Back to Search Start Over

DeCoF: Generated Video Detection via Frame Consistency: The First Benchmark Dataset

Authors :
Ma, Long
Zhang, Jiajia
Deng, Hongping
Zhang, Ningyu
Guo, Qinglang
Yu, Haiyang
Liao, Yong
Zhou, Pengyuan
Publication Year :
2024

Abstract

The escalating quality of video generated by advanced video generation methods results in new security challenges, while there have been few relevant research efforts: 1) There is no open-source dataset for generated video detection, 2) No generated video detection method has been proposed so far. To this end, we propose an open-source dataset and a detection method for generated video for the first time. First, we propose a scalable dataset consisting of 964 prompts, covering various forgery targets, scenes, behaviors, and actions, as well as various generation models with different architectures and generation methods, including the most popular commercial models like OpenAI's Sora and Google's Veo. Second, we found via probing experiments that spatial artifact-based detectors lack generalizability. Hence, we propose a simple yet effective \textbf{de}tection model based on \textbf{f}rame \textbf{co}nsistency (\textbf{DeCoF}), which focuses on temporal artifacts by eliminating the impact of spatial artifacts during feature learning. Extensive experiments demonstrate the efficacy of DeCoF in detecting videos generated by unseen video generation models and confirm its powerful generalizability across several commercially proprietary models. Our code and dataset will be released at \url{https://github.com/wuwuwuyue/DeCoF}.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2402.02085
Document Type :
Working Paper