FeatDistill: A Feature Distillation Enhanced Multi-Expert Ensemble Framework for Robust AI-generated Image Detection
Zhilin Tu, Kemou Li, Fengpeng Li, Jianwei Fei, Jiamin Zhang, Haiwei Wu

TL;DR
FeatDistill introduces a robust AI-generated image detection framework combining feature distillation and multi-expert ensemble techniques, effectively handling diverse real-world degradations and unseen forgery methods.
Contribution
It presents a novel ensemble framework with feature distillation and comprehensive degradation modeling for improved generalization in deepfake detection.
Findings
Achieves strong robustness under diverse conditions.
Effectively generalizes to unseen generators.
Maintains efficiency with only 10 GB GPU memory.
Abstract
The rapid iteration and widespread dissemination of deepfake technology have posed severe challenges to information security, making robust and generalizable detection of AI-generated forged images increasingly important. In this paper, we propose FeatDistill, an AI-generated image detection framework that integrates feature distillation with a multi-expert ensemble, developed for the NTIRE Challenge on Robust AI-Generated Image Detection in the Wild. The framework explicitly targets three practical bottlenecks in real-world forensics: degradation interference, insufficient feature representation, and limited generalization. Concretely, we build a four-backbone Vision Transformer (ViT) ensemble composed of CLIP and SigLIP variants to capture complementary forensic cues. To improve data coverage, we expand the training set and introduce comprehensive degradation modeling, which exposes…
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Taxonomy
TopicsDigital Media Forensic Detection · Generative Adversarial Networks and Image Synthesis · Adversarial Robustness in Machine Learning
