DataLoc+: A Data Augmentation Technique for Machine Learning in Room-Level Indoor Localization
Amr E Hilal, Ismail Arai, Samy El-Tawab

TL;DR
DataLoc+ is a novel data augmentation method that improves machine learning-based indoor localization accuracy by synthetically expanding training data, especially effective with limited datasets and larger problems.
Contribution
It introduces a simple, combined data augmentation algorithm for room-level indoor localization that enhances model accuracy and adaptability with limited data.
Findings
DataLoc+ outperforms direct snapshot approach in accuracy.
The technique maintains high accuracy with limited data.
It adapts well to larger localization problems.
Abstract
Indoor localization has been a hot area of research over the past two decades. Since its advent, it has been steadily utilizing the emerging technologies to improve accuracy, and machine learning has been at the heart of that. Machine learning has been increasingly used in fingerprint-based indoor localization to replace or emulate the radio map that is used to predict locations given a location signature. The prediction quality of a machine learning model primarily depends on how well the model was trained, which relies on the amount and quality of data used to train it. Data augmentation has been used to improve quality of the trained models by synthetically producing more training data, and several approaches were used in the literature that tackles the problem of lack of training data from different angles. In this paper, we propose DataLoc+, a data augmentation technique for…
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