Zhang Benxin, Zhu Guopu, Zhu Zhibin, Zhang Hongli, Zhou Yicong, Kwong Sam
IEEE Trans Cybern. 2024 Apr;54(4):2257-2270. doi: 10.1109/TCYB.2022.3225525. Epub 2024 Mar 18.
In this article, the problem of impulse noise image restoration is investigated. A typical way to eliminate impulse noise is to use an L norm data fitting term and a total variation (TV) regularization. However, a convex optimization method designed in this way always yields staircase artifacts. In addition, the L norm fitting term tends to penalize corrupted and noise-free data equally, and is not robust to impulse noise. In order to seek a solution of high recovery quality, we propose a new variational model that integrates the nonconvex data fitting term and the nonconvex TV regularization. The usage of the nonconvex TV regularizer helps to eliminate the staircase artifacts. Moreover, the nonconvex fidelity term can detect impulse noise effectively in the way that it is enforced when the observed data is slightly corrupted, while is less enforced for the severely corrupted pixels. A novel difference of convex functions algorithm is also developed to solve the variational model. Using the variational method, we prove that the sequence generated by the proposed algorithm converges to a stationary point of the nonconvex objective function. Experimental results show that our proposed algorithm is efficient and compares favorably with state-of-the-art methods.
本文研究了脉冲噪声图像恢复问题。消除脉冲噪声的一种典型方法是使用L范数数据拟合项和全变差(TV)正则化。然而,以这种方式设计的凸优化方法总是会产生阶梯状伪影。此外,L范数拟合项倾向于对受损数据和无噪声数据同等惩罚,并且对脉冲噪声不具有鲁棒性。为了寻求高恢复质量的解决方案,我们提出了一种新的变分模型,该模型集成了非凸数据拟合项和非凸TV正则化。非凸TV正则化器的使用有助于消除阶梯状伪影。此外,非凸保真项能够有效地检测脉冲噪声,其方式是当观测数据稍有受损时它会被加强,而对于严重受损的像素则较少加强。还开发了一种新颖的凸函数差算法来求解该变分模型。使用变分方法,我们证明了所提出算法生成的序列收敛到非凸目标函数的一个驻点。实验结果表明,我们提出的算法是有效的,并且与现有最先进方法相比具有优势。