CVSep 22, 2019

Nonlocal Patches based Gaussian Mixture Model for Image Inpainting

arXiv:1909.09932v111 citations
Originality Incremental advance
AI Analysis

This addresses image restoration for applications like photography or medical imaging, but it is incremental as it builds on existing patch-based and variational techniques.

The paper tackles the challenge of simultaneously inpainting and denoising noisy images by proposing a nonlocal variational method based on Gaussian Mixture Models, achieving impressive reconstructed results for large inpainting regions.

We consider the inpainting problem for noisy images. It is very challenge to suppress noise when image inpainting is processed. An image patches based nonlocal variational method is proposed to simultaneously inpainting and denoising in this paper. Our approach is developed on an assumption that the small image patches should be obeyed a distribution which can be described by a high dimension Gaussian Mixture Model. By a maximum a posteriori (MAP) estimation, we formulate a new regularization term according to the log-likelihood function of the mixture model. To optimize this regularization term efficiently, we adopt the idea of the Expectation Maximum (EM) algorithm. In which, the expectation step can give an adaptive weighting function which can be regarded as a nonlocal connections among pixels. Using this fact, we built a framework for non-local image inpainting under noise. Moreover, we mathematically prove the existence of minimizer for the proposed inpainting model. By using a spitting algorithm, the proposed model are able to realize image inpainting and denoising simultaneously. Numerical results show that the proposed method can produce impressive reconstructed results when the inpainting region is rather large.

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