Developing a Filtering Algorithm for Doubly Stochastic Images Based on Models with Multiple Roots of Characteristic Equations


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Abstract

The properties of doubly stochastic models constructed using a combination of autoregression models with multiple roots of characteristic equations are studied. These models are demonstrated to be adequate to real multidimensional signals; the probabilistic and correlation properties of the simulated signals are studied. Based on the proposed models, a filtering algorithm is developed for doubly stochastic autoregression random fields generated by the models with multiple roots of the characteristic equations. The algorithm is compared to the alternative approaches.

About the authors

N. A. Andriyanov

Ulyanovsk State Technical University

Email: vkk@ulstu.ru
Russian Federation, Severny Venets, 32, Ulyanovsk, 432027

V. E. Dementiev

Ulyanovsk State Technical University

Email: vkk@ulstu.ru
Russian Federation, Severny Venets, 32, Ulyanovsk, 432027

K. K. Vasiliev

Ulyanovsk State Technical University

Author for correspondence.
Email: vkk@ulstu.ru
Russian Federation, Severny Venets, 32, Ulyanovsk, 432027

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