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Beam search pruning in speech recognition using a posterior probability-based confidence measure

机译:使用基于后验概率的置信度度量进行语音识别中的波束搜索修剪

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摘要

In this work we propose the early incorporation of confidence information in the decoding process of large vocabulary speech recognition. A confidence based pruning technique is used to guide the search to the most promising paths. We introduce a posterior probability-based confidence measure that can be estimated efficiently and synchronously from the available information during the search process. The accuracy of this measure is enhanced using a discriminative training technique whose objective is to maximize the discrimination between the correct and incorrect decoding hypotheses. For this purpose, phone-level confidence scores are combined to derive word level scores. Highly compact models that exhibit minimal degradation in performance are introduced. Experimental results using large speech corpora show that the proposed method improves both the decoding accuracy and the decoding time when compared to a baseline recognition system that uses a conventional search approach. Furthermore, the introduced confidence measures are well-suited for cross-task portability.
机译:在这项工作中,我们建议在大词汇量语音识别的解码过程中尽早加入置信度信息。基于信任度的修剪技术用于将搜索引导到最有希望的路径。我们介绍了一种基于后验概率的置信度度量,可以在搜索过程中从可用信息中高效,同步地对其进行估计。使用判别训练技术可以提高此措施的准确性,该技术的目的是最大程度地区分正确和不正确的解码假设。为此,将电话级别的置信度分数相结合以得出单词级别的分数。引入了具有最小性能下降的高度紧凑的模型。使用大型语音语料库的实验结果表明,与使用常规搜索方法的基线识别系统相比,该方法可提高解码精度和解码时间。此外,引入的置信度度量非常适合跨任务可移植性。

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