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Autori principali: Tan, Hao, Lan, Jun, Tan, Zichang, Liu, Ajian, Song, Chuanbiao, Shi, Senyuan, Zhu, Huijia, Wang, Weiqiang, Wan, Jun, Lei, Zhen
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2508.21048
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author Tan, Hao
Lan, Jun
Tan, Zichang
Liu, Ajian
Song, Chuanbiao
Shi, Senyuan
Zhu, Huijia
Wang, Weiqiang
Wan, Jun
Lei, Zhen
author_facet Tan, Hao
Lan, Jun
Tan, Zichang
Liu, Ajian
Song, Chuanbiao
Shi, Senyuan
Zhu, Huijia
Wang, Weiqiang
Wan, Jun
Lei, Zhen
contents Deepfake detection remains a formidable challenge due to the complex and evolving nature of fake content in real-world scenarios. However, existing academic benchmarks suffer from severe discrepancies from industrial practice, typically featuring homogeneous training sources and low-quality testing images, which hinder the practical deployments of current detectors. To mitigate this gap, we introduce HydraFake, a dataset that simulates real-world challenges with hierarchical generalization testing. Specifically, HydraFake involves diversified deepfake techniques and in-the-wild forgeries, along with rigorous training and evaluation protocol, covering unseen model architectures, emerging forgery techniques and novel data domains. Building on this resource, we propose Veritas, a multi-modal large language model (MLLM) based deepfake detector. Different from vanilla chain-of-thought (CoT), we introduce pattern-aware reasoning that involves critical reasoning patterns such as "planning" and "self-reflection" to emulate human forensic process. We further propose a two-stage training pipeline to seamlessly internalize such deepfake reasoning capacities into current MLLMs. Experiments on HydraFake dataset reveal that although previous detectors show great generalization on cross-model scenarios, they fall short on unseen forgeries and data domains. Our Veritas achieves significant gains across different OOD scenarios, and is capable of delivering transparent and faithful detection outputs.
format Preprint
id arxiv_https___arxiv_org_abs_2508_21048
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Veritas: Generalizable Deepfake Detection via Pattern-Aware Reasoning
Tan, Hao
Lan, Jun
Tan, Zichang
Liu, Ajian
Song, Chuanbiao
Shi, Senyuan
Zhu, Huijia
Wang, Weiqiang
Wan, Jun
Lei, Zhen
Computer Vision and Pattern Recognition
Artificial Intelligence
Deepfake detection remains a formidable challenge due to the complex and evolving nature of fake content in real-world scenarios. However, existing academic benchmarks suffer from severe discrepancies from industrial practice, typically featuring homogeneous training sources and low-quality testing images, which hinder the practical deployments of current detectors. To mitigate this gap, we introduce HydraFake, a dataset that simulates real-world challenges with hierarchical generalization testing. Specifically, HydraFake involves diversified deepfake techniques and in-the-wild forgeries, along with rigorous training and evaluation protocol, covering unseen model architectures, emerging forgery techniques and novel data domains. Building on this resource, we propose Veritas, a multi-modal large language model (MLLM) based deepfake detector. Different from vanilla chain-of-thought (CoT), we introduce pattern-aware reasoning that involves critical reasoning patterns such as "planning" and "self-reflection" to emulate human forensic process. We further propose a two-stage training pipeline to seamlessly internalize such deepfake reasoning capacities into current MLLMs. Experiments on HydraFake dataset reveal that although previous detectors show great generalization on cross-model scenarios, they fall short on unseen forgeries and data domains. Our Veritas achieves significant gains across different OOD scenarios, and is capable of delivering transparent and faithful detection outputs.
title Veritas: Generalizable Deepfake Detection via Pattern-Aware Reasoning
topic Computer Vision and Pattern Recognition
Artificial Intelligence
url https://arxiv.org/abs/2508.21048