Radio Map Reconstruction With Adaptive Spatial Feature Learning

Radio map reconstruction is a fundamental problem of great relevance in numerous real-world applications, such as network planning and fingerprint localization. Sampling the complete radio map is prohibitively costly in practice and difficult to achieve. Such methods for reconstructing radio maps fr...

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Main Authors: Jie Yang, Wenbin Guo
Format: Article
Language:English
Published: Wiley 2024-01-01
Series:IET Signal Processing
Online Access:http://dx.doi.org/10.1049/2024/7090832
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author Jie Yang
Wenbin Guo
author_facet Jie Yang
Wenbin Guo
author_sort Jie Yang
collection DOAJ
description Radio map reconstruction is a fundamental problem of great relevance in numerous real-world applications, such as network planning and fingerprint localization. Sampling the complete radio map is prohibitively costly in practice and difficult to achieve. Such methods for reconstructing radio maps from a subset of measurements are now gaining additional attention. In this paper, we first explore the spatial features of signals on the radio map and formulate the reconstruction problem as an optimization problem with feature penalties. Then, we propose an iteration algorithm with spatial feature learning to reconstruct signals on the radio map, which improves the reconstruction accuracy by using an adaptive feature dictionary. Numerical examples are given to demonstrate the viability and performance of our method at last.
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institution Kabale University
issn 1751-9683
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spelling doaj-art-e776da05aa2c48df8a12fa1d08dbc25d2025-08-20T03:24:43ZengWileyIET Signal Processing1751-96832024-01-01202410.1049/2024/7090832Radio Map Reconstruction With Adaptive Spatial Feature LearningJie Yang0Wenbin Guo1School of Information and Communication EngineeringSchool of Information and Communication EngineeringRadio map reconstruction is a fundamental problem of great relevance in numerous real-world applications, such as network planning and fingerprint localization. Sampling the complete radio map is prohibitively costly in practice and difficult to achieve. Such methods for reconstructing radio maps from a subset of measurements are now gaining additional attention. In this paper, we first explore the spatial features of signals on the radio map and formulate the reconstruction problem as an optimization problem with feature penalties. Then, we propose an iteration algorithm with spatial feature learning to reconstruct signals on the radio map, which improves the reconstruction accuracy by using an adaptive feature dictionary. Numerical examples are given to demonstrate the viability and performance of our method at last.http://dx.doi.org/10.1049/2024/7090832
spellingShingle Jie Yang
Wenbin Guo
Radio Map Reconstruction With Adaptive Spatial Feature Learning
IET Signal Processing
title Radio Map Reconstruction With Adaptive Spatial Feature Learning
title_full Radio Map Reconstruction With Adaptive Spatial Feature Learning
title_fullStr Radio Map Reconstruction With Adaptive Spatial Feature Learning
title_full_unstemmed Radio Map Reconstruction With Adaptive Spatial Feature Learning
title_short Radio Map Reconstruction With Adaptive Spatial Feature Learning
title_sort radio map reconstruction with adaptive spatial feature learning
url http://dx.doi.org/10.1049/2024/7090832
work_keys_str_mv AT jieyang radiomapreconstructionwithadaptivespatialfeaturelearning
AT wenbinguo radiomapreconstructionwithadaptivespatialfeaturelearning