Semi-Supervised Training and Data Augmentation for Adaptation of Automatic Broadcast News Captioning Systems

Yinghui Huang, Samuel Thomas, Masayuki Suzuki, Zoltán Tüske, Larry Sansone, M. Picheny
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引用次数: 4

Abstract

In this paper we present a comprehensive study on building and adapting deep neural network based speech recognition systems for automatic closed captioning. We develop the proposed systems by first building base automatic speech recognition (ASR) systems that are not specific to any particular show or station. These models are trained on nearly 6000 hours of broadcast news data using conventional hybrid and more recent attention based end-to-end acoustic models. We then employ various adaptation and data augmentation strategies to further improve the trained base models. We use 535 hours of data from two independent BN sources to study how the base models can be customized. We observe up to 32% relative improvement using the proposed techniques on test sets related to, but independent of the adaptation data. At these low word error rates (WERs), we believe the customized BN ASR systems can be used effectively for automatic closed captioning.
自动广播新闻字幕系统自适应的半监督训练和数据增强
本文对基于深度神经网络的自动封闭字幕语音识别系统的构建和应用进行了全面的研究。我们通过首先构建不针对任何特定节目或电台的基础自动语音识别(ASR)系统来开发所提出的系统。这些模型是在近6000小时的广播新闻数据上训练的,使用传统的混合模式和最近基于注意力的端到端声学模型。然后,我们采用各种自适应和数据增强策略来进一步改进训练后的基础模型。我们使用来自两个独立BN来源的535小时的数据来研究如何定制基本模型。我们观察到,在与适应数据相关但独立于适应数据的测试集上,使用所提出的技术可相对提高32%。在这些低单词错误率(wer)下,我们相信定制的BN ASR系统可以有效地用于自动封闭字幕。
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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