Visible to the public Fingerprint Quality Classification for CSI-based Indoor Positioning Systems

TitleFingerprint Quality Classification for CSI-based Indoor Positioning Systems
Publication TypeConference Paper
Year of Publication2019
AuthorsRocamora, Josyl Mariela, Ho, Ivan Wang-Hei, Mak, Man-Wai
Conference NameProceedings of the ACM MobiHoc Workshop on Pervasive Systems in the IoT Era
PublisherAssociation for Computing Machinery
Conference LocationCatania, Italy
ISBN Number978-1-4503-6805-6
Keywordschannel state information, composability, fingerprint, Indoor Positioning, logistic regression, Predictive Metrics, pubcrawl, Resiliency, Support vector machines
AbstractRecent indoor positioning systems that utilize channel state information (CSI) consider ideal scenarios to achieve high-accuracy performance in fingerprint matching. However, one essential component in achieving high accuracy is the collection of high-quality fingerprints. The quality of fingerprints may vary due to uncontrollable factors such as environment noise, interference, and hardware instability. In our paper, we propose a method for collecting high-quality fingerprints for indoor positioning. First, we have developed a logistic regression classifier based on gradient descent to evaluate the quality of the collected channel frequency response (CFR) samples. We employ the classifier to sift out poor CFR samples and only retain good ones as input to the positioning system. We discover that our classifier can achieve high classification accuracy from over thousands of CFR samples. We then evaluate the positioning accuracy based on two techniques: Time-Reversal Resonating Strength (TRRS) and Support Vector Machines (SVM). We find that the sifted fingerprints always result in better positioning performance. For example, an average percentage improvement of 114% for TRRS and 22% for SVM compared to that of unsifted fingerprints of the same 40-MHz effective bandwidth.
URLhttps://doi.org/10.1145/3331052.3332475
DOI10.1145/3331052.3332475
Citation Keyrocamora_fingerprint_2019