DocumentCode :
1260981
Title :
Group-Lasso on Splines for Spectrum Cartography
Author :
Bazerque, Juan Andrés ; Mateos, Gonzalo ; Giannakis, Georgios B.
Author_Institution :
Dept. of Electr. & Comput. Engi neering, Univ. of Minnesota, Minneapolis, MN, USA
Volume :
59
Issue :
10
fYear :
2011
Firstpage :
4648
Lastpage :
4663
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 finite-dimensional (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 ability to select a few of these bases that “better” explain the data. This parsimonious field representation becomes possible, because the sparsity-aware spline-based method of this paper induces a group-Lasso estimator for the coefficients of the thin-plate spline expansions per basis. A distributed algorithm is also developed to obtain the group-Lasso estimator using a network of wireless sensors, or, using multiple processors to balance the load of a single computational unit. The novel spline-based approach is motivated by a spectrum cartography application, in which a set of sensing cognitive radios collaborate to estimate the distribution of RF power in space and frequency. Computer simulations and tests on real data corroborate that the estimated power spectrum density atlas yields the desired RF state awareness, since the maps reveal spatial locations where idle frequency bands can be reused for transmission, even when fading and shadowing effects are pronounced.
Keywords :
cartography; cognitive radio; distributed algorithms; least squares approximations; splines (mathematics); wireless sensor networks; RF power distribution; RF state awareness; adaptive sensing platform; basis expansion model; cognitive radio sensing; collaborative sensing platform; computer simulation; distributed algorithm; fading effect; field estimation; finite-dimensional estimation; group-Lasso estimator; idle frequency band; innovative signal processing algorithm; large-scale signal processing algorithm; parsimonious field representation; power spectrum density atlas; regularized variational LS criterion; regularized variational least-squares criterion; shadowing effect; single computational unit; sparsity-aware spline-based method; spectrum cartography; thin-plate spline expansion; wireless sensor network; Adaptation model; Estimation; Kernel; Niobium; Sensors; Spline; Wireless sensor networks; (group-) Lasso; Cognitive radio sensing; field estimation; optimization; sparsity; splines;
fLanguage :
English
Journal_Title :
Signal Processing, IEEE Transactions on
Publisher :
ieee
ISSN :
1053-587X
Type :
jour
DOI :
10.1109/TSP.2011.2160858
Filename :
5934611
Link To Document :
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