Feature enhancement based on generative-discriminative hybrid approach with gmms and DNNS for noise robust speech recognition

M. Fujimoto, T. Nakatani
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引用次数: 8

Abstract

This paper presents a technique that combines generative and discriminative approaches with Gaussian mixture models (GMMs) and deep neural networks (DNNs) for model-based feature enhancement. Typical model-based feature enhancement employs a generative model approach. The enhanced features are obtained by using the weighted sum of linear transformations given by each Gaussian component contained in GMMs and corresponding posterior probabilities. The computation of posterior probabilities is a crucial factor for this kind of feature enhancement, and can also be formulated as the class discrimination problem of observed noisy features. The prominent discriminability of DNNs is a well-known solution to this discrimination problem. Therefore, we propose the use of DNNs for computing posterior probabilities. The proposed method incorporates the benefit of the discriminative approach into the generative approach. For AURORA2 task evaluations, the proposed method provided noticeable improvements compared with results obtained using the conventional generative model approach.
基于gmms和DNNS生成-判别混合方法的噪声鲁棒语音识别特征增强
本文提出了一种将生成和判别方法与高斯混合模型(GMMs)和深度神经网络(dnn)相结合的基于模型的特征增强技术。典型的基于模型的特征增强采用生成模型方法。增强特征是利用GMMs中包含的每个高斯分量所给出的线性变换的加权和及其后验概率得到的。后验概率的计算是这类特征增强的关键因素,也可以表述为观测到的噪声特征的分类问题。dnn突出的可判别性是解决这一判别问题的一个众所周知的方法。因此,我们建议使用深度神经网络计算后验概率。该方法将判别方法的优点融入到生成方法中。对于AURORA2任务评估,与传统生成模型方法相比,该方法有明显的改进。
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