连接元音自动识别的随机判别结构分析

Y. Qiao, S. Asakawa, N. Minematsu
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引用次数: 19

摘要

语音的通用结构[1,2]被证明对特征空间的变换是不变的,从而为语音识别提供了一个鲁棒的表示。使用结构表示的困难之一是由于它的高维性。这不仅增加了计算成本,而且容易遭受维数诅咒[3,4]。本文引入随机判别结构分析(RDSA)来解决这一问题。基于对结构特征高度相关和冗余的观察,RDSA将随机特征选择和判别分析相结合,从输入结构中计算出多个低维和判别表示。然后为每个表示训练一个单独的分类器,并将每个分类器的输出集成以做出最终的分类决策。对日语元音连音的实验结果表明,基于8个说话人的训练数据,我们的方法达到了98.3%的识别率,高于4130个说话人训练的hmm识别率(97.4%)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Random discriminant structure analysis for automatic recognition of connected vowels
The universal structure of speech [1, 2], proves to be invariant to transformations in feature space, and thus provides a robust representation for speech recognition. One of the difficulties of using structure representation is due to its high dimensionality. This not only increases computational cost but also easily suffers from the curse of dimensionality [3, 4]. In this paper, we introduce random discriminant structure analysis (RDSA) to deal with this problem. Based on the observation that structural features are highly correlated and include large redundancy, the RDSA combines random feature selection and discriminative analysis to calculate several low dimensional and discriminative representations from an input structure. Then an individual classifier is trained for each representation and the outputs of each classifier are integrated for the final classification decision. Experimental results on connected Japanese vowel utterances show that our approach achieves a recognition rate of 98.3% based on the training data of 8 speakers, which is higher than that (97.4%) of HMMs trained with the utterances of 4,130 speakers.
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