计算机科学
安全性令牌
说话人日记
语音识别
语音活动检测
空中交通管制
字错误率
说话人验证
说话人识别
人工智能
语音处理
工程类
计算机安全
航空航天工程
作者
Juan Zuluaga-Gómez,Seyyed Saeed Sarfjoo,Amrutha Prasad,Iuliia Nigmatulina,Petr Motlíček,Karel Ondrej,Oliver Ohneiser,Hartmut Helmke
标识
DOI:10.1109/slt54892.2023.10022718
摘要
Automatic speech recognition (ASR) allows transcribing the communications between air traffic controllers (ATCOs) and aircraft pilots. The transcriptions are used later to extract ATC named entities, e.g., aircraft callsigns. One common challenge is speech activity detection (SAD) and speaker diarization (SD). In the failure condition, two or more segments remain in the same recording, jeopardizing the overall performance. We propose a system that combines SAD and a BERT model to perform speaker change detection and speaker role detection (SRD) by chunking ASR transcripts, i.e., SD with a defined number of speakers together with SRD. The proposed model is evaluated on real-life public ATC databases. Our BERT SD model baseline reaches up to 10% and 20% token-based Jaccard error rate (JER) in public and private ATC databases. We also achieved relative improvements of 32% and 7.7% in JERs and SD error rate (DER), respectively, compared to VBx, a well-known SD system. 1 1 Our code is stored in the following public GitHub repository: https://github.com/idiap/bert-text-diarization-atc
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