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Autores principales: Abdelmotlb, Abdelrahman, Taman, Abdallah, Mostafa, Sherif, Youssef, Moustafa
Formato: Preprint
Publicado: 2025
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Acceso en línea:https://arxiv.org/abs/2511.18158
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author Abdelmotlb, Abdelrahman
Taman, Abdallah
Mostafa, Sherif
Youssef, Moustafa
author_facet Abdelmotlb, Abdelrahman
Taman, Abdallah
Mostafa, Sherif
Youssef, Moustafa
contents Indoor localization systems commonly rely on fingerprinting, which requires extensive survey efforts to obtain location-tagged signal data, limiting their real-world deployability. Recent approaches that attempt to reduce this overhead either suffer from low representation ability, mode collapse issues, or require the effort of collecting data at all target locations. We present LocaGen, a novel spatial augmentation framework that significantly reduces fingerprinting overhead by generating high-quality synthetic data at completely unseen locations. LocaGen leverages a conditional diffusion model guided by a novel spatially aware optimization strategy to synthesize realistic fingerprints at unseen locations using only a subset of seen locations. To further improve our diffusion model performance, LocaGen augments seen location data based on domain-specific heuristics and strategically selects the seen and unseen locations using a novel density-based approach that ensures robust coverage. Our extensive evaluation on a real-world WiFi fingerprinting dataset shows that LocaGen maintains the same localization accuracy even with 30% of the locations unseen and achieves up to 28% improvement in accuracy over state-of-the-art augmentation methods.
format Preprint
id arxiv_https___arxiv_org_abs_2511_18158
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle LocaGen: Low-Overhead Indoor Localization Through Spatial Augmentation
Abdelmotlb, Abdelrahman
Taman, Abdallah
Mostafa, Sherif
Youssef, Moustafa
Machine Learning
Networking and Internet Architecture
Indoor localization systems commonly rely on fingerprinting, which requires extensive survey efforts to obtain location-tagged signal data, limiting their real-world deployability. Recent approaches that attempt to reduce this overhead either suffer from low representation ability, mode collapse issues, or require the effort of collecting data at all target locations. We present LocaGen, a novel spatial augmentation framework that significantly reduces fingerprinting overhead by generating high-quality synthetic data at completely unseen locations. LocaGen leverages a conditional diffusion model guided by a novel spatially aware optimization strategy to synthesize realistic fingerprints at unseen locations using only a subset of seen locations. To further improve our diffusion model performance, LocaGen augments seen location data based on domain-specific heuristics and strategically selects the seen and unseen locations using a novel density-based approach that ensures robust coverage. Our extensive evaluation on a real-world WiFi fingerprinting dataset shows that LocaGen maintains the same localization accuracy even with 30% of the locations unseen and achieves up to 28% improvement in accuracy over state-of-the-art augmentation methods.
title LocaGen: Low-Overhead Indoor Localization Through Spatial Augmentation
topic Machine Learning
Networking and Internet Architecture
url https://arxiv.org/abs/2511.18158