自动语音识别中口音适应的主动学习

Udhyakumar Nallasamy, Florian Metze, Tanja Schultz
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引用次数: 21

摘要

我们在口音适应的背景下对语音识别进行了主动学习实验。我们通过从一个大的、未转录的和多口音的语料库中选择一个相对较小的、匹配的话语子集来适应目标口音的源识别器,供人类转录。传统上,语音识别中的主动学习依赖于基于不确定性的采样来选择最具信息量的数据进行人工标记。这种方法在数据选择过程中没有明确的相关性标准,而相关性标准对于从具有不同口音的广泛说话者的数据集中选择与目标口音匹配的话语至关重要。我们制定了一个基于交叉熵的相关性度量来补充基于不确定性的主动学习采样,以帮助口音适应。我们在阿拉伯语和英语口音的两种不同设置上评估了算法,并表明我们的方法优于传统的数据选择。我们对结果进行了分析,以显示我们的方法在寻找最相关的话语子集以改进目标口音的语音识别器方面的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Active learning for accent adaptation in Automatic Speech Recognition
We experiment with active learning for speech recognition in the context of accent adaptation. We adapt a source recognizer on the target accent by selecting a relatively small, matched subset of utterances from a large, untranscribed and multi-accented corpus for human transcription. Traditionally, active learning in speech recognition has relied on uncertainty based sampling to choose the most informative data for manual labeling. Such an approach doesn't include explicit relevance criterion during data selection, which is crucial for choosing utterances to match the target accent, from datasets with wide-ranging speakers of different accents. We formulate a cross-entropy based relevance measure to complement uncertainty based sampling for active learning to aid accent adaptation. We evaluate the algorithm on two different setups for Arabic and English accents and show that our approach performs favorably to conventional data selection. We analyze the results to show the effectiveness of our approach in finding the most relevant subset of utterances for improving the speech recognizer on the target accent.
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