Physical photographs now can be conveniently scanned by smartphones and stored forever as a digital version, but the scanned photos are not restored well. One solution is to train a supervised deep neural network on many digital photos and the corresponding scanned photos. However, human annotation costs a huge resource leading to limited training data. Previous works create training pairs by simulating degradation using image processing techniques. Their synthetic images are formed with perfectly scanned photos in latent space. Even so, the real-world degradation in smartphone photo scanning remains unsolved since it is more complicated due to real lens defocus, lighting conditions, losing details via printing, various photo materials, and more. To solve these problems, we propose a Deep Photo Scan (DPScan) based on semi-supervised learning. First, we present the way to produce real-world degradation and provide the DIV2K-SCAN dataset for smartphone-scanned photo restoration. Second, by using DIV2K-SCAN, we adopt the concept of Generative Adversarial Networks to learn how to degrade a high-quality image as if it were scanned by a real smartphone, then generate pseudo-scanned photos for unscanned photos. Finally, we propose to train on the scanned and pseudo-scanned photos representing a semi-supervised approach with a cycle process as: high-quality images --> real-/pseudo-scanned photos --> reconstructed images. The proposed semi-supervised scheme can balance between supervised and unsupervised errors while optimizing to limit imperfect pseudo inputs but still enhance restoration. As a result, the proposed DPScan quantitatively and qualitatively outperforms its baseline architecture, state-of-the-art academic research, and industrial products in smartphone photo scanning.
翻译:物理照片现在可以方便地被智能手机扫描,并永久存储成数字版,但扫描照片并没有很好地恢复。一个解决办法是在许多数字照片和相应的扫描照片上训练一个受监督的深神经网络。然而,人类注解需要巨大的资源才能导致有限的培训数据。 以前的作品通过图像处理技术模拟降解来创建培训配对。 他们的合成图像是用完全扫描的图片在隐蔽空间中生成的。 即便如此, 智能手机照片扫描中真实世界的退化仍未解析, 因为它由于真实的镜头脱色、 照明条件、 通过印刷、 各种照片材料等丢失细节而变得更加复杂。 为了解决这些问题, 我们提议在半监视学习的基础上进行深层照片扫描(DPScan) 。 首先, 我们提出如何生成真实世界退化, 并提供DIV2K- ScAN数据集, 用于智能手机扫描图像恢复。 其次, 使用 DIV2K- ScAN, 我们采用Generalive 高级网络网络概念, 如何降低一个非质量的图像, 因为如果通过真实的智能图像扫描, 那么, 那么, 我们就可以用一个高级的图像扫描系统来进行。 然后, 模拟的扫描, 然后制作- sake- speal- speal- speal- speal- speal