RUS  ENG
Full version
JOURNALS // Sistemy i Sredstva Informatiki [Systems and Means of Informatics] // Archive

Sistemy i Sredstva Inform., 2019 Volume 29, Issue 2, Pages 31–38 (Mi ssi637)

This article is cited in 1 paper

Convergence of the distribution of the threshold processing risk estimate to a mixture of normal laws at a random sample size

O. V. Shestakovab

a Institute of Informatics Problems, Federal Research "Center Computer Science and Control" of the Russian Academy of Sciences, 44-2 Vavilov Str., Moscow 119333, Russian Federation
b Department of Mathematical Statistics, Faculty of Computational Mathematics and Cybernetics, M. V. Lomonosov Moscow State University, 1-52 Leninskiye Gory, GSP-1, Moscow 119991, Russian Federation

Abstract: The popularity of signal processing algorithms using wavelet analysis methods has increased significantly over the past decades. This is explained by the fact that the wavelet decomposition is a convenient mathematical apparatus capable of solving problems in which the use of traditional Fourier analysis is ineffective. The main tasks for which the methods of wavelet analysis are used are signal compression and noise removal. In this case, the most commonly used method is threshold processing of wavelet expansion coefficients, which zeroes coefficients not exceeding a given threshold. The presence of noise and threshold processing procedures inevitably lead to errors in the estimated signal. The properties of estimates of such errors (mean square risk) have been studied in many papers. In particular, it has been shown that under certain conditions, the risk estimate is strongly consistent and asymptotically normal. When using threshold processing methods, it is usually assumed that the number of wavelet coefficients is fixed. However, in some situations, the sample size is not known in advance and is modeled by a random variable. In this paper, a model with a random number of observations is considered and a class of distributions is described that can be limiting for the mean-square risk estimate.

Keywords: threshold processing, random sample size, mean square risk estimate.

Received: 28.02.2019

DOI: 10.14357/08696527190203



© Steklov Math. Inst. of RAS, 2025