Uni-ISP:从多个移动摄像头中统一isp学习。

IF 13.7
Lingen Li;Mingde Yao;Xingyu Meng;Muquan Yu;Tianfan Xue;Jinwei Gu
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引用次数: 0

摘要

现代端到端图像信号处理器(isp)可以学习从RAW/XYZ数据到sRGB的复杂映射(反之亦然),为图像处理开辟了新的可能性。然而,摄像机型号的日益多样化,特别是在移动设备中,使得单个isp的发展不可持续,因为它们在各种摄像机系统中的通用性和适应性有限。在本文中,我们介绍了Uni-ISP,一种新颖的流水线,它统一了各种移动相机的ISP学习,提供了一个高度精确和适应性强的处理器。Uni-ISP的核心是通过学习正向/反向isp及其特殊的训练方案来利用设备感知嵌入。通过这样做,Uni-ISP不仅提高了正向和反向isp的性能,而且还解锁了以前传统学习isp无法访问的新应用。为了支持这项工作,我们构建了一个真实的4K数据集FiveCam,其中包括由五个智能手机摄像头同步拍摄的2400多对sRGB-RAW图像。大量的实验验证了Uni-ISP在学习正向和反向isp方面的准确性(改进了+2.4dB/1.5dB PSNR),支持新应用的多用途性以及对新相机型号的适应性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Uni-ISP: Toward Unifying the Learning of ISPs From Multiple Mobile Cameras
Modern end-to-end image signal processors (ISPs) can learn complex mappings from RAW/XYZ data to sRGB (and vice versa), opening new possibilities in image processing. However, the growing diversity of camera models, particularly in mobile devices, renders the development of individual ISPs unsustainable due to their limited versatility and adaptability across varied camera systems. In this paper, we introduce Uni-ISP, a novel pipeline that unifies ISP learning for diverse mobile cameras, delivering a highly accurate and adaptable processor. The core of Uni-ISP is leveraging device-aware embeddings through learning forward/inverse ISPs and its special training scheme. By doing so, Uni-ISP not only improves the performance of forward and inverse ISPs but also unlocks new applications previously inaccessible to conventional learned ISPs. To support this work, we construct a real-world 4K dataset, FiveCam, comprising more than 2,400 pairs of sRGB-RAW images captured synchronously by five smartphone cameras. Extensive experiments validate Uni-ISP’s accuracy in learning forward and inverse ISPs (with improvements of +2.4dB/1.5dB PSNR), versatility in enabling new applications, and adaptability to new camera models.
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