A Constrained Kalman Filter for Wi-Fi-Based Indoor Localization with Flexible Space Organization

Sensors (Basel). 2022 Jan 6;22(2):428. doi: 10.3390/s22020428.

Abstract

This paper presents a constrained Kalman filter for Wi-Fi-based indoor localization. The contribution of this work is to introduce constraints on the object speed and to provide a numerically optimized form for fast computation. The proposed approach is suitable to flexible space organization, as in warehouses, and when objects can be spun around, for example barcode readers in a hand. We experimented with the proposed technique using a robot and three devices, on five different journeys, in a 6000 m2 warehouse equipped with six Wi-Fi access points. The results highlight that the proposed approach provides a 19% improvement in localization accuracy.

Keywords: Localization Based Service (LBS); Wi-Fi; constrained Kalman filtering; flexible indoor organization.