M. Hwang, Gang Peng, Wen Wang, Arlo Faria, A. Heidel, Mari Ostendorf
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引用次数: 28
Abstract
We describe a highly accurate large-vocabulary continuous Mandarin speech recognizer, a collaborative effort among four research organizations. Particularly, we build two acoustic models (AMs) with significant differences but similar accuracy for the purposes of cross adaptation and system combination. This paper elaborates on the main differences between the two systems, where one recognizer incorporates a discriminatively trained feature while the other utilizes a discriminative feature transformation. Additionally we present an improved acoustic segmentation algorithm and topic-based language model (LM) adaptation. Coupled with increased acoustic training data, we reduced the character error rate (CER) of the DARPA GALE 2006 evaluation set to 15.3% from 18.4%.
我们描述了一个高度精确的大词汇连续普通话语音识别器,这是四个研究机构的合作成果。特别地,我们建立了两种具有显著差异但精度相近的声学模型(AMs),用于交叉适应和系统组合。本文详细阐述了两个系统之间的主要区别,其中一个识别器包含判别训练特征,而另一个识别器使用判别特征转换。此外,我们提出了一种改进的声学分割算法和基于主题的语言模型(LM)自适应。再加上声学训练数据的增加,我们将DARPA GALE 2006评估集的字符错误率(CER)从18.4%降低到15.3%。