去除高斯噪声的L2正则化模型

IF 0.3 Q4 MATHEMATICS, APPLIED
Gou Yuying, Zhang Guicang, Han Genlian
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引用次数: 0

摘要

为了去除图像中的高斯噪声,提出了一种基于L2范数正则化模型的高斯噪声图像恢复方法。采用L2范数作为数据保真度项,梯度算子和小波帧作为正则化项,抑制图像阶梯效应,保护图像边缘细节。由于模型的目标函数是一个较大的凸函数,求解过程非常繁琐。结合分裂Bregman迭代算法和交替方向乘法相结合的方法进行图像恢复。实验结果表明,交替方向乘子方法可以有效降低恢复模型的求解难度,使用该模型恢复的图像具有更高的峰值信噪比和更好的结构相似性,可以获得更清晰的图像。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
L2 Regularization Model with Removal of Gaussian Noise
In order to remove Gaussian noise from images, a Gaussian noise image restoration method based on the L2 norm regularization model was proposed. The L2 norm is selected as the data fidelity term and the gradient operator and wavelet frame as the regularization term to suppress the image ladder effect and protect the image edge details. Since the objective function of the model is a large convex function, the solving process is very tedious. The split Bregman iterative algorithm and alternate direction multiplier method are combined to restore the image. The experimental results show that show that the alternate direction multiplier method can effectively reduce the difficulty of solving the restoration model, and the image recovered by using this model has a higher peak signal-to-n ratio and better structural similarity and can get a clearer image.
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