Image noise modeling is a long-standing problem with many applications in computer vision. Early attempts that propose simple models, such as signal-independent additive white Gaussian noise or the heteroscedastic Gaussian noise model (a.k.a., camera noise level function) are not sufficient to learn the complex behavior of the camera sensor noise. Recently, more complex learning-based models have been proposed that yield better results in noise synthesis and downstream tasks, such as denoising. However, their dependence on supervised data (i.e., paired clean images) is a limiting factor given the challenges in producing ground-truth images. This paper proposes a framework for training a noise model and a denoiser simultaneously while relying only on pairs of noisy images rather than noisy/clean paired image data. We apply this framework to the training of the Noise Flow architecture. The noise synthesis and density estimation results show that our framework outperforms previous signal-processing-based noise models and is on par with its supervised counterpart. The trained denoiser is also shown to significantly improve upon both supervised and weakly supervised baseline denoising approaches. The results indicate that the joint training of a denoiser and a noise model yields significant improvements in the denoiser.
翻译:早期尝试提出简单的模型,例如信号独立的添加添加剂白色高斯噪声或超松动高斯噪声模型(a.k.a.a.,相机噪声水平功能),不足以了解相机传感器噪声的复杂行为。最近,提出了更复杂的学习模型,在噪音合成和下游任务方面产生更好的结果,例如分层。然而,由于在制作地面图象方面存在挑战,它们依赖受监督的数据(即对齐的清洁图像)是一个限制因素。本文提出了一个框架,用于培训噪音模型和拆除模型,同时只依赖噪音图像的对齐,而不是对齐/对齐图像数据。我们将这一框架应用于对噪音流结构的培训。噪音合成和密度估计结果表明,我们的框架超越了以前的基于信号处理的噪声模型,而且与其受监督的对应方相当。经过培训的脱硫模型也显示,在监督和薄弱的基线测量方法方面,将大大改进。