Machine and Deep Learning for Indoor UWB Jammer Localization
Hamed Fard, Mahsa Kholghi, Benedikt Gro{\ss}, Gerhard Wunder

TL;DR
This paper introduces a novel deep learning framework using adversarial feature alignment to improve indoor jammer localization accuracy across changing environments, addressing domain shift issues in UWB-based security systems.
Contribution
It proposes a domain-adversarial ConvNeXt autoencoder (A-CNT) that significantly enhances transferability of UWB jammer localization models across different indoor layouts.
Findings
Random Forest achieved 0.95 F1-macro score on source data.
XGBoost's error increased tenfold in new environment without adaptation.
A-CNT reduced localization error to 34.67 cm, improving transferability.
Abstract
Ultra-wideband (UWB) localization delivers centimeter-scale accuracy but is vulnerable to jamming attacks, creating security risks for asset tracking and intrusion detection in smart buildings. Although machine learning (ML) and deep learning (DL) methods have improved tag localization, localizing malicious jammers within a single room and across changing indoor layouts remains largely unexplored. Two novel UWB datasets, collected under original and modified room configurations, are introduced to establish comprehensive ML/DL baselines. Performance is rigorously evaluated using a variety of classification and regression metrics. On the source dataset with the collected UWB features, Random Forest achieves the highest F1-macro score of 0.95 and XGBoost achieves the lowest mean Euclidean error of 20.16 cm. However, deploying these source-trained models in the modified room layout led to…
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Taxonomy
TopicsIndoor and Outdoor Localization Technologies · Microwave Imaging and Scattering Analysis · Ultra-Wideband Communications Technology
