Do AI-generated Images look natural?
Abstract: We take the first step to benchmark and assess the visual naturalness of AI-generated images. First, we construct the AI-Generated Image Naturalness (AGIN) database by conducting a large-scale subjective study to collect human opinions on the overall naturalness as well as perceptions from technical and rationality perspectives. AGIN verifies that naturalness is universally and disparately affected by both technical and rationality distortions. Second, we propose the Joint Objective Image Naturalness evaluaTor (JOINT), to automatically learn the naturalness of AGIs that aligns human ratings. Specifically, JOINT imitates human reasoning in naturalness evaluation by jointly learning both technical and rationality perspectives. Experimental results show our proposed JOINT significantly surpasses baselines for providing more subjectively consistent results on naturalness assessment.
The proposed AGIN includes two perspectives for naturalness assessment: technical (T) and rationality (R), each of which contains 5 dimensions:
- For technical perspective (T), we consider specific image attributes (Luminance, Contrast) that have high correlations of naturalness. Detail, Blur and a common issue introduced by generative models (Artifacts) are also considered.
- For rationality perspective (R), we contribute 5 new factors: Existence, Color, Layout, Context, and Sensory Clarity to evaluate the rationality of AI-generated images.
- Please refer to our paper for more detailed explaination.
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The adopted image generation methods and related works are listed in another repository Awesome-AI-Generated-Image-Tasks
Please contact the first author of this paper for queries.
- Zijian Chen,
zijian.chen@sjtu.edu.cn
Please feel free to cite our paper if you use the AGIN database in your research:
@article{chen2023exploring,
title={Exploring the Naturalness of AI-Generated Images},
author={Chen, Zijian and Sun, Wei and Wu, Haoning and Zhang, Zicheng and Jia, Jun and Min, Xiongkuo and Zhai, Guangtao and Zhang, Wenjun},
journal={arXiv preprint arXiv:2312.05476},
year={2023}
}