快速说话人依赖ASR的邻居选择与适应

Udhyakumar Nallasamy, Mark C. Fuhs, M. Woszczyna, Florian Metze, Tanja Schultz
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引用次数: 3

摘要

与独立说话人(SI)系统相比,依赖说话人(SD)的ASR系统具有明显较低的单词错误率(WER)。然而,SD系统需要从目标说话者那里获得足够的训练数据,这在短时间内收集是不切实际的。我们提出了一种只用几分钟说话人数据训练SD模型的技术。我们通过从声学上接近目标说话者的现有说话者数据库中选择邻居来弥补缺乏足够的说话者特定数据。这些邻居提供了充足的训练数据,用于调整SI模型,以获得具有显著较低WER的新扬声器的初始SD模型。我们在大规模医学转录任务中评估了各种邻居选择算法,并报告了仅使用5分钟特定讲话者数据就显著降低了WER。我们对邻居选择中的性别、口音等因素进行了详细的分析。最后,我们研究了在判别目标函数背景下的邻居选择和适应。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neighbour selection and adaptation for rapid speaker-dependent ASR
Speaker dependent (SD) ASR systems have significantly lower word error rates (WER) compared to speaker independent (SI) systems. However, SD systems require sufficient training data from the target speaker, which is impractical to collect in a short time. We present a technique for training SD models using just few minutes of speaker's data. We compensate for the lack of adequate speaker-specific data by selecting neighbours from a database of existing speakers who are acoustically close to the target speaker. These neighbours provide ample training data, which is used to adapt the SI model to obtain an initial SD model for the new speaker with significantly lower WER. We evaluate various neighbour selection algorithms on a large-scale medical transcription task and report significant reduction in WER using only 5 mins of speaker-specific data. We conduct a detailed analysis of various factors such as gender and accent in the neighbour selection. Finally, we study neighbour selection and adaptation in the context of discriminative objective functions.
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