ForensicHub: A Unified Benchmark & Codebase for All-Domain Fake Image Detection and Localization
Bo Du, Xuekang Zhu, Xiaochen Ma, Chenfan Qu, Kaiwen Feng, Zhe Yang, Chi-Man Pun, Jian Liu, Ji-Zhe Zhou

TL;DR
ForensicHub introduces a comprehensive, unified benchmark and codebase for all-domain fake image detection and localization, enabling cross-domain comparison and advancing the field.
Contribution
It presents the first modular, configuration-driven framework that integrates multiple benchmarks, baseline models, and analysis tools across all FIDL domains.
Findings
Implemented 10 baseline models and 6 backbones.
Developed 2 new benchmarks for AIGC and Document manipulation.
Provided 8 key insights into model architecture and dataset characteristics.
Abstract
The field of Fake Image Detection and Localization (FIDL) is highly fragmented, encompassing four domains: deepfake detection (Deepfake), image manipulation detection and localization (IMDL), artificial intelligence-generated image detection (AIGC), and document image manipulation localization (Doc). Although individual benchmarks exist in some domains, a unified benchmark for all domains in FIDL remains blank. The absence of a unified benchmark results in significant domain silos, where each domain independently constructs its datasets, models, and evaluation protocols without interoperability, preventing cross-domain comparisons and hindering the development of the entire FIDL field. To close the domain silo barrier, we propose ForensicHub, the first unified benchmark & codebase for all-domain fake image detection and localization. Considering drastic variations on dataset, model, and…
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Taxonomy
TopicsDigital Media Forensic Detection · Generative Adversarial Networks and Image Synthesis · Digital and Cyber Forensics
