Abstract
The problem of signal interpolation has been intensively studied in the Information Theory literature, in conditions such as unlimited band, nonuniform sampling, and presence of
noise. During the last decade, support vector machines (SVM) have been widely used for approximation problems, including function and signal interpolation. However, the signal structure has not always been taken into account in SVM interpolation. We propose the statement of two novel SVM algorithms for
signal interpolation, specifically, the primal and the dual signal model based algorithms. Shift-invariant Mercer¿s kernels are used as building blocks, according to the requirement of bandlimited signal. The sinc kernel, which has received little attention
in the SVM literature, is used for andlimited reconstruction.
Well-known properties of general SVM algorithms (sparseness
of the solution, robustness, and regularization) are explored
with simulation examples, yielding improved results with respect
to standard algorithms, and revealing good characteristics in
nonuniform interpolation of noisy signals.
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