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Active Learning Using Phone-Error Distribution for Speech Modeling

机译:使用电话错误分布进行语音建模的主动学习

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摘要

We propose an active learning framework for speech recognition that reduces the amount of data required for acoustic modeling. This framework consists of two steps. We first obtain a phone-error distribution using an acoustic model estimated from transcribed speech data. Then, from a text corpus we select a sentence whose phone-occurrence distribution is close to the phone-error distribution and collect its speech data. We repeat this process to increase the amount of transcribed speech data. We applied this framework to speaker adaptation and acoustic model training. Our evaluation results showed that it significantly reduced the amount of transcribed data while maintaining the same level of accuracy.
机译:我们提出了一种用于语音识别的主动学习框架,可以减少声学建模所需的数据量。该框架包括两个步骤。我们首先使用根据转录语音数据估算的声学模型获得电话错误分布。然后,从文本语料库中选择一个句子,该句子的电话出现分布接近电话错误分布,并收集其语音数据。我们重复此过程以增加转录语音数据的数量。我们将此框架应用于说话人适应和声学模型训练。我们的评估结果表明,它在保持相同水平的准确性的同时,显着减少了转录数据的数量。

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