Acoustic modeling for under-resourced languages based on vectorial HMM-states representation using Subspace Gaussian Mixture Models

Mohamed Bouallegue, Emmanuel Ferreira, D. Matrouf, G. Linarès, Maria Goudi, P. Nocera
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引用次数: 2

Abstract

This paper explores a novel method for context-dependent models in automatic speech recognition (ASR), in the context of under-resourced languages. We present a simple way to realize a tying states approach, based on a new vectorial representation of the HMM states. This vectorial representation is considered as a vector of a low number of parameters obtained by the Subspace Gaussian Mixture Models paradigm (SGMM). The proposed method does not require phonetic knowledge or a large amount of data, which represent the major problems of acoustic modeling for under-resourced languages. This paper shows how this representation can be obtained and used for tying states. Our experiments, applied on Vietnamese, show that this approach achieves a stable gain compared to the classical approach which is based on decision trees. Furthermore, this method appears to be portable to other languages, as shown in the preliminary study conducted on Berber.
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基于子空间高斯混合模型的向量hmm状态表示的资源不足语言声学建模
本文探讨了在资源不足的语言环境下,自动语音识别(ASR)中上下文依赖模型的新方法。我们提出了一种基于HMM状态的新向量表示来实现状态关联方法的简单方法。这种向量表示被认为是由子空间高斯混合模型范式(SGMM)获得的低数量参数的向量。该方法不需要语音知识或大量数据,这是资源不足语言声学建模的主要问题。本文展示了如何获得这种表示并将其用于连接状态。我们在越南进行的实验表明,与基于决策树的经典方法相比,该方法获得了稳定的增益。此外,这种方法似乎可以移植到其他语言,正如对柏柏尔语进行的初步研究所显示的那样。
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