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This article is cited in 4 scientific papers (total in 4 papers)
MATHEMATICAL MODELING AND NUMERICAL SIMULATION
Conditions of Rice statistical model applicability and estimation of the Rician signal's parameters by maximum likelihood technique
T. V. Yakovleva Institution of Russian Academy of Sciences Dorodnicyn Computing Centre of RAS, 40 Vavilov st., Moscow, 119333, Russia
Abstract:
The paper develops a theory of a new so-called two-parametric approach to the random signals'analysis and processing. A mathematical simulation and the task solutions' comparison have been implemented for the Gauss and Rice statistical models. The applicability of the Rice statistical model is substantiated for the tasks of data and images processing when the signal's envelope is being analyzed. A technique is developed and theoretically substantiated for solving the task of the noise suppression and initial image reconstruction by means of joint calculation of both statistical parameters — an initial signal's mean value and noise dispersion — based on the maximum likelihood method within the Rice distribution. The peculiarities of this distribution's likelihood function and the following from them possibilities of the signal and noise estimation have been analyzed.
Keywords:
random signal, Rice distribution, Gauss distribution, maximum likelihood technique, signal-to-noise ratio.
Received: 10.02.2014
Citation:
T. V. Yakovleva, “Conditions of Rice statistical model applicability and estimation of the Rician signal's parameters by maximum likelihood technique”, Computer Research and Modeling, 6:1 (2014), 13–25
Linking options:
https://www.mathnet.ru/eng/crm301 https://www.mathnet.ru/eng/crm/v6/i1/p13
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Abstract page: | 168 | Full-text PDF : | 133 | References: | 22 |
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