论文标题
基于斑块相似性的图像降级算法的批判性分析
A Critical Analysis of Patch Similarity Based Image Denoising Algorithms
论文作者
论文摘要
图像DeNoising是一个经典的信号处理问题,在过去的二十年中,在图像处理社区中引起了极大的兴趣。大多数用于图像denoising的算法都集中在非本地相似性的范式上,其中收集了相似的邻里图像块,以建立重建基础。通过严格的实验,本文回顾了基于非本地相似性的算法开发图像的多个方面。首先,非本地相似性作为自然图像中存在的基础质量的概念尚未得到足够的关注。其次,开发的图像deno算法是多个构件的组合,使它们的比较是一项繁琐的任务。最后,围绕图像denoising的大多数工作都基于峰值图像和参考图像之间的峰值信号与噪声比(PSNR)(PSNR)(PSNR)呈现了性能结果(这与添加剂白色高斯噪声扰动)。本文从对非本地相似性及其在各种噪声水平下的有效性进行统计分析开始,然后对不同最先进的图像Denoising算法进行理论比较。最后,我们主张进行方法论大修,以在图像Denoising算法的性能评估过程中纳入无引用图像质量度量和未加工的图像(RAW)。
Image denoising is a classical signal processing problem that has received significant interest within the image processing community during the past two decades. Most of the algorithms for image denoising has focused on the paradigm of non-local similarity, where image blocks in the neighborhood that are similar, are collected to build a basis for reconstruction. Through rigorous experimentation, this paper reviews multiple aspects of image denoising algorithm development based on non-local similarity. Firstly, the concept of non-local similarity as a foundational quality that exists in natural images has not received adequate attention. Secondly, the image denoising algorithms that are developed are a combination of multiple building blocks, making comparison among them a tedious task. Finally, most of the work surrounding image denoising presents performance results based on Peak-Signal-to-Noise Ratio (PSNR) between a denoised image and a reference image (which is perturbed with Additive White Gaussian Noise). This paper starts with a statistical analysis on non-local similarity and its effectiveness under various noise levels, followed by a theoretical comparison of different state-of-the-art image denoising algorithms. Finally, we argue for a methodological overhaul to incorporate no-reference image quality measures and unprocessed images (raw) during performance evaluation of image denoising algorithms.