УДК: 004.932.2
Method of prediction based on algorithmic probability in the problem of image restoration in missing regions
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Publication in Journal of Optical Technology
Потапов А.С., Щербаков О.В., Жданов И.Н. Метод предсказания на основе алгоритмической вероятности в задаче восстановления изображений в утерянных областях // Оптический журнал. 2013. Т. 80. № 11. С. 48–53.
Potapov, A. S., Shcherbakov O. V., Zhdanov I. N. Method of prediction based on algorithmic probability in the problem of image restoration in missing regions [in Russian] // Opticheskii Zhurnal. 2013. V. 80. № 11. P. 48–53.
This paper discusses the criterion of algorithmic probability, which offers a general solution to the question of extrapolating symbolic strings. The given criterion extends the theoretical-informational approach based on algorithmic complexity, which is widely used to synthesize image-analysis methods. Methodological recommendations are given concerning the practical application of the algorithmic-probability criterion when processing and analyzing images. As an example, a method is developed for restoring images in missing regions, which can be implemented on a computer by narrowing an algorithmically complete space of models of images to a set of their Fourier transforms.
algorithmic probability, image reconstruction, Fourier transform
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