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Articulatory #x0394; and #x0394;#x0394; parameters effect on HMM-based classifier for ASR

机译:铰接性δ和Δδ参数对ASR的基于HMM的分类器的影响

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This paper describes an effect of articulatory Δ and ΔΔ parameters on automatic speech recognition (ASR). Articulatory features (AFs) or distinctive phonetic features (DPFs)-based system shows its superiority in performances over acoustic features based ASR. These performances can be further improved by incorporating articulatory dynamic parameters into it. In this paper, we have proposed such a phoneme recognition system that comprises two stages: (i) DPFs extraction using a multilayer neural network (MLN) from acoustic features, local features (LFs) and (ii) incorporation of dynamic parameters (Δ and ΔΔ) into a hidden Markov model (HMM) based classifier for more accurate performances. From the experiments on Japanese Newspaper Article Sentences (JNAS), it is observed that the proposed method provides a higher phoneme correct rate and phoneme accuracy over the method that does not incorporate dynamic articulatory parameters. Moreover, it reduces mixture components in HMM for obtaining a higher performance.
机译:本文描述的自动语音识别(ASR)关节Δ和ΔΔ参数的效果。关节功能(AFS)或独特的语音特点器(DPF)的系统显示了其在性能优于声学特征基于ASR。这些性能可以通过将关节的动态参数到它被进一步改善。在本文中,我们提出,使得包括两个阶段的音素识别系统:使用(i)的DPF提取一个多层神经网络(MLN)从声学特征,局部特征(LFS)和(ii)动态参数的掺入(Δ和基于HMMΔΔ)成隐马尔可夫模型()分类更精确的表演。从日本报纸文章的句子实验(JNAS),据观察,该方法是在不包含动态关节参数的方法提供了更高的音素正确率和音素正确。此外,它降低了混合物组分在HMM用于获得更高的性能。

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