Robust feature extraction from spectrum estimated using bispectrum for Isolated Word Recognition

N. S. Nehe, P. Ajmera, D. Jadhav, R. S. Holambe
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Abstract

Extraction of robust features from noisy speech signals is one of the challenging problems in Automatic Speech Recognition (ASR). For Gaussian process, its bispectrum and all higher order spectra are identically zero, which means that bispectrum removes the additive white Gaussian noise while preserving the magnitude and phase information of original signal. Using this bispectrum property, spectrum of original signal can be recovered from its noisy version. Robust Mel Frequency Cepstral Coefficients (MFCC) are extracted from the estimated spectral magnitude (denoted as Bispectral-MFCC (BMFCC)). The effectiveness of BMFCC has been tested on TI-46 isolated word database in noisy (additive white Gaussian) environment. The experimental results show the superiority of the proposed technique over conventional methods for Isolated Word Recognition (IWR).
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孤立词识别中使用双谱估计的鲁棒特征提取
从噪声语音信号中提取鲁棒特征是自动语音识别(ASR)的难点之一。对于高斯过程,它的双谱和所有高阶谱都等于零,这意味着双谱在保留原始信号的幅值和相位信息的同时去除了加性高斯白噪声。利用这种双谱特性,可以从有噪声的信号中恢复原始信号的频谱。从估计的谱幅值中提取鲁棒Mel频率倒谱系数(MFCC)(记为双谱-MFCC (BMFCC))。在TI-46孤立词数据库中测试了BMFCC在噪声(加性白高斯)环境下的有效性。实验结果表明,该方法优于传统的孤立词识别方法。
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