论文标题

pik-fix:还原和着色旧照片

Pik-Fix: Restoring and Colorizing Old Photos

论文作者

Xu, Runsheng, Tu, Zhengzhong, Du, Yuanqi, Dong, Xiaoyu, Li, Jinlong, Meng, Zibo, Ma, Jiaqi, Bovik, Alan, Yu, Hongkai

论文摘要

在旧照片中恢复和介绍存在但经常受损的视觉记忆仍然是一个有趣但未解决的研究主题。数十年来的照片通常会遭受严重和混乱的降解,例如裂缝,散焦和颜色增量,它们在相互作用时很难单独和难以修复。深度学习提出了一个合理的途径,但是缺乏大规模的旧照片数据集使得解决这一恢复任务非常具有挑战性。在这里,我们提出了一个基于参考的新型端到端学习框架,该框架能够修复和使旧的,退化的图片化妆。我们提出的框架由三个模块组成:一个恢复子网络,该子网络从降解中进行恢复,一个执行颜色直方图匹配和色彩传递的相似性网络以及一个学会预测基于色素参考信号的图像的色度元素的着色子网。整个系统从参考图像中使用了颜色直方图先验,这大大减少了对大规模训练数据的需求。我们还创建了一个真实的旧照片的首个公共数据集,这些数据集与Photoshop专家手动恢复的地面真相“原始”照片配对。我们在此数据集和合成数据集上进行了广泛的实验,发现我们的方法使用定性比较和定量测量值显着优于先前的最先进模型。该代码可在https://github.com/derrickxunu/pik-fix上找到。

Restoring and inpainting the visual memories that are present, but often impaired, in old photos remains an intriguing but unsolved research topic. Decades-old photos often suffer from severe and commingled degradation such as cracks, defocus, and color-fading, which are difficult to treat individually and harder to repair when they interact. Deep learning presents a plausible avenue, but the lack of large-scale datasets of old photos makes addressing this restoration task very challenging. Here we present a novel reference-based end-to-end learning framework that is able to both repair and colorize old, degraded pictures. Our proposed framework consists of three modules: a restoration sub-network that conducts restoration from degradations, a similarity network that performs color histogram matching and color transfer, and a colorization subnet that learns to predict the chroma elements of images conditioned on chromatic reference signals. The overall system makes uses of color histogram priors from reference images, which greatly reduces the need for large-scale training data. We have also created a first-of-a-kind public dataset of real old photos that are paired with ground truth ''pristine'' photos that have been manually restored by PhotoShop experts. We conducted extensive experiments on this dataset and synthetic datasets, and found that our method significantly outperforms previous state-of-the-art models using both qualitative comparisons and quantitative measurements. The code is available at https://github.com/DerrickXuNu/Pik-Fix.

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