The VoicePrivacy 2024 Challenge Evaluation Plan
- URL: http://arxiv.org/abs/2404.02677v2
- Date: Wed, 12 Jun 2024 14:05:43 GMT
- Title: The VoicePrivacy 2024 Challenge Evaluation Plan
- Authors: Natalia Tomashenko, Xiaoxiao Miao, Pierre Champion, Sarina Meyer, Xin Wang, Emmanuel Vincent, Michele Panariello, Nicholas Evans, Junichi Yamagishi, Massimiliano Todisco,
- Abstract summary: The challenge is to develop a voice anonymization system which conceals the speaker's voice identity while protecting linguistic content and emotional states.
Participants apply their developed anonymization systems, run evaluation scripts and submit evaluation results and anonymized speech data to the organizers.
Results will be presented at a workshop held in conjunction with Interspeech 2024.
- Score: 40.2768875178317
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The task of the challenge is to develop a voice anonymization system for speech data which conceals the speaker's voice identity while protecting linguistic content and emotional states. The organizers provide development and evaluation datasets and evaluation scripts, as well as baseline anonymization systems and a list of training resources formed on the basis of the participants' requests. Participants apply their developed anonymization systems, run evaluation scripts and submit evaluation results and anonymized speech data to the organizers. Results will be presented at a workshop held in conjunction with Interspeech 2024 to which all participants are invited to present their challenge systems and to submit additional workshop papers.
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