CVDec 9, 2023

Exploring the Naturalness of AI-Generated Images

arXiv:2312.05476v331 citationsh-index: 49
Originality Incremental advance
AI Analysis

This work addresses the Image Naturalness Assessment problem for AI-generated images, which is incremental as it extends existing definitions to new content types.

The paper tackles the problem of assessing the visual naturalness of AI-generated images, which is challenging due to diverse distortions, and results in a new database (AGIN) and a method (JOINT) that significantly outperforms baselines in aligning with human ratings.

The proliferation of Artificial Intelligence-Generated Images (AGIs) has greatly expanded the Image Naturalness Assessment (INA) problem. Different from early definitions that mainly focus on tone-mapped images with limited distortions (e.g., exposure, contrast, and color reproduction), INA on AI-generated images is especially challenging as it has more diverse contents and could be affected by factors from multiple perspectives, including low-level technical distortions and high-level rationality distortions. In this paper, 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 technical and rationality distortions. Second, we propose the Joint Objective Image Naturalness evaluaTor (JOINT), to automatically predict the naturalness of AGIs that aligns human ratings. Specifically, JOINT imitates human reasoning in naturalness evaluation by jointly learning both technical and rationality features. We demonstrate that JOINT significantly outperforms baselines for providing more subjectively consistent results on naturalness assessment.

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