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A Preliminary Study for GPT-4o on Image Restoration

GPT-4o, while generating visually appealing images, often lacks structural fidelity and serves as a visual prior to enhance dehazing, derainning, and low-light enhancement tasks in image restoration.

Year
2025
Venue
arXiv 2025
Authors
4
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Abstract onlyARXIV-DEFAULT

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arxiv.org/abs/2505.05621v2ARXIV-DEFAULT
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Abstract

OpenAI's GPT-4o model, integrating multi-modal inputs and outputs within an autoregressive architecture, has demonstrated unprecedented performance in image generation. In this work, we investigate its potential impact on the image restoration community. We present the first systematic evaluation of GPT-4o across diverse restoration tasks. Our experiments reveal that, although restoration outputs from GPT-4o are visually appealing, they often suffer from pixel-level structural fidelity when compared to ground-truth images. Common issues are variations in image proportions, shifts in object positions and quantities, and changes in viewpoint. To address it, taking image dehazing, derainning, and low-light enhancement as representative case studies, we show that GPT-4o's outputs can serve as powerful visual priors, substantially enhancing the performance of existing dehazing networks. It offers practical guidelines and a baseline framework to facilitate the integration of GPT-4o into future image restoration pipelines. We hope the study on GPT-4o image restoration will accelerate innovation in the broader field of image generation areas. To support further research, we will release GPT-4o-restored images.

Authors

4