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DAVID-XR1: Detecting AI-Generated Videos with Explainable Reasoning

Main:8 Pages
9 Figures
Bibliography:5 Pages
3 Tables
Appendix:4 Pages
Abstract

As AI-generated video becomes increasingly pervasive across media platforms, the ability to reliably distinguish synthetic content from authentic footage has become both urgent and essential. Existing approaches have primarily treated this challenge as a binary classification task, offering limited insight into where or why a model identifies a video as AI-generated. However, the core challenge extends beyond simply detecting subtle artifacts; it requires providing fine-grained, persuasive evidence that can convince auditors and end-users alike. To address this critical gap, we introduce DAVID-X, the first dataset to pair AI-generated videos with detailed defect-level, temporal-spatial annotations and written rationales. Leveraging these rich annotations, we present DAVID-XR1, a video-language model designed to deliver an interpretable chain of visual reasoning-including defect categorization, temporal-spatial localization, and natural language explanations. This approach fundamentally transforms AI-generated video detection from an opaque black-box decision into a transparent and verifiable diagnostic process. We demonstrate that a general-purpose backbone, fine-tuned on our compact dataset and enhanced with chain-of-thought distillation, achieves strong generalization across a variety of generators and generation modes. Our results highlight the promise of explainable detection methods for trustworthy identification of AI-generated video content.

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@article{gao2025_2506.14827,
  title={ DAVID-XR1: Detecting AI-Generated Videos with Explainable Reasoning },
  author={ Yifeng Gao and Yifan Ding and Hongyu Su and Juncheng Li and Yunhan Zhao and Lin Luo and Zixing Chen and Li Wang and Xin Wang and Yixu Wang and Xingjun Ma and Yu-Gang Jiang },
  journal={arXiv preprint arXiv:2506.14827},
  year={ 2025 }
}
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