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DualSR: Zero-Shot Dual Learning for Real-World Super-Resolution | IEEE Conference Publication | IEEE Xplore

DualSR: Zero-Shot Dual Learning for Real-World Super-Resolution


Abstract:

Advanced methods for single image super-resolution (SISR) based upon Deep learning have demonstrated a remarkable reconstruction performance on downscaled images. However...Show More

Abstract:

Advanced methods for single image super-resolution (SISR) based upon Deep learning have demonstrated a remarkable reconstruction performance on downscaled images. However, for real-world low-resolution images (e.g. images captured straight from the camera) they often generate blurry images and highlight unpleasant artifacts. The main reason is the training data that does not reflect the real-world super-resolution problem. They train the net-work using images downsampled with an ideal (usually bicubic) kernel. However, for real-world images the degradation process is more complex and can vary from image to image. This paper proposes a new dual-path architecture (DualSR) that learns an image-specific low-to-high resolution mapping using only patches of the input test image. For every image, a downsampler learns the degradation process using a generative adversarial network, and an up-sampler learns to super-resolve that specific image. In the DualSR architecture, the upsampler and downsampler are trained simultaneously and they improve each other using cycle consistency losses. For better visual quality and eliminating undesired artifacts, the upsampler is constrained by a masked interpolation loss. On standard benchmarks with unknown degradation kernels, DualSR outperforms recent blind and non-blind super-resolution methods in term of SSIM and generates images with higher perceptual quality. On real-world LR images it generates visually pleasing and artifact-free results.
Date of Conference: 03-08 January 2021
Date Added to IEEE Xplore: 14 June 2021
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Conference Location: Waikoloa, HI, USA
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1. Introduction

The aim of Single Image Super-Resolution (SISR) is to upsample a low-resolution (LR) image and reconstruct the high-resolution (HR) details. Recently, these super- resolution (SR) methods have entered our daily life by aiding low end smartphone cameras [31], [23]. Furthermore the restoration of historical LR photos to clean HR results is performed by novel SISR methods. Even old movies are converted to high-definition video quality. Next to the media industry these SR techniques have important other applications in medical imaging [33], [28], remote sensing [12], microscopy [10], surveillance [22] and so on.

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