The new trend of full-screen devices implies positioning the camera behind the screen to bring a larger display-to-body ratio, enhance eye contact, and provide a notch-free viewing experience on smartphones, TV or tablets. On the other hand, the images captured by under-display cameras (UDCs) are degraded by the screen in front of them. Deep learning methods for image restoration can significantly reduce the degradation of captured images, providing satisfying results for the human eyes. However, most proposed solutions are unreliable or efficient enough to be used in real-time on mobile devices. In this paper, we aim to solve this image restoration problem using efficient deep learning methods capable of processing FHD images in real-time on commercial smartphones while providing high-quality results. We propose a lightweight model for blind UDC Image Restoration and HDR, and we also provide a benchmark comparing the performance and runtime of different methods on smartphones. Our models are competitive on UDC benchmarks while using x4 less operations than others. To the best of our knowledge, we are the first work to approach and analyze this real-world single image restoration problem from the efficiency and production point of view.
翻译:全屏装置的新趋势意味着在屏幕后面放置相机,以带来更大的显示对身体比例,加强眼接触,并在智能手机、电视或平板电脑上提供无记名的观看经验。另一方面,屏幕前面的显示器(UDCs)摄取的图像被屏幕所退化。图像恢复的深层次学习方法可以大大减少所摄图像的退化,为人类的眼睛提供令人满意的结果。然而,大多数建议的解决办法不可靠或效率足以实时在移动设备上使用。在本文中,我们的目标是利用高效的深层次学习方法解决这一图像恢复问题,能够实时处理商业智能手机上的FHD图像,同时提供高质量的结果。我们提出了盲人UDC图像恢复和人类发展报告的轻量模型,我们还提供了一个基准,比较智能手机上不同方法的性能和运行时间。我们的模型在UDC基准上具有竞争力,而使用x4的操作却比其他人少。据我们所知,我们首先从效率和生产角度着手分析这个真实世界单一图像恢复问题。