The paper presents a multiscale method for image denoising using a nonlinear diffusion process. The key aspects are:
The noised image is given as an initial condition, and a nonlinear diffusion model (Perona-Malik) is used to preserve essential image features during the denoising process.
To address the high computational complexity of solving the nonlinear parabolic equation on high-resolution images, a multiscale approach is developed using the Generalized Multiscale Finite Element Method (GMsFEM).
The multiscale method involves two main steps:
a. Performing local image denoising in each local domain of the basis support to improve the accuracy of the nonlinear coefficient calculation.
b. Constructing spectral multiscale basis functions to build a coarse-resolution representation using a Galerkin coupling.
The local denoising step helps capture the "right" behavior related to the global denoising iterations, leading to better basis representation and faster convergence on the coarse grid.
Numerical results are presented for both grayscale and color images, demonstrating the effectiveness of the proposed multiscale approach in terms of denoising quality and computational efficiency.
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by Maria Vasily... lúc arxiv.org 09-25-2024
https://arxiv.org/pdf/2409.15952.pdfYêu cầu sâu hơn