Open Set Synthetic Image Source Attribution
Shengbang Fang, Tai D. Nguyen, Matthew C. Stamm

TL;DR
This paper introduces an open-set source attribution method for synthetic images using metric learning, enabling identification of images from unseen generators by learning transferable embeddings.
Contribution
It proposes a novel metric learning-based approach with transferability enhancements for open-set synthetic image source attribution.
Findings
Effective attribution of images from unseen generators
Pretraining on camera identification improves transferability
Outperforms existing closed-set methods in open-set scenarios
Abstract
AI-generated images have become increasingly realistic and have garnered significant public attention. While synthetic images are intriguing due to their realism, they also pose an important misinformation threat. To address this new threat, researchers have developed multiple algorithms to detect synthetic images and identify their source generators. However, most existing source attribution techniques are designed to operate in a closed-set scenario, i.e. they can only be used to discriminate between known image generators. By contrast, new image-generation techniques are rapidly emerging. To contend with this, there is a great need for open-set source attribution techniques that can identify when synthetic images have originated from new, unseen generators. To address this problem, we propose a new metric learning-based approach. Our technique works by learning transferrable…
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Taxonomy
TopicsDigital Media Forensic Detection · Domain Adaptation and Few-Shot Learning · Generative Adversarial Networks and Image Synthesis
