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A Correlational Discriminant Approach to Feature Extraction for Robust Speech Recognition

机译:强制性语音识别特征提取的相关判别方法

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A nonlinear discriminant analysis based approach to feature space dimensionality reduction in noise robust automatic speech recognition (ASR) is proposed. It utilizes a correlation based distance measure instead of the conventional Euclidean distance. The use of this 'correlation preserving discriminant analysis, (CPDA) procedure is motivated by evidence suggesting that correlation based cepstrum distance measures can be more robust than Euclidean based distances when speech is corrupted by noise. The performance of CPDA is evaluated in terms of the word error rate obtained by using CPDA derived features on a speech in.noise task, and is compared to a number of Euclidean distance based approaches to feature space transformations, namely linear discriminant analysis (LDA), locality preserving projections (LPP), and locality preserving discriminant analysis (LPDA).
机译:提出了一种基于非线性判别分析,其具有噪声鲁棒自动语音识别(ASR)的特征空间维度降低的方法。它利用基于相关的距离测量而不是传统的欧几里德距离。使用这种“相关性保持判别分析”(CPDA)程序是通过证据激励的,提示基于相关的克斯坦距离测量比噪声损坏时的距离基于欧几里德的距离更加稳健。 CPDA的性能是根据使用CPDA衍生特征在语音上的语音中获得的字错误率的误差评估。与特征空间变换的许多基于欧几里德距离的方法进行比较,即线性判别分析(LDA) ,定位保留投影(LPP)和局部性保持判别分析(LPDA)。

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