TL;DR
This survey comprehensively reviews recent deep learning methods for ultra-high-definition image restoration, covering datasets, architectures, challenges, and future directions to advance the field.
Contribution
It systematically organizes existing UHD image restoration techniques, introduces a classification framework, and provides insights into future research directions.
Findings
Deep learning has significantly advanced UHD image restoration.
Benchmark datasets are crucial for evaluating restoration methods.
Progression of techniques shows increasing effectiveness in various restoration tasks.
Abstract
Ultra-high-definition (UHD) image restoration aims to specifically solve the problem of quality degradation in ultra-high-resolution images. Recent advancements in this field are predominantly driven by deep learning-based innovations, including enhancements in dataset construction, network architecture, sampling strategies, prior knowledge integration, and loss functions. In this paper, we systematically review recent progress in UHD image restoration, covering various aspects ranging from dataset construction to algorithm design. This serves as a valuable resource for understanding state-of-the-art developments in the field. We begin by summarizing degradation models for various image restoration subproblems, such as super-resolution, low-light enhancement, deblurring, dehazing, deraining, and desnowing, and emphasizing the unique challenges of their application to UHD image…
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