How to effectively remove the noise while preserving the image structure features is a challenging issue in the field of image denoising. In recent years, fractional PDE based methods have attracted more and more research efforts due to the ability to balance the noise removal and the preservation of image edges and textures. Among the existing fractional PDE algorithms, there are only a few using spatial fractional order derivatives, and all the fractional derivatives involved are one-sided derivatives. In this paper, an efficient feature-preserving fractional PDE algorithm is proposed for image denoising based on a nonlinear spatial-fractional anisotropic diffusion equation. Two-sided Grumwald-Letnikov fractional derivatives were used in the PDE model which are suitable to depict the local self-similarity of images. The Short Memory Principle is employed to simplify the approximation scheme. Experimental results show that the proposed method is of a satisfactory performance, i.e. it keeps a remarkable balance between noise removal and feature preserving, and has an extremely high structural retention property.
翻译:在维护图像结构特性的同时如何有效地消除噪音,是图像分解领域一个具有挑战性的问题。近年来,由于能够平衡清除噪音与保存图像边缘和纹理,基于分数的PDE方法吸引了越来越多的研究努力。在现有分数的PDE算法中,只有少数人使用空间分序衍生物,而所有所涉的分数衍生物都是单面衍生物。在本文中,根据非线性空间偏移的厌食性扩散方程式,为图像分层PDE算法提出了高效的特性保存分数的PDE算法,供图像分解使用。在PDE模型中使用了两面的Grumwald-Lettnikov分数衍生物,该模型适合于描述图像的本地自异性。短记忆原则用于简化近似方案。实验结果显示,拟议方法的性能令人满意,即在清除噪音和保存特征之间保持显著的平衡,并具有极高的结构保留属性。