Litcius/Paper detail

Visible Light Positioning Using Bayesian Filters

Robin Amsters, Dimiter Holm, Joren Joly, Eric Demeester, Nobby Stevens, Peter Slaets

2020Journal of Lightwave Technology29 citationsDOIOpen Access PDF

Abstract

Visible light positioning has the potential to be a cost-effective technology for accurate indoor positioning. However, existing approaches often require large amounts of incoming data, usually in the form of high resolution images or dense lighting distributions. Additionally, a line of sight between transmitter and receiver is generally required at all times. In this work, we present a positioning approach that combines measurements from a camera, encoders and a gyroscope. We compare multiple algorithms for fusing these data, namely an extended Kalman filter, a particle filter and a hybrid approach. The end result is a system that provides location estimates even with sparse lighting distributions and temporary outages, yet achieves an average accuracy of 2 to 4 cm. Even in the 95th percentile of the cumulative error distribution, accuracy can be as low as 2 cm and is often lower than 10 cm. Moreover, due to the use of a low-resolution camera (640×480 pixels) and efficient fusion algorithms, the latency is relatively low on a standard laptop (between 5.6 and 21 milliseconds). Even on a low-cost embedded board, latency generally does not exceed 100 milliseconds. We validate our approach experimentally and show that it is robust under a wide range of illumination conditions.

Topics & Concepts

Computer scienceArtificial intelligenceKalman filterComputer visionPixelSensor fusionEncoderReal-time computingOperating systemIndoor and Outdoor Localization TechnologiesOptical Wireless Communication TechnologiesRadio Wave Propagation Studies