Joint optimisation of tandem systems using Gaussian mixture density neural network discriminative sequence training

Chao Zhang, P. Woodland
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引用次数: 15

Abstract

The use of deep neural networks (DNNs) for feature extraction and Gaussian mixture models (GMMs) for acoustic modelling is often termed a tandem system configuration and can be viewed as a Gaussian mixture density neural network (MDNN). Compared to the direct use of DNN output probabilities in the acoustic model, the tandem approach suffers from a major weakness in that the feature extraction stage and the final acoustic models are optimised separately. This paper proposes a joint optimisation approach to all the stages of the tandem acoustic model by using MDNN discriminative sequence training. A set of techniques is used to improve the training performance and stability. Experiments using the multi-genre broadcast (MGB) English data show that the proposed method produced a 6% relative lower word error rate (WER) than that of a traditional discriminatively trained tandem system. The resulting jointly optimised tandem systems are comparable in WER to hybrid DNN systems optimised using discriminative sequence training with the same number of parameters.
基于高斯混合密度神经网络判别序列训练的串联系统联合优化
使用深度神经网络(dnn)进行特征提取,使用高斯混合模型(GMMs)进行声学建模,通常被称为串联系统配置,可以被视为高斯混合密度神经网络(MDNN)。与直接在声学模型中使用DNN输出概率相比,串联方法存在一个主要缺点,即特征提取阶段和最终声学模型是分开优化的。本文提出了一种利用MDNN判别序列训练对串联声学模型各阶段进行联合优化的方法。一套技术是用来提高训练性能和稳定性。使用多体裁广播(MGB)英语数据进行的实验表明,该方法产生的单词错误率(WER)比传统的判别训练串联系统低6%。由此产生的联合优化串联系统在WER上可与使用具有相同数量参数的判别序列训练优化的混合DNN系统相媲美。
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