弱监督构音障碍不变特征在口语理解中的应用

Jinzi Qi, H. V. hamme
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引用次数: 1

摘要

训练数据的缺乏和言语障碍中说话人的巨大变化导致口语理解系统的准确性和说话人泛化性差。通过对语音特征的研究,我们致力于在有限的困难数据下提高模型的泛化能力。无监督训练的分解层次变分自编码器(FHVAE)在分离内容和说话人表示方面显示出其优势。早期的研究表明,构音障碍在两个特征向量中都存在。在这里,我们添加对抗性训练来弥合控制和困难语音数据域之间的差距。我们使用弱监督提取困难和说话人不变性特征。提取的特征在口语理解任务中进行评估,与基本的FHVAE模型或普通滤波器组的特征相比,对具有更严重构音障碍的未见的说话者产生更高的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Weak-Supervised Dysarthria-Invariant Features for Spoken Language Understanding Using an Fhvae and Adversarial Training
The scarcity of training data and the large speaker variation in dysarthric speech lead to poor accuracy and poor speaker generalization of spoken language understanding systems for dysarthric speech. Through work on the speech features, we focus on improving the model generalization ability with limited dysarthric data. Factorized Hierarchical Variational Auto-Encoders (FHVAE) trained unsupervisedly have shown their advantage in disentangling content and speaker representations. Earlier work showed that the dysarthria shows in both feature vectors. Here, we add adversarial training to bridge the gap between the control and dysarthric speech data domains. We extract dysarthric and speaker invariant features using weak supervision. The extracted features are evaluated on a Spoken Language Understanding task and yield a higher accuracy on unseen speakers with more severe dysarthria compared to features from the basic FHVAE model or plain filterbanks.
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