One of the fundamental challenges in image restoration is denoising, where the objective is to estimate the clean image from its noisy measurements. To tackle such an ill-posed inverse problem, the existing denoising approaches generally focus on exploiting effective natural image priors. The utilization and analysis of the noise model are often ignored, although the noise model can provide complementary information to the denoising algorithms. In this paper, we propose a novel Flow-based joint Image and NOise model (FINO) that distinctly decouples the image and noise in the latent space and losslessly reconstructs them via a series of invertible transformations. We further present a variable swapping strategy to align structural information in images and a noise correlation matrix to constrain the noise based on spatially minimized correlation information. Experimental results demonstrate FINO's capacity to remove both synthetic additive white Gaussian noise (AWGN) and real noise. Furthermore, the generalization of FINO to the removal of spatially variant noise and noise with inaccurate estimation surpasses that of the popular and state-of-the-art methods by large margins.
翻译:在图像恢复方面,一个根本的挑战就是取消形象,目标是从噪音测量中估计干净图像。为了解决这种不正确反向的问题,现有的去除方法一般侧重于利用有效的自然图像前科。噪音模型的利用和分析往往被忽视,尽管噪音模型可以为去除噪音算法提供补充信息。在本文中,我们提议了一个新的流动联合图像和氮化模型(FINO),它明显地将隐蔽空间中的图像和噪音分解开来,并通过一系列不可逆的变换无损地重建它们。我们还提出一项变式转换战略,将图像中的结构性信息与噪音相关关系矩阵相匹配,以限制基于空间最小化相关信息的噪音。实验结果表明,FINO有能力去除合成添加白高音(AWGN)和真实噪音。此外,FINO一般地消除空间变异的噪音和噪音,其不准确估计值超过大边缘的流行和状态方法。