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A Closer Look at Blind Super-Resolution: Degradation Models, Baselines, and Performance Upper Bounds | IEEE Conference Publication | IEEE Xplore

A Closer Look at Blind Super-Resolution: Degradation Models, Baselines, and Performance Upper Bounds


Abstract:

Degradation models play an important role in Blind super-resolution (SR). The classical degradation model, which mainly involves blur degradation, is too simple to simula...Show More

Abstract:

Degradation models play an important role in Blind super-resolution (SR). The classical degradation model, which mainly involves blur degradation, is too simple to simulate real-world scenarios. The recently proposed practical degradation model includes a full spectrum of degradation types, but only considers complex cases that use all degradation types in the degradation process, while ignoring many important corner cases that are common in the real world. To address this problem, we propose a unified gated degradation model to generate a broad set of degradation cases using a random gate controller. Based on the gated degradation model, we propose simple baseline networks that can effectively handle non-blind, classical, practical degradation cases as well as many other corner cases. To fairly evaluate the performance of our baseline networks against state-of-the-art methods and understand their limits, we introduce the performance upper bound of an SR network for every degradation type. Our empirical analysis shows that with the unified gated degradation model, the proposed baselines can achieve much better performance than existing methods in quantitative and qualitative results, which are close to the performance upper bounds.
Date of Conference: 19-20 June 2022
Date Added to IEEE Xplore: 23 August 2022
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Conference Location: New Orleans, LA, USA

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1. Introduction

Traditional image super-resolution (SR) aims at reconstructing a high-resolution (HR) image from a low-resolution (LR) observation. In the past decade, convolutional neural networks (CNNs) [5],[30],[41],[42] have demonstrated superior performance in this task due to their powerful representation learning ability. Unlike traditional image SR, blind SR aims to generate an HR image from the counterpart one with a variety of unknown degradation types.

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