Uncertainty quantification of modified Cahn-Hilliard equation for image inpainting

06/17/2019
by   Yin Xian, et al.
0

In this paper, we review modified Cahn-Hilliard equation for image inpainting and explore the effect when the initial condition is uncertain. We study the statistical properties of the solution when the noise is present. The generalized polynomial chaos and the perturbation expansion are used to analyze the equation. Experimental results are attached for comparison of solution behavior.

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