我知道那个声音:识别声音背后的配音演员

L. Uzan, Lior Wolf
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引用次数: 11

摘要

通过电子或非电子手段故意修改语音对自动说话人识别系统提出了挑战。以前的工作集中在检测伪装行为或识别日常说话者伪装他们的声音。在这里,我们通过研究专业配音演员的声音变异性,提出了一个研究声音伪装的基准。创建了114名演员扮演647个角色的数据集。它包含19个小时的捕获语音,分为29,733个由角色和演员名字标记的话语,然后进一步采样。在对演员所扮演的角色子集进行新的基准训练的基础上,对演员进行了文本独立的说话人识别,同时对新的未见过的角色进行了测试,结果表明,在从话语生成的频谱图上训练卷积神经网络时,每个话语的EER为17.1%,HTER为15.9%,rank-1识别率为63.5%。基于I-Vector的系统在相同的数据上进行训练和测试,获得了39.7%的EER、39.4%的HTER和13.6%的rank-1识别率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
I know that voice: Identifying the voice actor behind the voice
Intentional voice modifications by electronic or nonelectronic means challenge automatic speaker recognition systems. Previous work focused on detecting the act of disguise or identifying everyday speakers disguising their voices. Here, we propose a benchmark for the study of voice disguise, by studying the voice variability of professional voice actors. A dataset of 114 actors playing 647 characters is created. It contains 19 hours of captured speech, divided into 29,733 utterances tagged by character and actor names, which is then further sampled. Text-independent speaker identification of the actors based on a novel benchmark training on a subset of the characters they play, while testing on new unseen characters, shows an EER of 17.1%, HTER of 15.9%, and rank-1 recognition rate of 63.5% per utterance when training a Convolutional Neural Network on spectrograms generated from the utterances. An I-Vector based system was trained and tested on the same data, resulting in 39.7% EER, 39.4% HTER, and rank-1 recognition rate of 13.6%.
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