Using web text to improve keyword spotting in speech

Ankur Gandhe, Longlu Qin, Florian Metze, Alexander I. Rudnicky, Ian Lane, Matthias Eck
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引用次数: 20

Abstract

For low resource languages, collecting sufficient training data to build acoustic and language models is time consuming and often expensive. But large amounts of text data, such as online newspapers, web forums or online encyclopedias, usually exist for languages that have a large population of native speakers. This text data can be easily collected from the web and then used to both expand the recognizer's vocabulary and improve the language model. One challenge, however, is normalizing and filtering the web data for a specific task. In this paper, we investigate the use of online text resources to improve the performance of speech recognition specifically for the task of keyword spotting. For the five languages provided in the base period of the IARPA BABEL project, we automatically collected text data from the web using only Limited LP resources. We then compared two methods for filtering the web data, one based on perplexity ranking and the other based on out-of-vocabulary (OOV) word detection. By integrating the web text into our systems, we observed significant improvements in keyword spotting accuracy for four out of the five languages. The best approach obtained an improvement in actual term weighted value (ATWV) of 0.0424 compared to a baseline system trained only on LimitedLP resources. On average, ATWV was improved by 0.0243 across five languages.
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使用网页文本提高语音中的关键词识别能力
对于低资源语言,收集足够的训练数据来构建声学和语言模型是耗时且昂贵的。但是大量的文本数据,如在线报纸、网络论坛或在线百科全书,通常存在于有大量母语人口的语言中。这些文本数据可以很容易地从网络上收集,然后用于扩展识别器的词汇量和改进语言模型。然而,一个挑战是为特定任务规范化和过滤web数据。在本文中,我们研究了使用在线文本资源来提高语音识别的性能,特别是对于关键字的识别任务。对于IARPA BABEL项目基期提供的五种语言,我们仅使用有限的LP资源从网络上自动收集文本数据。然后,我们比较了两种过滤web数据的方法,一种是基于困惑度排序,另一种是基于词汇外(OOV)单词检测。通过将网络文本集成到我们的系统中,我们发现五种语言中有四种的关键词识别准确率有了显著提高。与仅在LimitedLP资源上训练的基线系统相比,最佳方法获得了0.0424的实际术语加权值(ATWV)改进。五种语言的ATWV平均提高了0.0243。
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