Unsupervised adaptation with domain separation networks for robust speech recognition

Zhong Meng, Zhuo Chen, V. Mazalov, Jinyu Li, Y. Gong
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引用次数: 53

Abstract

Unsupervised domain adaptation of speech signal aims at adapting a well-trained source-domain acoustic model to the unlabeled data from target domain. This can be achieved by adversarial training of deep neural network (DNN) acoustic models to learn an intermediate deep representation that is both senone-discriminative and domain-invariant. Specifically, the DNN is trained to jointly optimize the primary task of senone classification and the secondary task of domain classification with adversarial objective functions. In this work, instead of only focusing on learning a domain-invariant feature (i.e. the shared component between domains), we also characterize the difference between the source and target domain distributions by explicitly modeling the private component of each domain through a private component extractor DNN. The private component is trained to be orthogonal with the shared component and thus implicitly increases the degree of domain-invariance of the shared component. A reconstructor DNN is used to reconstruct the original speech feature from the private and shared components as a regularization. This domain separation framework is applied to the unsupervised environment adaptation task and achieved 11.08% relative WER reduction from the gradient reversal layer training, a representative adversarial training method, for automatic speech recognition on CHiME-3 dataset.
基于域分离网络的无监督自适应鲁棒语音识别
语音信号的无监督域自适应是指将训练好的源域声学模型应用于目标域的无标记数据。这可以通过深度神经网络(DNN)声学模型的对抗性训练来实现,以学习既具有信号辨别性又具有域不变性的中间深度表示。具体来说,训练DNN是为了用对抗目标函数共同优化senone分类的主要任务和domain分类的次要任务。在这项工作中,我们不仅关注学习域不变特征(即域之间的共享组件),还通过私有组件提取器DNN显式建模每个域的私有组件来表征源域和目标域分布之间的差异。将私有分量训练成与共享分量正交,从而隐式地提高了共享分量的域不变性程度。重构深度神经网络用于从私有和共享分量中重构原始语音特征作为正则化。将该领域分离框架应用于无监督环境自适应任务,在CHiME-3数据集上实现了语音自动识别的梯度反演层训练(一种具有代表性的对抗训练方法)的相对WER降低11.08%。
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