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Active learning for the prediction of prosodic phrase boundaries in Chinese speech synthesis systems using conditional random fields

机译:基于条件随机场的主动学习预测汉语语音合成系统中韵律短语边界

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Prosodic structure contributes to speech production and comprehension. One of the crucial problems in achieving natural-sounding synthesized speech is the prediction of appropriate phrase boundaries. Unfortunately, obtaining human annotations of prosodic phrases to train a supervised system can be laborious and costly. Active learning has been proven effective in reducing labeling efforts for supervised learning. This study explores active learning techniques with the objective to reduce the amount of human-annotated data needed to attain a given level of performance. It presents an approach based on active learning to predict the Chinese prosodic phrase boundaries in unrestricted Chinese text. Experiments show that for most of the cases considered, the active selection strategies for labeling the prosodic phrase boundaries are as good as or exceed the performance of random data selection.
机译:韵律结构有助于语音的产生和理解。实现自然听起来的合成语音的关键问题之一是适当短语边界的预测。不幸的是,获得人类对韵律短语的注释以训练受监督的系统可能是费力且昂贵的。主动学习已被证明有效地减少了监督学习的标签工作。这项研究探索了主动学习技术,旨在减少达到给定性能水平所需的人工注释数据量。它提出了一种基于主动学习的方法来预测无限制中文文本中的汉语韵律短语边界。实验表明,对于大多数考虑的情况,用于标记韵律短语边界的主动选择策略的性能与随机数据选择的性能一样好,甚至超过随机数据选择的性能。

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