Learning Non-Negativity Constrained Variation for Image Denoising and Deblurring
DOI:
https://doi.org/10.4208/nmtma.2017.m1653Keywords:
Learning idea, TV-based model, constraint, ε-constraint method, image restoration.Abstract
This paper presents a heuristic Learning-based Non-Negativity Constrained Variation (L-NNCV) aiming to search the coefficients of variational model automatically and make the variation adapt different images and problems by supervised-learning strategy. The model includes two terms: a problem-based term that is derived from the prior knowledge, and an image-driven regularization which is learned by some training samples. The model can be solved by classical ε-constraint method. Experimental results show that: the experimental effectiveness of each term in the regularization accords with the corresponding theoretical proof; the proposed method outperforms other PDE-based methods on image denoising and deblurring.