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Manifold Learning-Based Phoneme Recognition

机译:基于流形学习的音素识别

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摘要

Recently manifold learning algorithms researches have been motivated by the idea of modelling high dimensional data using approximate low dimensional submanifold of the original space. In this paper, two manifold learning algorithms, locally linear embedding (LLE) and isometric feature mapping (Isomap), are proposed to apply to speech phoneme feature data extracted from TIMIT corpus in an effort to perform nonlinear dimensionality reduction for yielding low dimensional features capable of discriminating between phonemes. Compared with these manifold learning algorithms, the traditional principal component analysis (PCA) is also used to perform linear dimensionality reduction within speech phoneme feature data. The resulting features are evaluated in support vector machines (SVM)-based phoneme recognition experiments. Experiment results indicate that manifold learning algorithms are effective for identifying phoneme using low dimensional phoneme feature data obtained from the original high dimensional phoneme feature space.
机译:最近,歧管学习算法研究已经通过使用近似的原始空间的低维数据建模高维数据的想法。在本文中,提出了两个歧管学习算法,局部线性嵌入(LLE)和等距特征映射(ISOMAP),以施加从次幂语料库中提取的语音音素特征数据,以便为产生低维特征来执行非线性维度降低辨别音素之间。与这些歧管学习算法相比,传统的主成分分析(PCA)还用于在语音音素特征数据中执行线性维度降低。基于支持向量机(SVM)的音素识别实验中评估所得特征。实验结果表明,歧管学习算法对于使用从原始高维素音素特征空间获得的低维音录特征数据识别音素的有效。

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