框架水平斯图加特检测

John Harvill, M. Hasegawa-Johnson, C. Yoo
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引用次数: 4

摘要

先前对口吃言语检测的研究主要集中在话语水平上的分类(例如,用于言语治疗应用),以及将口吃事件按顺序正确插入正字法转录本。在本文中,我们提出了帧级口吃检测任务,该任务旨在识别语音中口吃事件的时间一致性,并评估了我们在口吃纠正任务上的方法。先前有限的口吃矫正工作依赖于简单的信号处理技术,并且只在小数据集上进行了评估。我们的方法是第一个大规模的数据驱动技术,提出在帧级概率识别口吃,我们在训练过程中使用迄今为止最大的可用口吃数据集。预测不同口吃事件的帧级概率可用于自动语音识别(ASR)的下游应用,作为附加功能或语音预处理管道的一部分,在ASR系统分析之前清理语音。
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Frame-Level Stutter Detection
Previous studies on the detection of stuttered speech have focused on classification at the utterance level (e.g., for speech therapy applications), and on the correct insertion of stutter events in sequence into an orthographic transcript. In this paper, we propose the task of frame-level stutter detection which seeks to identify the time alignment of stutter events in a speech ut-terance, and we evaluate our approach on the stutter correction task. Limited previous work on stutter correction has relied on simple signal processing techniques and only been evaluated on small datasets. Our approach is the first large scale data-driven technique proposed to identify stuttering probabilistically at the frame level, and we make use of the largest available stuttering dataset to date during training. Predicted frame-level probabilities of different stuttering events can be used in downstream applications for Automatic Speech Recognition (ASR) as either additional features or part of a speech preprocessing pipeline to clean speech before analysis by an ASR system.
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