VOWEL DURATION MEASUREMENT USING DEEP NEURAL NETWORKS.

Yossi Adi, Joseph Keshet, Matthew Goldrick
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Abstract

Vowel durations are most often utilized in studies addressing specific issues in phonetics. Thus far this has been hampered by a reliance on subjective, labor-intensive manual annotation. Our goal is to build an algorithm for automatic accurate measurement of vowel duration, where the input to the algorithm is a speech segment contains one vowel preceded and followed by consonants (CVC). Our algorithm is based on a deep neural network trained at the frame level on manually annotated data from a phonetic study. Specifically, we try two deep-network architectures: convolutional neural network (CNN), and deep belief network (DBN), and compare their accuracy to an HMM-based forced aligner. Results suggest that CNN is better than DBN, and both CNN and HMM-based forced aligner are comparable in their results, but neither of them yielded the same predictions as models fit to manually annotated data.

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利用深度神经网络测量元音持续时间
元音持续时间最常被用于解决语音学特定问题的研究中。迄今为止,这一直受到依赖主观、劳动密集型人工标注的阻碍。我们的目标是建立一种自动精确测量元音持续时间的算法,该算法的输入是包含一个元音在前和辅音在后的语音片段(CVC)。我们的算法基于一个深度神经网络,该网络在语音研究的人工标注数据基础上进行帧级训练。具体来说,我们尝试了两种深度网络架构:卷积神经网络(CNN)和深度信念网络(DBN),并将它们的准确性与基于 HMM 的强制对齐器进行了比较。结果表明,CNN 优于 DBN,CNN 和基于 HMM 的强制对齐器在结果上不相上下,但两者的预测结果都不如适合人工标注数据的模型。
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