GenVidBench: A 6-Million Benchmark for AI-Generated Video Detection
Zhenliang Ni, Qiangyu Yan, Mouxiao Huang, Tianning Yuan, Yehui Tang, Hailin Hu, Xinghao Chen, Yunhe Wang

TL;DR
GenVidBench introduces a large-scale, diverse dataset of 6.78 million videos from multiple generators to advance AI-generated video detection research.
Contribution
It provides the largest high-quality dataset with cross-source and cross-generator diversity, facilitating the development of generalized detection models.
Findings
State-of-the-art detection models evaluated on GenVidBench
Dataset covers latest video generation techniques
Results highlight challenges in detecting AI-generated videos
Abstract
The rapid advancement of video generation models has made it increasingly challenging to distinguish AI-generated videos from real ones. This issue underscores the urgent need for effective AI-generated video detectors to prevent the dissemination of false information via such videos. However, the development of high-performance AI-generated video detectors is currently impeded by the lack of large-scale, high-quality datasets specifically designed for generative video detection. To this end, we introduce GenVidBench, a challenging AI-generated video detection dataset with several key advantages: 1) Large-scale video collection: The dataset contains 6.78 million videos and is currently the largest dataset for AI-generated video detection. 2) Cross-Source and Cross-Generator: The cross-source generation reduces the interference of video content on the detection. The cross-generator…
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Videos
Taxonomy
TopicsAdversarial Robustness in Machine Learning · Generative Adversarial Networks and Image Synthesis · Explainable Artificial Intelligence (XAI)
