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DINO-Detect: A Simple yet Effective Framework for Blur-Robust AI-Generated Image Detection

16 November 2025
Jialiang Shen
Jiyang Zheng
Yunqi Xue
Huajie Chen
Yu Yao
Hui-Sung Kang
Ruiqi Liu
Helin Gong
Yang Yang
Dadong Wang
Tongliang Liu
ArXiv (abs)PDFHTML
Main:8 Pages
4 Figures
Bibliography:4 Pages
7 Tables
Abstract

With growing concerns over image authenticity and digital safety, the field of AI-generated image (AIGI) detection has progressed rapidly. Yet, most AIGI detectors still struggle under real-world degradations, particularly motion blur, which frequently occurs in handheld photography, fast motion, and compressed video. Such blur distorts fine textures and suppresses high-frequency artifacts, causing severe performance drops in real-world settings. We address this limitation with a blur-robust AIGI detection framework based on teacher-student knowledge distillation. A high-capacity teacher (DINOv3), trained on clean (i.e., sharp) images, provides stable and semantically rich representations that serve as a reference for learning. By freezing the teacher to maintain its generalization ability, we distill its feature and logit responses from sharp images to a student trained on blurred counterparts, enabling the student to produce consistent representations under motion degradation. Extensive experiments benchmarks show that our method achieves state-of-the-art performance under both motion-blurred and clean conditions, demonstrating improved generalization and real-world applicability. Source codes will be released at: this https URL.

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