Iterative training of a DPGMM-HMM acoustic unit recognizer in a zero resource scenario

Michael Heck, S. Sakti, Satoshi Nakamura
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引用次数: 13

Abstract

In this paper we propose a framework for building a full-fledged acoustic unit recognizer in a zero resource setting, i.e., without any provided labels. For that, we combine an iterative Dirichlet process Gaussian mixture model (DPGMM) clustering framework with a standard pipeline for supervised GMM-HMM acoustic model (AM) and n-gram language model (LM) training, enhanced by a scheme for iterative model re-training. We use the DPGMM to cluster feature vectors into a dynamically sized set of acoustic units. The frame based class labels serve as transcriptions of the audio data and are used as input to the AM and LM training pipeline. We show that iterative unsupervised model re-training of this DPGMM-HMM acoustic unit recognizer improves performance according to an ABX sound class discriminability task based evaluation. Our results show that the learned models generalize well and that sound class discriminability benefits from contextual information introduced by the language model. Our systems are competitive with supervisedly trained phone recognizers, and can beat the baseline set by DPGMM clustering.
零资源情况下DPGMM-HMM声单元识别器的迭代训练
在本文中,我们提出了一个框架,用于在零资源设置中构建一个成熟的声学单元识别器,即没有任何提供的标签。为此,我们将迭代Dirichlet过程高斯混合模型(DPGMM)聚类框架与标准管道相结合,用于监督GMM-HMM声学模型(AM)和n-gram语言模型(LM)训练,并通过迭代模型再训练方案进行增强。我们使用DPGMM将特征向量聚类成一组动态大小的声学单元。基于帧的类标签作为音频数据的转录,并用作AM和LM训练管道的输入。我们证明了迭代无监督模型再训练这种DPGMM-HMM声学单元识别器提高性能根据ABX声音类判别任务的评估。我们的研究结果表明,学习模型具有良好的泛化能力,并且语言模型引入的上下文信息有利于声音类的区分。我们的系统可以与经过监督训练的手机识别器相媲美,并且可以超过DPGMM聚类设置的基线。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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