Wi-Fi based fingerprinting systems, mostly utilize the Received Signal Strength Indicator (RSSI), which is known to be unreliable due to environmental and hardware effects. In this paper, we present a novel Wi-Fi fingerprinting system, exploiting the fine-grained information known as Channel State Information (CSI). The frequency diversity of CSI can be effectively utilized to represent a location in both frequency and spatial domain resulting in more accurate indoor localization. We propose a novel location signature CSI-MIMO that incorporates Multiple Input Multiple Output (MIMO) information and use both the magnitude and the phase of CSI of each sub-carrier. We experimentally evaluate the performance of CSI-MIMO fingerprinting using the k-nearest neighbor and the Bayes algorithm. The accuracy of the proposed CSI-MIMO is compared with Finegrained Indoor Fingerprinting System (FIFS) and a simple CSI-based system. The experimental result shows an accuracy improvement of 57% over FIFS with an accuracy of 0.95 meters.
Omar Costilla-ReyesKamesh Namuduri
Yogita ChapreAleksandar IgnjatovićAruna SeneviratneSanjay Jha
Md. Hossen AliKamilia KamardinSiti Nurhafizza MaidinNgu War HlaingHazilah Mad KaidiIrfanuddin Shafi AhmedNoureen TajUniversiti Teknologi MalaysiaHazilah Mad KaidiUniversiti Teknologi MalaysiaIrfanuddin Shafi AhmedUniversiti Teknologi MalaysiaNoureen TajComputer Science Engineering
Francesca MeneghelloMichele RossiFrancesco Restuccia