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Combining Information Sources for Confidence Estimation with CRF Models

机译:将可信度估计的信息源与CRF模型相结合

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Obtaining accurate confidence measures for automatic speech recognition (ASR) transcriptions is an important task which stands to benefit from the use of multiple information sources. This paper investigates the application of conditional random field (CRF) models as a principled technique for combining multiple features from such sources. A novel method for combining suitably defined features is presented, allowing for confidence annotation using lattice-based features of hypotheses other than the lattice 1-best. The resulting framework is applied to different stages of a state-of-the-art large vocabulary speech recognition pipeline, and consistent improvements are shown over a sophisticated baseline system.
机译:获得自动语音识别(ASR)转录的准确置信度是一项重要任务,它将受益于多种信息源的使用。本文研究了条件随机场(CRF)模型作为组合这些来源的多个特征的原理技术的应用。提出了一种用于组合适当定义的特征的新颖方法,该方法允许使用除格网1-best之外的其他假设的基于格架的特征进行置信度注释。最终的框架应用于最先进的大词汇量语音识别管道的不同阶段,并且在复杂的基准系统上显示出一致的改进。

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