用于标点符号修复的自发非正式语音数据集

Xing Yi Liu, Homayoon Beigi
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引用次数: 0

摘要

目前,标点符号修复模型几乎只能在结构良好的脚本语料库中进行评估。另一方面,现实世界中的 ASR 系统和后处理管道通常适用于自发语音,这些语音存在明显的不规则、口吃和语法偏差。为了解决这一差异,我们引入了 SponSpeech,这是一个标点符号还原数据集,源自非正式语音源,其中包括标点符号和音调信息。除了公开发布数据集之外,我们还提供了一个过滤管道,可用于生成更多数据。我们的过滤管道同时检查语音音频和转录文本的质量。我们还精心构建了一个 "挑战性 "测试集,旨在评估模型利用音频信息预测语法模糊标点符号的能力。SponSpeech可在https://github.com/GitHubAccountAnonymous/PR,以及用于数据集构建和模型运行的所有代码。
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Spontaneous Informal Speech Dataset for Punctuation Restoration
Presently, punctuation restoration models are evaluated almost solely on well-structured, scripted corpora. On the other hand, real-world ASR systems and post-processing pipelines typically apply towards spontaneous speech with significant irregularities, stutters, and deviations from perfect grammar. To address this discrepancy, we introduce SponSpeech, a punctuation restoration dataset derived from informal speech sources, which includes punctuation and casing information. In addition to publicly releasing the dataset, we contribute a filtering pipeline that can be used to generate more data. Our filtering pipeline examines the quality of both speech audio and transcription text. We also carefully construct a ``challenging" test set, aimed at evaluating models' ability to leverage audio information to predict otherwise grammatically ambiguous punctuation. SponSpeech is available at https://github.com/GitHubAccountAnonymous/PR, along with all code for dataset building and model runs.
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