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Controlling the Gibbs phenomenon in noisy deconvolution of irregular multivariable input signals
Author(s) -
Kumari Chandrawansa,
F.H. Ruymgaart,
A. C. M. van Rooij
Publication year - 1998
Publication title -
international journal of stochastic analysis
Language(s) - English
Resource type - Journals
eISSN - 2090-3340
pISSN - 2090-3332
DOI - 10.1155/s1048953300000010
Subject(s) - mathematics , estimator , classification of discontinuities , multivariable calculus , hausdorff distance , convolution (computer science) , gibbs phenomenon , algorithm , mathematical analysis , computer science , artificial intelligence , statistics , artificial neural network , fourier transform , control engineering , engineering
An example of inverse estimation of irregular multivariable signals is provided by picture restoration. Pictures typically have sharp edges and therefore will be modeled by functions with discontinuities, and they could be blurred by motion. Mathematically, this means that we actually observe the convolution of the irregular function representing the picture with a spread function. Since these observations will contain measurement errors, statistical aspects will be pertinent. Traditional recovery is corrupted by the Gibbs phenomenon (i.e., overshooting) near the edges, just as in the case of direct approximations. In order to eliminate these undesirable effects, we introduce an integral Cesàro mean in the inversion procedure, leading to multivariable Fejér kernels. Integral metrics are not sufficiently sensitive to properly assess the quality of the resulting estimators. Therefore, the performance of the estimators is studied in the Hausdorff metric, and a speed of convergence of the Hausdorff distance between the graph of the input signal and its estimator is obtained

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