Add 2023: the second audio deepfake detection challenge

J Yi, J Tao, R Fu, X Yan, C Wang, T Wang… - arXiv preprint arXiv …, 2023 - arxiv.org
J Yi, J Tao, R Fu, X Yan, C Wang, T Wang, CY Zhang, X Zhang, Y Zhao, Y Ren, L Xu, J Zhou…
arXiv preprint arXiv:2305.13774, 2023arxiv.org
Audio deepfake detection is an emerging topic in the artificial intelligence community. The
second Audio Deepfake Detection Challenge (ADD 2023) aims to spur researchers around
the world to build new innovative technologies that can further accelerate and foster
research on detecting and analyzing deepfake speech utterances. Different from previous
challenges (eg ADD 2022), ADD 2023 focuses on surpassing the constraints of binary
real/fake classification, and actually localizing the manipulated intervals in a partially fake …
Audio deepfake detection is an emerging topic in the artificial intelligence community. The second Audio Deepfake Detection Challenge (ADD 2023) aims to spur researchers around the world to build new innovative technologies that can further accelerate and foster research on detecting and analyzing deepfake speech utterances. Different from previous challenges (e.g. ADD 2022), ADD 2023 focuses on surpassing the constraints of binary real/fake classification, and actually localizing the manipulated intervals in a partially fake speech as well as pinpointing the source responsible for generating any fake audio. Furthermore, ADD 2023 includes more rounds of evaluation for the fake audio game sub-challenge. The ADD 2023 challenge includes three subchallenges: audio fake game (FG), manipulation region location (RL) and deepfake algorithm recognition (AR). This paper describes the datasets, evaluation metrics, and protocols. Some findings are also reported in audio deepfake detection tasks.
arxiv.org
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