defense 2025

Open Set Face Forgery Detection via Dual-Level Evidence Collection

Zhongyi Cai 1, Bryce Gernon 2, Wentao Bao 1, Yifan Li 1, Matthew Wright 2, Yu Kong 1

0 citations · 78 references · arXiv

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Published on arXiv

2512.04331

Output Integrity Attack

OWASP ML Top 10 — ML09

Key Finding

DLED outperforms various baseline models by an average of 20% in detecting forgeries from novel, previously unseen fake categories.

DLED (Dual-Level Evidential face forgery Detection)

Novel technique introduced


The proliferation of face forgeries has increasingly undermined confidence in the authenticity of online content. Given the rapid development of face forgery generation algorithms, new fake categories are likely to keep appearing, posing a major challenge to existing face forgery detection methods. Despite recent advances in face forgery detection, existing methods are typically limited to binary Real-vs-Fake classification or the identification of known fake categories, and are incapable of detecting the emergence of novel types of forgeries. In this work, we study the Open Set Face Forgery Detection (OSFFD) problem, which demands that the detection model recognize novel fake categories. We reformulate the OSFFD problem and address it through uncertainty estimation, enhancing its applicability to real-world scenarios. Specifically, we propose the Dual-Level Evidential face forgery Detection (DLED) approach, which collects and fuses category-specific evidence on the spatial and frequency levels to estimate prediction uncertainty. Extensive evaluations conducted across diverse experimental settings demonstrate that the proposed DLED method achieves state-of-the-art performance, outperforming various baseline models by an average of 20% in detecting forgeries from novel fake categories. Moreover, on the traditional Real-versus-Fake face forgery detection task, our DLED method concurrently exhibits competitive performance.


Key Contributions

  • Reformulates Open Set Face Forgery Detection (OSFFD) as an uncertainty estimation problem to handle novel/unseen forgery categories
  • Proposes Dual-Level Evidential Detection (DLED) that fuses category-specific evidence from both spatial and frequency domains
  • Achieves ~20% improvement over baselines in detecting novel fake categories while maintaining competitive binary Real-vs-Fake performance

🛡️ Threat Analysis

Output Integrity Attack

Proposes a novel face forgery detection architecture (DLED) that identifies AI-generated/manipulated faces, including novel unknown fake categories — a direct contribution to AI-generated content detection and output integrity verification.


Details

Domains
vision
Model Types
cnntransformer
Threat Tags
inference_timeblack_box
Datasets
FaceForensics++
Applications
face forgery detectiondeepfake detectionopen-set recognition