Indoor Positioning via Gradient Boosting Enhanced with Feature Augmentation using Deep Learning
Ashkan Goharfar, Jaber Babaki, Mehdi Rasti, Pedro H. J. Nardelli

TL;DR
This paper introduces AugBoost-ANN, a novel indoor positioning method combining gradient boosting with deep learning-based feature augmentation, achieving over 8% accuracy improvement and a mean location error of 0.77 meters.
Contribution
The paper presents a new deep learning-enhanced gradient boosting approach with feature augmentation for indoor localization, utilizing IoT data collection and transfer learning.
Findings
Over 8% accuracy improvement over existing methods
Achieves a mean location accuracy of 0.77 meters
Effective feature augmentation with deep neural networks
Abstract
With the emerge of the Internet of Things (IoT), localization within indoor environments has become inevitable and has attracted a great deal of attention in recent years. Several efforts have been made to cope with the challenges of accurate positioning systems in the presence of signal interference. In this paper, we propose a novel deep learning approach through Gradient Boosting Enhanced with Step-Wise Feature Augmentation using Artificial Neural Network (AugBoost-ANN) for indoor localization applications as it trains over labeled data. For this purpose, we propose an IoT architecture using a star network topology to collect the Received Signal Strength Indicator (RSSI) of Bluetooth Low Energy (BLE) modules by means of a Raspberry Pi as an Access Point (AP) in an indoor environment. The dataset for the experiments is gathered in the real world in different periods to match the real…
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Taxonomy
TopicsIndoor and Outdoor Localization Technologies · Underwater Vehicles and Communication Systems · Speech and Audio Processing
