Leveraging native language speech for accent identification using deep Siamese networks

Aditya Siddhant, P. Jyothi, Sriram Ganapathy
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引用次数: 7

Abstract

The problem of automatic accent identification is important for several applications like speaker profiling and recognition as well as for improving speech recognition systems. The accented nature of speech can be primarily attributed to the influence of the speaker's native language on the given speech recording. In this paper, we propose a novel accent identification system whose training exploits speech in native languages along with the accented speech. Specifically, we develop a deep Siamese network based model which learns the association between accented speech recordings and the native language speech recordings. The Siamese networks are trained with i-vector features extracted from the speech recordings using either an unsupervised Gaussian mixture model (GMM) or a supervised deep neural network (DNN) model. We perform several accent identification experiments using the CSLU Foreign Accented English (FAE) corpus. In these experiments, our proposed approach using deep Siamese networks yield significant relative performance improvements of 15.4% on a 10-class accent identification task, over a baseline DNN-based classification system that uses GMM i-vectors. Furthermore, we present a detailed error analysis of the proposed accent identification system.
利用深层暹罗网络利用母语语音进行口音识别
自动口音识别问题对于说话人分析和识别以及改进语音识别系统等几个应用都很重要。语音的重音本质可以主要归因于说话者的母语对给定语音记录的影响。在本文中,我们提出了一种新的口音识别系统,该系统的训练利用了母语语音和重音语音。具体来说,我们开发了一个基于深度连体网络的模型,该模型学习重音语音记录与母语语音记录之间的关联。Siamese网络使用无监督高斯混合模型(GMM)或监督深度神经网络(DNN)模型从语音记录中提取的i向量特征进行训练。我们使用CSLU外国口音英语(FAE)语料库进行了几个口音识别实验。在这些实验中,我们提出的使用深度连体网络的方法在10类口音识别任务上的相对性能提高了15.4%,超过了使用GMM i-vectors的基于dnn的基线分类系统。此外,我们还对所提出的口音识别系统进行了详细的误差分析。
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