Advances in Online Audio-Visual Meeting Transcription

Takuya Yoshioka, Igor Abramovski, Cem Aksoylar, Zhuo Chen, Moshe David, D. Dimitriadis, Y. Gong, I. Gurvich, Xuedong Huang, Yan-ping Huang, Aviv Hurvitz, Li Jiang, S. Koubi, Eyal Krupka, Ido Leichter, Changliang Liu, P. Parthasarathy, Alon Vinnikov, Lingfeng Wu, Xiong Xiao, Wayne Xiong, Huaming Wang, Zhenghao Wang, Jun Zhang, Yong Zhao, Tianyan Zhou
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引用次数: 66

Abstract

This paper describes a system that generates speaker-annotated transcripts of meetings by using a microphone array and a 360-degree camera. The hallmark of the system is its ability to handle overlapped speech, which has been an unsolved problem in realistic settings for over a decade. We show that this problem can be addressed by using a continuous speech separation approach. In addition, we describe an online audio-visual speaker diarization method that leverages face tracking and identification, sound source localization, speaker identification, and, if available, prior speaker information for robustness to various real world challenges. All components are integrated in a meeting transcription framework called SRD, which stands for “separate, recognize, and diarize”. Experimental results using recordings of natural meetings involving up to 11 attendees are reported. The continuous speech separation improves a word error rate (WER) by 16.1% compared with a highly tuned beamformer. When a complete list of meeting attendees is available, the discrepancy between WER and speaker-attributed WER is only 1.0%, indicating accurate word-to-speaker association. This increases marginally to 1.6% when 50% of the attendees are unknown to the system.
在线视听会议转录研究进展
本文介绍了一种利用麦克风阵列和360度摄像机生成发言者注释会议记录的系统。该系统的特点是其处理重叠语音的能力,这在现实环境中十多年来一直是一个未解决的问题。我们表明,这个问题可以通过使用连续语音分离方法来解决。此外,我们还描述了一种在线视听扬声器拨号方法,该方法利用人脸跟踪和识别、声源定位、说话人识别以及(如果有的话)先前的说话人信息来增强对各种现实世界挑战的鲁棒性。所有组件都集成在一个名为SRD的会议记录框架中,SRD代表“分离、识别和记录”。报告了使用多达11名与会者的自然会议录音的实验结果。与高调谐波束形成器相比,连续语音分离使字错误率(WER)提高了16.1%。当一个完整的会议参与者列表可用时,WER和演讲者归属的WER之间的差异仅为1.0%,表明准确的单词到演讲者的关联。当系统不认识50%的参与者时,这一比例略微增加到1.6%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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