Sun Yujing, Yu Yizhou, Wang Wenping
IEEE Trans Image Process. 2018 May 9. doi: 10.1109/TIP.2018.2834737.
Digital cameras and mobile phones enable us to conveniently record precious moments. While digital image quality is constantly being improved, taking high-quality photos of digital screens still remains challenging because the photos are often contaminated with moiré patterns, a result of the interference between the pixel grids of the camera sensor and the device screen. Moiré patterns can severely damage the visual quality of photos. However, few studies have aimed to solve this problem. In this paper, we introduce a novel multiresolution fully convolutional network for automatically removing moiré patterns from photos. Since a moiré pattern spans over a wide range of frequencies, our proposed network performs a nonlinear multiresolution analysis of the input image before computing how to cancel moiré artefacts within every frequency band. We also create a large-scale benchmark dataset with 100,000+ image pairs for investigating and evaluating moiré pattern removal algorithms. Our network achieves state-of-the-art performance on this dataset in comparison to existing learning architectures for image restoration problems.
数码相机和手机使我们能够方便地记录珍贵时刻。虽然数字图像质量在不断提高,但拍摄数字屏幕的高质量照片仍然具有挑战性,因为照片经常会被莫尔条纹污染,这是相机传感器的像素网格与设备屏幕之间干扰的结果。莫尔条纹会严重损害照片的视觉质量。然而,很少有研究旨在解决这个问题。在本文中,我们介绍了一种新颖的多分辨率全卷积网络,用于自动去除照片中的莫尔条纹。由于莫尔条纹跨越很宽的频率范围,我们提出的网络在计算如何消除每个频带内的莫尔伪影之前,先对输入图像进行非线性多分辨率分析。我们还创建了一个包含100,000多对图像的大规模基准数据集,用于研究和评估莫尔条纹去除算法。与现有的用于图像恢复问题的学习架构相比,我们的网络在这个数据集上取得了领先的性能。