基于云自动语音识别的Praat语音自动分割

Matus Pleva, J. Juhár, Andrew Simon Thiessen
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引用次数: 7

摘要

Praat程序是一个多功能的语音分析程序,它成为语音/语言分析科学界的标准。自动语音分割已经在Praat中开发并使用了一个名为EasyAlign的插件,它需要和输入文本(分离的句子)和干净的录音,句子之间有安静的停顿来操作。在本文中,一个新的功能将被评估并实现到Praat中,以改善自动语音分割过程,并使其能够处理没有输入文本的嘈杂音频记录。其中之一是使用我们自己的基于云的ASR(自动语音识别)解决方案开发的。在Praat系统中加入自动语音识别和不同音频处理(噪声门、去噪、归一化)的结果,扩展EasyAlign功能,改进自动语音分割结果。Praat的图形输出也有助于可视化自动语音分割和自动语音识别结果,用于教育和系统开发人员的主观评估目的。
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Automatic Acoustic Speech segmentation in Praat using cloud based ASR
The program Praat is a versatile speech analysis program, which becomes a standard in speech/language analysis scientific community. Automatic speech segmentation has been developed and used in Praat using a plugin called EasyAlign, which requires and input text (separated sentences) and clean audio recordings with quiet pauses between the sentences to operate. In this paper, a new functions will be evaluated and implemented into Praat to improve automatic speech segmentation processes and enables to process also noisy audio recordings with no input texts available. One of them is using also our own cloud based ASR (Automatic Speech recognition) solution developed. The results of the automatic speech recognition and different audio processing (noise-gate, de-noiser, normalization) were added into the Praat system to expand the EasyAlign functionality and improve the resulted automatic speech segmentation. The graphical output of the Praat also helps to visualize the automatic speech segmentation and also automatic speech recognition results for educational and system developers subjective evaluation purposes.
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