CVDec 17, 2025

Skyra: AI-Generated Video Detection via Grounded Artifact Reasoning

arXiv:2512.15693v110 citationsh-index: 22
Originality Highly original
AI Analysis

This addresses the need for explainable detection of AI-generated videos to mitigate social misuse, representing a novel approach with a new dataset and benchmark.

The paper tackles the problem of detecting AI-generated videos by introducing Skyra, a multimodal large language model that identifies visual artifacts for detection and explanation, achieving superior performance across multiple benchmarks.

The misuse of AI-driven video generation technologies has raised serious social concerns, highlighting the urgent need for reliable AI-generated video detectors. However, most existing methods are limited to binary classification and lack the necessary explanations for human interpretation. In this paper, we present Skyra, a specialized multimodal large language model (MLLM) that identifies human-perceivable visual artifacts in AI-generated videos and leverages them as grounded evidence for both detection and explanation. To support this objective, we construct ViF-CoT-4K for Supervised Fine-Tuning (SFT), which represents the first large-scale AI-generated video artifact dataset with fine-grained human annotations. We then develop a two-stage training strategy that systematically enhances our model's spatio-temporal artifact perception, explanation capability, and detection accuracy. To comprehensively evaluate Skyra, we introduce ViF-Bench, a benchmark comprising 3K high-quality samples generated by over ten state-of-the-art video generators. Extensive experiments demonstrate that Skyra surpasses existing methods across multiple benchmarks, while our evaluation yields valuable insights for advancing explainable AI-generated video detection.

Foundations

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