A Unified SVM Framework for Signal Estimation
Jos\'e Luis Rojo-\'Alvarez, Manel Mart\'inez-Ram\'on, Jordi, Mu\~noz-Mar\'i, Gustavo Camps-Valls

TL;DR
This paper introduces a comprehensive SVM-based framework for various signal estimation tasks in DSP, leveraging kernel methods and functional analysis to develop novel algorithms for linear and non-linear models.
Contribution
It develops a unified SVM framework for DSP signal estimation, including primal, RKHS, and dual formulations, enabling new algorithms for diverse signal processing problems.
Findings
SVM methods outperform traditional approaches in system identification.
The framework effectively handles linear and non-linear signal models.
Experimental results demonstrate the versatility and simplicity of the proposed methods.
Abstract
This paper presents a unified framework to tackle estimation problems in Digital Signal Processing (DSP) using Support Vector Machines (SVMs). The use of SVMs in estimation problems has been traditionally limited to its mere use as a black-box model. Noting such limitations in the literature, we take advantage of several properties of Mercer's kernels and functional analysis to develop a family of SVM methods for estimation in DSP. Three types of signal model equations are analyzed. First, when a specific time-signal structure is assumed to model the underlying system that generated the data, the linear signal model (so called Primal Signal Model formulation) is first stated and analyzed. Then, non-linear versions of the signal structure can be readily developed by following two different approaches. On the one hand, the signal model equation is written in reproducing kernel Hilbert…
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Taxonomy
TopicsBlind Source Separation Techniques · Control Systems and Identification · Neural Networks and Applications
MethodsSupport Vector Machine
