Group-Lasso on Splines for Spectrum Cartography
Juan A. Bazerque, Gonzalo Mateos, Georgios B. Giannakis

TL;DR
This paper introduces a spline-based, sparsity-regularized group-Lasso method for large-scale spectrum cartography, enabling collaborative RF power mapping with distributed sensor networks.
Contribution
It develops a novel spline-based group-Lasso estimator for efficient, sparse, and distributed RF spectrum mapping, improving robustness and scalability over existing methods.
Findings
Accurately estimates RF power distribution in complex environments.
Demonstrates effective sparse basis selection for spectrum maps.
Validates the approach with simulated spectrum cartography tests.
Abstract
The unceasing demand for continuous situational awareness calls for innovative and large-scale signal processing algorithms, complemented by collaborative and adaptive sensing platforms to accomplish the objectives of layered sensing and control. Towards this goal, the present paper develops a spline-based approach to field estimation, which relies on a basis expansion model of the field of interest. The model entails known bases, weighted by generic functions estimated from the field's noisy samples. A novel field estimator is developed based on a regularized variational least-squares (LS) criterion that yields finitely-parameterized (function) estimates spanned by thin-plate splines. Robustness considerations motivate well the adoption of an overcomplete set of (possibly overlapping) basis functions, while a sparsifying regularizer augmenting the LS cost endows the estimator with the…
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