Orthogonal Subspace Decomposition for Generalizable AI-Generated Image Detection
Zhiyuan Yan, Jiangming Wang, Peng Jin, Ke-Yue Zhang, Chengchun Liu, Shen Chen, Taiping Yao, Shouhong Ding, Baoyuan Wu, Li Yuan

TL;DR
This paper introduces an orthogonal subspace decomposition method using SVD to improve the generalization of AI-generated image detection by expanding feature space and incorporating pre-trained knowledge.
Contribution
It proposes a novel orthogonal subspace decomposition approach that preserves pre-trained knowledge and enhances generalization in AI-generated image detection.
Findings
Explicit orthogonality minimizes overfitting
Higher rank feature space improves detection
Implicitly models the prior that fakes derive from real images
Abstract
AI-generated images (AIGIs), such as natural or face images, have become increasingly important yet challenging. In this paper, we start from a new perspective to excavate the reason behind the failure generalization in AIGI detection, named the \textit{asymmetry phenomenon}, where a naively trained detector tends to favor overfitting to the limited and monotonous fake patterns, causing the feature space to become highly constrained and low-ranked, which is proved seriously limiting the expressivity and generalization. One potential remedy is incorporating the pre-trained knowledge within the vision foundation models (higher-ranked) to expand the feature space, alleviating the model's overfitting to fake. To this end, we employ Singular Value Decomposition (SVD) to decompose the original feature space into \textit{two orthogonal subspaces}. By freezing the principal components and…
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Taxonomy
TopicsMedical Image Segmentation Techniques
