IEEE Trans Image Process. 2014 Aug;23(8):3506-21. doi: 10.1109/TIP.2014.2329448. Epub 2014 Jun 6.
Image denoising is a central problem in image processing and it is often a necessary step prior to higher level analysis such as segmentation, reconstruction, or super-resolution. The nonlocal means (NL-means) perform denoising by exploiting the natural redundancy of patterns inside an image; they perform a weighted average of pixels whose neighborhoods (patches) are close to each other. This reduces significantly the noise while preserving most of the image content. While it performs well on flat areas and textures, it suffers from two opposite drawbacks: it might over-smooth low-contrasted areas or leave a residual noise around edges and singular structures. Denoising can also be performed by total variation minimization-the Rudin, Osher and Fatemi model-which leads to restore regular images, but it is prone to over-smooth textures, staircasing effects, and contrast losses. We introduce in this paper a variational approach that corrects the over-smoothing and reduces the residual noise of the NL-means by adaptively regularizing nonlocal methods with the total variation. The proposed regularized NL-means algorithm combines these methods and reduces both of their respective defaults by minimizing an adaptive total variation with a nonlocal data fidelity term. Besides, this model adapts to different noise statistics and a fast solution can be obtained in the general case of the exponential family. We develop this model for image denoising and we adapt it to video denoising with 3D patches.
图像去噪是图像处理中的一个核心问题,通常是分割、重建或超分辨率等更高层次分析之前的必要步骤。非局部均值 (NL-means) 通过利用图像内部模式的自然冗余性来进行去噪;它们对邻居(补丁)彼此接近的像素进行加权平均。这大大降低了噪声,同时保留了大部分图像内容。虽然它在平坦区域和纹理上表现良好,但它存在两个相反的缺点:它可能会过度平滑低对比度区域,或者在边缘和奇异结构周围留下残余噪声。去噪也可以通过总变差最小化(鲁丁、奥舍和法蒂米模型)来实现,这可以恢复规则图像,但它容易过度平滑纹理、出现阶梯效应和对比度损失。在本文中,我们介绍了一种变分方法,通过自适应正则化非局部方法的总变差来纠正 NL-means 的过度平滑并减少其残余噪声。所提出的正则化 NL-means 算法结合了这些方法,并通过最小化具有非局部数据保真项的自适应总变差来减少它们各自的缺陷。此外,该模型适应不同的噪声统计,并且在指数族的一般情况下可以快速求解。我们将该模型用于图像去噪,并将其适应于具有 3D 补丁的视频去噪。