LGNIMay 22, 2015

Machine Learning for Indoor Localization Using Mobile Phone-Based Sensors

arXiv:1505.06125v122 citations
Originality Incremental advance
AI Analysis

This addresses indoor positioning for mobile users, with incremental improvements in speed and accuracy.

The paper tackles indoor localization using mobile phone sensors, achieving a mean error of 0.76 meters and proposing a hybrid method that speeds up localization by ten times without accuracy loss.

In this paper we investigate the problem of localizing a mobile device based on readings from its embedded sensors utilizing machine learning methodologies. We consider a real-world environment, collect a large dataset of 3110 datapoints, and examine the performance of a substantial number of machine learning algorithms in localizing a mobile device. We have found algorithms that give a mean error as accurate as 0.76 meters, outperforming other indoor localization systems reported in the literature. We also propose a hybrid instance-based approach that results in a speed increase by a factor of ten with no loss of accuracy in a live deployment over standard instance-based methods, allowing for fast and accurate localization. Further, we determine how smaller datasets collected with less density affect accuracy of localization, important for use in real-world environments. Finally, we demonstrate that these approaches are appropriate for real-world deployment by evaluating their performance in an online, in-motion experiment.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes