基于小波倒谱系数的神经网络语音识别

T. Adam, M. Salam, T. Gunawan
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引用次数: 10

摘要

在语音识别中,传统的倒谱分析方法常被用作特征提取的一部分。而倒谱分析方法在其计算过程中使用了离散傅立叶变换(DFT)。DFT使用固定帧分辨率来分析信号的帧,因此它将导致不能准确分析局部事件的分析。本文研究了用离散小波变换(DWT)计算倒谱系数的方法。实验了两种不同分解水平的小波类型,得到倒谱,称为小波倒谱系数。为了测试WCC语音识别,进行了识别26个英文字母的任务。在相同的特征维数下,WCC在依赖说话人任务和独立说话人任务下的识别率都比MFCC高出约20%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Wavelet based Cepstral Coefficients for neural network speech recognition
Traditional cepstral analysis methods are often used as part of feature extraction process in speech recognition. However the cepstral analysis method uses the Discrete Fourier Transform (DFT) in one of its computation process. The DFT uses fixed frame resolution to analyze frames of signal thus it will result in an analysis that would not accurately analyze localized events. This paper investigates the use of the Discrete Wavelet Transform (DWT) for calculating the cepstrum coefficients. Two wavelet types with different decomposition level are experimented to yield the cepstrum which is called the Wavelet Cepstral Coefficient (WCC). To test the WCC speech recognizing task of recognizing 26 English alphabets were conducted. Under same number of feature dimension the WCC outperformed the MFCC with about 20% in terms of recognition rate under both speaker dependent and speaker independent task.
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