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ADD 2022: the First Audio Deep Synthesis Detection Challenge

Authors :
Yi, Jiangyan
Fu, Ruibo
Tao, Jianhua
Nie, Shuai
Ma, Haoxin
Wang, Chenglong
Wang, Tao
Tian, Zhengkun
Zhang, Xiaohui
Bai, Ye
Fan, Cunhang
Liang, Shan
Wang, Shiming
Zhang, Shuai
Yan, Xinrui
Xu, Le
Wen, Zhengqi
Li, Haizhou
Lian, Zheng
Liu, Bin
Publication Year :
2022

Abstract

Audio deepfake detection is an emerging topic, which was included in the ASVspoof 2021. However, the recent shared tasks have not covered many real-life and challenging scenarios. The first Audio Deep synthesis Detection challenge (ADD) was motivated to fill in the gap. The ADD 2022 includes three tracks: low-quality fake audio detection (LF), partially fake audio detection (PF) and audio fake game (FG). The LF track focuses on dealing with bona fide and fully fake utterances with various real-world noises etc. The PF track aims to distinguish the partially fake audio from the real. The FG track is a rivalry game, which includes two tasks: an audio generation task and an audio fake detection task. In this paper, we describe the datasets, evaluation metrics, and protocols. We also report major findings that reflect the recent advances in audio deepfake detection tasks.<br />Comment: Accepted by ICASSP 2022

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2202.08433
Document Type :
Working Paper