用于原始重建的空间感知元数据

Abhijith Punnappurath, M. S. Brown
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引用次数: 8

摘要

相机传感器捕获原始RGB图像,然后通过相机图像信号处理器(ISP)执行的一系列板载操作将其处理为标准RGB (sRGB)图像。在这些处理步骤中,局部色调映射是用于增强最终渲染的sRGB图像的整体外观的最重要的操作之一。对于某些应用程序,通常需要将sRGB图像去渲染或反处理回其原始rgb值。这种“原始重建”是一项具有挑战性的任务,因为ISP执行的许多操作,包括局部色调映射,都是非线性的,难以反转。在捕获时存储专门元数据以启用原始恢复的现有原始重建方法忽略了本地色调映射,并假设在原始rgb和sRGB颜色空间之间存在全局转换。在这项工作中,我们提倡一种基于空间感知元数据的原始重建方法,该方法对局部色调映射具有鲁棒性,并且与现有的原始重建方法相比,可以产生更高的原始重建精度(平均PSNR提高6 dB)。我们的方法只需要全尺寸图像的0.2%样本作为元数据,在捕获时的计算开销可以忽略不计,并且可以很容易地集成到现代isp中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spatially Aware Metadata for Raw Reconstruction
A camera sensor captures a raw-RGB image that is then processed to a standard RGB (sRGB) image through a series of onboard operations performed by the camera’s image signal processor (ISP). Among these processing steps, local tone mapping is one of the most important operations used to enhance the overall appearance of the final rendered sRGB image. For certain applications, it is often desirable to de-render or unprocess the sRGB image back to its original raw-RGB values. This "raw reconstruction" is a challenging task because many of the operations performed by the ISP, including local tone mapping, are nonlinear and difficult to invert. Existing raw reconstruction methods that store specialized metadata at capture time to enable raw recovery ignore local tone mapping and assume that a global transformation exists between the raw-RGB and sRGB color spaces. In this work, we advocate a spatially aware metadata-based raw reconstruction method that is robust to local tone mapping, and yields significantly higher raw reconstruction accuracy (6 dB average PSNR improvement) compared to existing raw reconstruction methods. Our method requires only 0.2% samples of the full-sized image as metadata, has negligible computational overhead at capture time, and can be easily integrated into modern ISPs.
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