Auditing Generalization in AI-Generated Video Detection: A Six-Control Protocol and the VidAudit Toolkit
arXiv:2606.31004v1 Announce Type: new Abstract: AI-generated video detection benchmarks such as GenVidBench and AIGVDBench are the de facto leaderboards, yet most evaluation protocols leave uncontrolled confounds that can inflate reported generalization. As an existence proof, a three-feature clip-length classifier reaches a leave-one-generator-out (LOGO) AUC of 0.998 on GenVidBench under unaudited evaluation, while measuring nothing about motion. A 20-paper survey finds none applying all six st...
arXiv cs.CV
·Mert Onur Cakiroglu, Zhihe Lu, Mehmet Dalkilic, Hasan Kurban
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