基于非局部扩散张量的自适应图像去噪模型

Sun Xiao-li, Xu Chen, L. Min
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引用次数: 0

摘要

用Weickert的各向异性扩散方程方法去噪时,纹理和细节会受到影响。在Weickert方程中加入了保真度项。保真度项系数会随着图像的变化而自适应变化,使得扩散项和保真度项达到了较好的折中。否则,在确定边缘方向时,由于线性高斯函数的强平滑性,会丢失隐藏在主方向中的其他几个边缘方向。为了保留这些详细的边缘方向,用高斯核代替非线性小波阈值。此外,为了尽可能地保留纹理和细节,引入非局部扩散张量,并结合边缘增强扩散和相干增强扩散两种方法对两个特征值进行重置。实验表明,该模型在纹理和细节的保留上有明显的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Adaptive Image Denoising Model Based on Nonlocal Diffusion Tensor
When denoising with the method of Weickert's anisotropic diffusion equation, the textures and details will be compromised. A fidelity term is added into Weickert's equation. The coefficient of fidelity term will vary adaptively with the instant image, which makes that the diffusion term and the fidelity term come to a better compromise. Otherwise, when deciding the edge directions, because of the strong smoothness of linear Gaussian function, a few other edge directions hiding in the main direction will be lost. To preserve these detailed edge directions, Gaussian kernel is substituted for nonlinear wavelet threshold. In addition, in order to preserving the textures and details as much as possible, a nonlocal diffusion tensor was introduced and the two eigenvalues are reset by combining the two methods: edge enhancing diffusion and coherence enhancing diffusion. Experiments show that the new model has obvious effect in preserving textures and details.
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