Noise modeling and reduction are fundamental tasks in low-level computer vision. They are particularly important for smartphone cameras relying on small sensors that exhibit visually noticeable noise. There has recently been renewed interest in using data-driven approaches to improve camera noise models via neural networks. These data-driven approaches target noise present in the raw-sensor image before it has been processed by the camera's image signal processor (ISP). Modeling noise in the RAW-rgb domain is useful for improving and testing the in-camera denoising algorithm; however, there are situations where the camera's ISP does not apply denoising or additional denoising is desired when the RAW-rgb domain image is no longer available. In such cases, the sensor noise propagates through the ISP to the final rendered image encoded in standard RGB (sRGB). The nonlinear steps on the ISP culminate in a significantly more complex noise distribution in the sRGB domain and existing raw-domain noise models are unable to capture the sRGB noise distribution. We propose a new sRGB-domain noise model based on normalizing flows that is capable of learning the complex noise distribution found in sRGB images under various ISO levels. Our normalizing flows-based approach outperforms other models by a large margin in noise modeling and synthesis tasks. We also show that image denoisers trained on noisy images synthesized with our noise model outperforms those trained with noise from baselines models.
翻译:噪音建模和减少是低级计算机愿景的基本任务。 噪音建模和减少是低级计算机愿景中的基本任务。 这些建模和减少对于依赖显示可见噪音的小型传感器的智能手机相机特别重要。 最近人们再次有兴趣使用数据驱动方法,通过神经网络改进相机噪音模型。 这些数据驱动方法针对原始传感器图像中出现的噪音,然后由相机图像信号处理器(ISP)处理。 RAW-rgb域的建模噪音最终导致在SRGB域进行更复杂的噪音分布,而现有的原声建模则有助于改进和测试摄像机去动算法; 但是, 在某些情况下, 当RAW-rgb域图像不再可用时, 智能摄影机的ISSP 不应用去音化或额外的去音化。 在这类情况下, 传感器建模的噪音建模通过ISP 向最后的成型图像传播, 通过常规的SRB-domain 模型, 我们用常规的SRB- 平流, 显示以常规的SRB 流中, 以常规的S-rbroal 流中, 以学习其他的S-rbal 流为常规流。