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Unsupervised training of subspace gaussian mixture models for conversational telephone speech recognition

机译:用于对话电话语音识别的子空间高斯混合模型的无监督训练

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This paper presents our preliminary works on exploring unsupervised training of subspace gaussian mixture models for under-resourced CTS recognition task. The subspace model yields better performance than conventional GMM model, particularly in small or middle-sized training set. As an effective way to save human efforts, unsupervised learning is often applied to automatically transcribe a large amount of speech archives. The additional auto-transcribed data may help to improve model accuracy. In this paper, experiments are carried out on two publicly available English conversational telephone speech corpora. Both GMM and SGMM model in combination with unsupervised learning are examined and compared in this paper.
机译:本文介绍了我们的初步工作,旨在探索用于资源不足的CTS识别任务的子空间高斯混合模型的无监督训练。子空间模型比常规GMM模型产生更好的性能,尤其是在中小型训练集中。作为节省人工的一种有效方法,无监督学习通常用于自动转录大量语音档案。额外的自动转录数据可能有助于提高模型准确性。本文对两个公开可用的英语会话电话语音语料库进行了实验。本文研究并比较了GMM和SGMM模型与无监督学习的结合。

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