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AU-IQA: A Benchmark Dataset for Perceptual Quality...
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AU-IQA: A Benchmark Dataset for Perceptual Quality Assessment of AI-Enhanced User-Generated Content

Abstract

AI-based image enhancement techniques have been widely adopted in various visual applications, significantly improving the perceptual quality of user-generated content (UGC). However, the lack of specialized quality assessment models has become a significant limiting factor in this field, limiting user experience and hindering the advancement of enhancement methods. While perceptual quality assessment methods have shown strong performance on UGC and AIGC individually, their effectiveness on AI-enhanced UGC (AI-UGC) which blends features from both-remains largely unexplored. To address this gap, we construct AU-IQA, a benchmark dataset comprising 4,800 AI-UGC images produced by three representative enhancement types which include super-resolution, low-light enhancement, and denoising. On this dataset, we further evaluate a range of existing quality assessment models, including traditional IQA methods and large multimodal models. Finally, we provide a comprehensive analysis of how well current approaches perform in assessing the perceptual quality of AI-UGC. The access link to the AU-IQA is https://github.com/WNNGGU/AU-IQA-Dataset.

Authors

Wang S; Li C; Zhang Z; Zhou H; Dong W; Chen J; Zhai G; Liu X

Pagination

pp. 12737-12744

Publisher

Association for Computing Machinery (ACM)

Publication Date

October 27, 2025

DOI

10.1145/3746027.3758213

Name of conference

Proceedings of the 33rd ACM International Conference on Multimedia
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