used statistical instrument, namely Gaussian Process Regression (GPR), for interpolation of the fingerprints. Then, to estimate the best possibly achievable localization accuracy at any location, it utilizes the Cramer-Rao Lower Bound (CRLB) with interpolated data as an input. Our demonstration entails a standalone version of the popular and open-source Anyplace Internet-based indoor navigation service in which the software modules of ACCES are integrated. At the conference, we will present the utility of our method in two modes: (i) Collection Mode, where attendees will be able to use our service directly to collect signal measurements over the venue using an Android smartphone, and (ii) Reflection Mode, where attendees will be able to observe the collected measurements and the respective ACCES accuracy estimations in the form of an overlay heatmap. © 2017 IEEE.