从未转录语音中提取瓶颈特征和类词对进行特征表示

Yougen Yuan, C. Leung, Lei Xie, Hongjie Chen, B. Ma, Haizhou Li
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引用次数: 21

摘要

我们提出了一个框架,在没有人工转录可用的情况下学习帧级语音表示。我们的框架是基于使用瓶颈特征(bnf)的两两学习。从瓶颈型多语言深度神经网络(DNN)中提取初始帧级特征,并使用无监督类音素标签进行训练。使用初始特征在未转录语音中发现类词对,并对每个类词语音对执行帧对齐。将匹配的帧对作为输入输出,训练另一个具有均方误差损失函数的深度神经网络。最终的帧级特征是从基于mse的深度神经网络的内部隐藏层中提取的。我们的两两学习特征表示在ZeroSpeech 2017挑战中进行了评估。实验表明,在10s和120s测试条件下,成对学习提高了音素辨别能力。我们发现,在进行两两学习时,使用bf作为初始特征是很重要的。通过从总机语料库中获取更多的词对并进行人工转录,可以在数据不匹配的情况下进一步提高评价数据中三种语言的音素辨别能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Extracting bottleneck features and word-like pairs from untranscribed speech for feature representation
We propose a framework to learn a frame-level speech representation in a scenario where no manual transcription is available. Our framework is based on pairwise learning using bottleneck features (BNFs). Initial frame-level features are extracted from a bottleneck-shaped multilingual deep neural network (DNN) which is trained with unsupervised phoneme-like labels. Word-like pairs are discovered in the untranscribed speech using the initial features, and frame alignment is performed on each word-like speech pair. The matching frame pairs are used as input-output to train another DNN with the mean square error (MSE) loss function. The final frame-level features are extracted from an internal hidden layer of MSE-based DNN. Our pairwise learned feature representation is evaluated on the ZeroSpeech 2017 challenge. The experiments show that pairwise learning improves phoneme discrimination in 10s and 120s test conditions. We find that it is important to use BNFs as initial features when pairwise learning is performed. With more word pairs obtained from the Switchboard corpus and its manual transcription, the phoneme discrimination of three languages in the evaluation data can further be improved despite data mismatch.
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