Non-negative subspace projection during conventional MFCC feature extraction for noise robust speech recognition

D. S. Pavan Kumar, Raghavendra Bilgi, S. Umesh
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引用次数: 2

Abstract

An additional feature processing algorithm using Non-negative Matrix Factorization (NMF) is proposed to be included during the conventional extraction of Mel-frequency cepstral coefficients (MFCC) for achieving noise robustness in HMM based speech recognition. The proposed approach reconstructs log-Mel filterbank outputs of speech data from a set of building blocks that form the bases of a speech subspace. The bases are learned using the standard NMF of training data. A variation of learning the bases is proposed, which uses histogram equalized activation coefficients during training, to achieve noise robustness. The proposed methods give up to 5.96% absolute improvement in recognition accuracy on Aurora-2 task over a baseline with standard MFCCs, and up to 13.69% improvement when combined with other feature normalization techniques like Histogram Equalization (HEQ) and Heteroscedastic Linear Discriminant Analysis (HLDA).
基于噪声鲁棒性语音识别的传统MFCC特征提取中的非负子空间投影
在传统的Mel-frequency倒谱系数(MFCC)提取过程中,提出了一种附加的非负矩阵分解(NMF)特征处理算法,以实现HMM语音识别的噪声鲁棒性。该方法从构成语音子空间基的一组构建块中重构语音数据的log-Mel滤波器组输出。使用训练数据的标准NMF学习基。提出了一种学习基的方法,在训练过程中使用直方图均衡化激活系数来实现噪声的鲁棒性。与标准mfccc相比,该方法在极光-2任务上的识别准确率绝对提高了5.96%,与直方图均衡化(HEQ)和异方差线性判别分析(HLDA)等其他特征归一化技术结合使用时,准确率提高了13.69%。
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