Domain Adaptation based on Human Feedback for Enhancing Generative Model Denoising Abilities
Hyun-Cheol Park, Sung Ho Kang

TL;DR
This paper introduces a novel method that leverages human feedback to fine-tune generative models for image denoising across different domains, without requiring target domain images during initial training.
Contribution
The paper presents a domain adaptation technique that uses human feedback to improve denoising performance on unseen domains, bypassing the need for target domain training data.
Findings
Effective domain adaptation via human feedback
Improved denoising on unseen domains
Fine-tuning enhances model performance
Abstract
How can we apply human feedback into generative model? As answer of this question, in this paper, we show the method applied on denoising problem and domain adaptation using human feedback. Deep generative models have demonstrated impressive results in image denoising. However, current image denoising models often produce inappropriate results when applied to domains different from the ones they were trained on. If there are `Good' and `Bad' result for unseen data, how to raise up quality of `Bad' result. Most methods use an approach based on generalization of model. However, these methods require target image for training or adapting unseen domain. In this paper, to adapting domain, we deal with non-target image for unseen domain, and improve specific failed image. To address this, we propose a method for fine-tuning inappropriate results generated in a different domain by utilizing…
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Taxonomy
TopicsGenerative Adversarial Networks and Image Synthesis
