Best Fourier Approximation and Application in Efficient Blurred Signal Reconstruction |
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Authors: | Sam Efromovich Michael Ganzburg |
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Institution: | (1) Department of Mathematics and Statistics, University of New Mexico, Albuquerque, New Mexico, 87131;(2) Department of Mathematics, Hampton University, Hampton, Virginia, 23668 |
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Abstract: | We expand upon the known results on sharp linear Fourier methods of approximation where the approximation is the best in terms of both rate and constant among all polynomial procedures of approximation. So far these results have been studied due to their mathematical beauty rather than their practical importance. In this paper we show that they are the core mathematics underlying best statistical methods of solving noisy ill-posed problems. In particular, we suggest a procedure for recovery of noisy blurred signals based on samples of small sizes where a traditional statistics concludes that the complexity of such a setting makes the problem not worthy of a further study. Thus, we present a problem where a combination of the classical approximation theory and statistics leads to interesting practical results. |
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Keywords: | Linear method convolution class nonparametric deconvolution statistics adaptation |
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