首页> 外文会议>European Conference on Speech Communication and Technology - EUROSPEECH 2003(INTERSPEECH 2003) vol.2; 20030901-04; Geneva(CH) >A SWITCHING LINEAR GAUSSIAN HIDDEN MARKOV MODEL AND ITS APPLICATION TO NONSTATIONARY NOISE COMPENSATION FOR ROBUST SPEECH RECOGNITION
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A SWITCHING LINEAR GAUSSIAN HIDDEN MARKOV MODEL AND ITS APPLICATION TO NONSTATIONARY NOISE COMPENSATION FOR ROBUST SPEECH RECOGNITION

机译:切换线性高斯隐马尔可夫模型及其在鲁棒语音识别的非平稳噪声补偿中的应用

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摘要

The Switching Linear Gaussian (SLG) Models was proposed recently for time series data with nonlinear dynamics. In this paper, we present a new modelling approach, called SLGHMM, that uses a hybrid Dynamic Bayesian Network of SLG models and Continuous Density HMMs (CDHMMs) to compensate for the nonsta-tionary distortion that may exist in speech utterance to be recognized. With this representation, the CDHMMs (each modelling mainly the linguistic information of a speech unit) and a set of linear Gaussian models (each modelling a kind of stationary distortion) can be jointly learnt from multi-condition training data. Such a SLGHMM is able to model approximately the distribution of speech corrupted by switching-condition distortions. The effectiveness of the proposed approach is confirmed in noisy speech recognition experiments on Aurora2 task.
机译:最近针对具有非线性动力学的时间序列数据提出了开关线性高斯(SLG)模型。在本文中,我们提出了一种称为SLGHMM的新建模方法,该方法使用SLG模型的动态贝叶斯网络和连续密度HMM(CDHMM)的混合来补偿可能在语音识别中出现的非静态失真。通过这种表示,可以从多条件训练数据中共同学习CDHMM(每个模型主要模拟一个语音单元的语言信息)和一组线性高斯模型(每个模型模拟一种固定的失真)。这种SLGHMM能够近似模拟由于切换条件失真而损坏的语音的分布。在Aurora2任务的嘈杂语音识别实验中证实了该方法的有效性。

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