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Representation Learning for Discovering Phonemic Tone Contours

机译:表示学习以发现音调轮廓

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Tone is a prosodic feature used to distinguish words in many languages, some of which are endangered and scarcely documented. In this work, we use unsupervised representation learning to identify probable clusters of syllables that share the same phonemic tone. Our method extracts the pitch for each syllable, then trains a convolutional autoencoder to learn a low-dimensional representation for each contour. We then apply the mean shift algorithm to cluster tones in high-density regions of the latent space. Furthermore, by feeding the centers of each cluster into the decoder, we produce a prototypical contour that represents each cluster. We apply this method to spoken multi-syllable words in Mandarin Chinese and Cantonese and evaluate how closely our clusters match the ground truth tone categories. Finally, we discuss some difficulties with our approach, including contextual tone variation and allophony effects.
机译:音调是一种韵律特征,用于区分多种语言中的单词,其中一些语言濒临灭绝,并且几乎没有文献记载。在这项工作中,我们使用无监督表示学习来识别共享相同音素音节的音节的可能簇。我们的方法提取每个音节的音高,然后训练卷积自动编码器以学习每个轮廓的低维表示。然后,我们将均值平移算法应用于潜在空间高密度区域中的群集音调。此外,通过将每个群集的中心馈入解码器,我们生成了代表每个群集的原型轮廓。我们将这种方法应用于普通话和广东话中的多音节单词,并评估我们的类群与地面真实语调类别的匹配程度。最后,我们讨论了使用该方法的一些困难,包括上下文语调变化和同音异义效果。

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