首页> 外文会议>Workshop on Automatic Speech Recognition and Understanding >COMPACT ACOUSTIC MODELING BASED ON ACOUSTIC MANIFOLD USING A MIXTURE OF FACTOR ANALYZERS
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COMPACT ACOUSTIC MODELING BASED ON ACOUSTIC MANIFOLD USING A MIXTURE OF FACTOR ANALYZERS

机译:使用因子分析仪混合的基于声歧管的紧凑型声学建模

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摘要

A compact acoustic model for speech recognition is proposed based on nonlinear manifold modeling of the acoustic feature space. Acoustic features of the speech signal is assumed to form a low-dimensional manifold, which is modeled by a mixture of factor analyzers. Each factor analyzer describes a local area of the manifold using a low-dimensional linear model. For an HMM-based speech recognition system, observations of a particular state are constrained to be located on part of the manifold, which may cover several factor analyzers. For each tied-state, a sparse weight vector is obtained through an iteration shrinkage algorithm, in which the sparseness is determined automatically by the training data. For each nonzero component of the weight vector, a low-dimensional factor is estimated for the corresponding factor model according to the maximum a posteriori (MAP) criterion, resulting in a compact state model. Experimental results show that compared with the conventional HMM-GMM system and the SGMM system, the new method not only contains fewer parameters, but also yields better recognition results.
机译:基于声学特征空间的非线性歧管建模,提出了一种用于语音识别的紧凑声学模型。假设语音信号的声学特征形成低维歧管,其由因子分析仪的混合物建模。每个因子分析器使用低维线性模型描述歧管的局部区域。对于基于赫姆的语音识别系统,特定状态的观察被限制为位于歧管的一部分上,其可以覆盖几因素分析仪。对于每个绑定状态,通过迭代收缩算法获得稀疏的重量载体,其中训练数据自动确定稀疏性。对于重量向量的每个非零组件,根据后验(MAP)标准,估计对应因子模型的低维因素,导致紧凑的状态模型。实验结果表明,与传统的HMM-GMM系统和SGMM系统相比,新方法不仅包含更少的参数,而且还产生更好的识别结果。

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