开发了一种基于Google数据库的3-gram语言模型扩展构建日语语音识别系统的方法

Toshiaki Shimada, R. Nisimura, Masayasu Tanaka, Hideki Kawahara, T. Irino
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引用次数: 1

摘要

基于谷歌数据库,提出了一种基于3-gram语言模型扩展的日语自动语音识别系统的构建方法。我们的目标是提高基于3-gram语言模型的ASR系统的识别准确性,即使在使用短文本片段训练语言模型的情况下也是如此。我们研究了一种实用的方法,通过使用来自外部web文档的3克信息来扩展语言模型。此外,我们根据词频率逆文档频率(TF-IDF)分数和Yahoo!web API,以防止不必要的添加冗余或不相关的3克条目。在实验中,我们将单词错误率提高了0.71%,并证明了将所提出的方法与传统的backoff平滑技术相结合可以提高识别精度,而不需要收集额外的文本来训练模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Developing a method to build Japanese speech recognition system based on 3-gram language model expansion with Google database
We have developed a method to build a Japanese automatic speech recognition (ASR) system based on 3-gram language model expansion with the Google database. Our aim is to enhance the recognition accuracy of ASR systems based on the 3-gram language model, even in cases where the language model is trained using short text segments. We investigate a practical approach to expanding language models by using 3-gram information from external web documents. In addition, we filter 3-gram entries on the basis of term frequency-inverse document frequency (TF-IDF) scores and the output of the Yahoo! web API to prevent the unnecessary addition of redundant or irrelevant 3-gram entries. In the experiments, we achieved an improvement of 0.71% in the word error rate and proved that the recognition accuracy can be improved by combining the proposed method and the traditional back-off smoothing technique without any costs being incurred in collecting additional text for training the model.
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