Re-boosting Self-Collaboration Parallel Prompt GAN for Unsupervised Image Restoration
Xin Lin, Yuyan Zhou, Jingtong Yue, Chao Ren, Kelvin C.K. Chan, Lu Qi, Ming-Hsuan Yang

TL;DR
This paper introduces a self-collaboration strategy for GAN-based unsupervised image restoration that improves performance without increasing inference complexity, using iterative feedback and prompt learning modules.
Contribution
It proposes a novel self-collaboration approach with prompt learning that enhances existing restoration models without extra inference costs.
Findings
Improves restoration performance by over 1.5 dB without extra inference complexity.
Enhances pre-trained restorers with self-ensemble and self-collaboration strategies.
Further boosts performance by approximately 0.3 dB with the re-boosting module.
Abstract
Unsupervised restoration approaches based on generative adversarial networks (GANs) offer a promising solution without requiring paired datasets. Yet, these GAN-based approaches struggle to surpass the performance of conventional unsupervised GAN-based frameworks without significantly modifying model structures or increasing the computational complexity. To address these issues, we propose a self-collaboration (SC) strategy for existing restoration models. This strategy utilizes information from the previous stage as feedback to guide subsequent stages, achieving significant performance improvement without increasing the framework's inference complexity. The SC strategy comprises a prompt learning (PL) module and a restorer (). It iteratively replaces the previous less powerful fixed restorer in the PL module with a more powerful . The enhanced PL module…
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Taxonomy
TopicsComputer Graphics and Visualization Techniques · Medical Image Segmentation Techniques · Image and Signal Denoising Methods
