characterising indoor positioning estimation using experimental data from an active RFID-based real time location system
Version 2 2024-06-17, 21:43Version 2 2024-06-17, 21:43
Version 1 2016-11-27, 19:10Version 1 2016-11-27, 19:10
journal contribution
posted on 2024-06-17, 21:43authored byL Lam, A Tang, JC Grundy
Indoor positioning has attracted much research effort due to many
potential applications such as human or object tracking and inventory
management. Whilst there are a number of indoor positioning
techniques and algorithms developed to improve positioning
estimation, there is still no systematic way to characterise the
estimation. In this paper, we propose a method comprising of three
characteristics to characterise indoor positioning estimation. We
conducted experiments on an active radio frequency identification
(RFID)-based real-time location system in different environmental
conditions. We used both a human and a robot to traverse two
experimental areas and collected positioning results at different
fixed points along the traversal path. Using this basic positioning
data, we were able to characterise positioning estimation using
three characterisations: position accuracy, centroid consistency and
angular distribution. We demonstrate the use of these characteristics
for examining different points in a travelling path and different
measurements.