Under Display Camera Quad Bayer Raw Image Restoration using Deep Learning

I. Kim, Yunseok Choi, Hayoung Ko, Dongpan Lim, Youngil Seo, Jeongguk Lee, Geunyoung Lee, Eun-sil Heo, S. Song, Sukhwan Lim
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引用次数: 4

Abstract

Can a mobile camera see better through display? Under Display Camera (UDC) is the most awaited feature in mobile market in 2020 enabling more preferable user experience, however, there are technological obstacles to obtain acceptable UDC image quality. Mobile OLED panels are struggling to reach beyond 20% of light transmittance, leading to challenging capture conditions. To improve light sensitivity, some solutions use binned output losing spatial resolution. Optical diffraction of light in a panel induces contrast degradation and various visual artifacts including image ghosts, yellowish tint etc. Standard approach to address image quality issues is to improve blocks in the imaging pipeline including Image Signal Processor (ISP) and deblur block. In this work, we propose a novel approach to improve UDC image quality - we replace all blocks in UDC pipeline with all-in-one network – UDC d^Net. Proposed solution can deblur and reconstruct full resolution image directly from non-Bayer raw image, e.g. Quad Bayer, without requiring remosaic algorithm that rearranges non-Bayer to Bayer. Proposed network has a very large receptive field and can easily deal with large-scale visual artifacts including color moiré and ghosts. Experiments show significant improvement in image quality vs conventional pipeline – over 4dB in PSNR on popular benchmark - Kodak dataset.
基于深度学习的Bayer Raw图像恢复
手机摄像头通过显示屏能看得更清楚吗?下显示摄像头(UDC)是2020年移动市场最期待的功能,可以提供更好的用户体验,然而,获得可接受的UDC图像质量存在技术障碍。移动OLED面板正在努力达到超过20%的透光率,导致具有挑战性的捕获条件。为了提高光敏度,一些解决方案使用失去空间分辨率的分箱输出。光在面板中的光学衍射会引起对比度下降和各种视觉伪影,包括图像鬼影、淡黄色等。解决图像质量问题的标准方法是改进成像管道中的块,包括图像信号处理器(ISP)和去模糊块。在这项工作中,我们提出了一种改进UDC图像质量的新方法-我们用一体化网络UDC d^Net取代UDC管道中的所有块。该方案可以直接从非拜耳原始图像(如Quad Bayer)去模糊重建全分辨率图像,而不需要将非拜耳图像重新排列为拜耳图像的remosaic算法。所提出的网络具有非常大的接受域,可以很容易地处理大规模的视觉伪影,包括彩色条纹和鬼影。实验表明,与传统的流水线相比,图像质量有了显著改善——在流行的基准柯达数据集上,PSNR超过4dB。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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