Xin Yu, Peng Dai, Wenbo Li, Lan Ma, Jiajun Shen, Jia Li, Xiaojuan Qi
With the rapid development of mobile devices, modern widely-used mobile phones typically allow users to capture 4K resolution (i.e., ultra-high-definition) images. However, for image demoireing, a challenging task in low-level vision, existing works are generally carried out on low-resolution or synthetic images. Hence, the effectiveness of these methods on 4K resolution images is still unknown. In this paper, we explore moire pattern removal for ultra-high-definition images. To this end, we propose the first ultra-high-definition demoireing dataset (UHDM), which contains 5,000 real-world 4K resolution image pairs, and conduct a benchmark study on current state-of-the-art methods. Further, we present an efficient baseline model ESDNet for tackling 4K moire images, wherein we build a semantic-aligned scale-aware module to address the scale variation of moire patterns. Extensive experiments manifest the effectiveness of our approach, which outperforms state-of-the-art methods by a large margin while being much more lightweight. Code and dataset are available at https://xinyu-andy.github.io/uhdm-page.
| Task | Dataset | Metric | Value | Model |
|---|---|---|---|---|
| Image Enhancement | TIP 2018 | PSNR | 30.11 | ESDNet-L |
| Image Enhancement | TIP 2018 | SSIM | 0.92 | ESDNet-L |
| Image Enhancement | TIP 2018 | PSNR | 29.81 | ESDNet |
| Image Enhancement | TIP 2018 | SSIM | 0.916 | ESDNet |
| Image Restoration | UHDM | PSNR | 22.422 | ESDNet-L |
| Image Restoration | UHDM | PSNR | 22.119 | ESDNet |
| 10-shot image generation | UHDM | PSNR | 22.422 | ESDNet-L |
| 10-shot image generation | UHDM | PSNR | 22.119 | ESDNet |