Frame-Level Specaugment for Deep Convolutional Neural Networks in Hybrid ASR Systems

Xinwei Li, Yuanyuan Zhang, Xiaodan Zhuang, Daben Liu
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引用次数: 3

Abstract

Inspired by SpecAugment — a data augmentation method for end-to-end ASR systems, we propose a frame-level SpecAugment method (f-SpecAugment) to improve the performance of deep convolutional neural networks (CNN) for hybrid HMM based ASR systems. Similar to the utterance level SpecAugment, f-SpecAugment performs three transformations: time warping, frequency masking, and time masking. Instead of applying the transformations at the utterance level, f-SpecAugment applies them to each convolution window independently during training. We demonstrate that f-SpecAugment is more effective than the utterance level SpecAugment for deep CNN based hybrid models. We evaluate the proposed f-SpecAugment on 50-layer Self-Normalizing Deep CNN (SNDCNN) acoustic models trained with up to 25000 hours of training data. We observe f-SpecAugment reduces WER by 0.5-4.5% relatively across different ASR tasks for four languages. As the benefits of augmentation techniques tend to diminish as training data size increases, the large scale training reported is important in understanding the effectiveness of f-SpecAugment. Our experiments demonstrate that even with 25k training data, f-SpecAugment is still effective. We also demonstrate that f-SpecAugment has benefits approximately equivalent to doubling the amount of training data for deep CNNs.
混合ASR系统中深度卷积神经网络的帧级扩展
受端到端ASR系统的数据增强方法SpecAugment的启发,我们提出了一种帧级SpecAugment方法(f-SpecAugment)来提高基于混合HMM的ASR系统的深度卷积神经网络(CNN)的性能。与话语级的SpecAugment类似,f-SpecAugment执行三种转换:时间扭曲、频率屏蔽和时间屏蔽。f-SpecAugment不是在话语级别应用变换,而是在训练期间独立地将它们应用于每个卷积窗口。我们证明了f-SpecAugment比基于深度CNN的混合模型的话语级SpecAugment更有效。我们在经过25000小时训练数据训练的50层自归一化深度CNN (SNDCNN)声学模型上评估了所提出的f-SpecAugment。我们观察到,在四种语言的不同ASR任务中,f-SpecAugment相对降低了0.5-4.5%的WER。随着训练数据大小的增加,增强技术的好处往往会减少,因此报告的大规模训练对于理解f-SpecAugment的有效性非常重要。我们的实验表明,即使有25k的训练数据,f-SpecAugment仍然是有效的。我们还证明了f-SpecAugment的好处大约相当于深度cnn训练数据量的两倍。
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