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📄 Abstract
Abstract: Recent advances in AIGC have exacerbated the misuse of malicious deepfake
content, making the development of reliable deepfake detection methods an
essential means to address this challenge. Although existing deepfake detection
models demonstrate outstanding performance in detection metrics, most methods
only provide simple binary classification results, lacking interpretability.
Recent studies have attempted to enhance the interpretability of classification
results by providing spatial manipulation masks or temporal forgery segments.
However, due to the limitations of forgery datasets, the practical
effectiveness of these methods remains suboptimal. The primary reason lies in
the fact that most existing deepfake datasets contain only binary labels, with
limited variety in forgery scenarios, insufficient diversity in deepfake types,
and relatively small data scales, making them inadequate for complex real-world
scenarios.To address this predicament, we construct a novel large-scale
deepfake detection and localization (\textbf{DDL}) dataset containing over
$\textbf{1.4M+}$ forged samples and encompassing up to $\textbf{80}$ distinct
deepfake methods. The DDL design incorporates four key innovations: (1)
\textbf{Comprehensive Deepfake Methods} (covering 7 different generation
architectures and a total of 80 methods), (2) \textbf{Varied Manipulation
Modes} (incorporating 7 classic and 3 novel forgery modes), (3) \textbf{Diverse
Forgery Scenarios and Modalities} (including 3 scenarios and 3 modalities), and
(4) \textbf{Fine-grained Forgery Annotations} (providing 1.18M+ precise spatial
masks and 0.23M+ precise temporal segments).Through these improvements, our DDL
not only provides a more challenging benchmark for complex real-world forgeries
but also offers crucial support for building next-generation deepfake
detection, localization, and interpretability methods.
Authors (14)
Changtao Miao
Yi Zhang
Weize Gao
Zhiya Tan
Weiwei Feng
Man Luo
+8 more
Key Contributions
Introduces DDL, a large-scale dataset for deepfake detection and localization across diversified real-world scenarios. It addresses the limitations of existing datasets (binary labels, limited variety, small scale) by providing richer annotations and a broader range of forgery types, enabling the development of more practical and interpretable deepfake detection methods.
Business Value
Provides essential resources for developing reliable tools to combat the spread of malicious deepfakes, crucial for maintaining trust in digital media, preventing misinformation, and securing online platforms.