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Dual-reference Training Data Acquisition and CNN Construction for Image Super-Resolution

2021-08-05 03:31:50
Yanhui Guo, Xiao Shu, Xiaolin Wu

Abstract

For deep learning methods of image super-resolution, the most critical issue is whether the paired low and high resolution images for training accurately reflect the sampling process of real cameras. Low and high resolution (LR$\sim$HR) image pairs synthesized by existing degradation models (\eg, bicubic downsampling) deviate from those in reality; thus the super-resolution CNN trained by these synthesized LR$\sim$HR image pairs does not perform well when being applied to real images. In this paper, we propose a novel method to capture a large set of realistic LR$\sim$HR image pairs using real cameras.The data acquisition is carried out under controllable lab conditions with minimum human intervention and at high throughput (about 500 image pairs per hour). The high level of automation makes it easy to produce a set of real LR$\sim$HR training image pairs for each camera. Our innovation is to shoot images displayed on an ultra-high quality screen at different resolutions.There are three distinctive advantages with our method that allow us to collect high-quality training datasets for image super-resolution. First, as the LR and HR images are taken of a 3D planar surface (the screen) the registration problem fits exactly to a homography model. Second, we can display special markers on the image margin to further improve the registration precision.Third, the displayed digital image file can be exploited as a reference to optimize the high frequency content of the restored image. Experimental results show that training a super-resolution CNN by our LR$\sim$HR dataset has superior restoration performance than training it by existing datasets on real world images at the inference stage.

Abstract (translated)

URL

https://arxiv.org/abs/2108.02348

PDF

https://arxiv.org/pdf/2108.02348.pdf


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