With the advent of deep learning methods replacing the ISP in transforming sensor RAW readings into RGB images, numerous methodologies solidified into real-life applications. Equally potent is the task of inverting this process which will have applications in enhancing computational photography tasks that are conducted in the RAW domain, addressing lack of available RAW data while reaping from the benefits of performing tasks directly on sensor readings. This paper's proposed methodology is a state-of-the-art solution to the task of RAW reconstruction, and the multi-step refinement process integrating an overexposure mask is novel in three ways: instead of from RGB to bayer, the pipeline trains from RGB to demosaiced RAW allowing use of perceptual loss functions; the multi-step processes has greatly enhanced the performance of the baseline U-Net from start to end; the pipeline is a generalizable process of refinement that can enhance other high performance methodologies that support end-to-end learning.
翻译:随着在将传感器的RAW读数转换成 RGB 图像方面出现了取代ISP的深层次学习方法,许多方法被固化为实际应用。同样重要的是,要扭转这一应用过程,以加强在RAW 领域开展的计算摄影任务,解决现有RAW数据的缺乏问题,同时从直接执行传感器读数任务的好处中获益。本文建议的方法是RAW重建任务的最先进的解决办法,将过度接触遮罩整合在一起的多步骤改进过程在三种方面是新颖的:从RGB到刺刀,从RGB到解开的RAW的管道列程,允许使用感官损失功能;多步骤进程大大地提高了基线U-Net从开始到结束的性能;管道是一个可推广的改进过程,可以加强支持端到端学习的其他高性能方法。