GANs for Children: A Generative Data Augmentation Strategy for Children Speech Recognition

Peiyao Sheng, Zhuolin Yang, Y. Qian
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引用次数: 17

Abstract

Due to the high acoustic variability, children speech recognition suffers significant performance reduction on most ASR systems which are optimized mainly using adults speech with limited or even none children speech. One of the most straight ideas to solve this problem is to increase the children's speech data during training, however, it is restricted by the more difficult process and higher cost when collecting children's speech compared to adults'. In this work, we develop a generative adversarial network (GANs) based data augmentation method to increase the size of children's training data to improve speech recognition performance for children's speech. Two different types of GANs are explored under WGAN-GP training framework, including the unconditional GANs with an unsupervised learning framework and the conditional GANs using acoustic states as conditions. The proposed data augmentation approaches are evaluated on a Mandarin speech recognition task, with only 40-hour children speech or further including 100-hour adult speech in the training. The results show that more than relative 20% WER reduction can be obtained on children speech testset with the proposed method, and the generated children speech with GAN even can improve the adults' speech within our experimental setups.
儿童GANs:儿童语音识别的生成数据增强策略
由于高度的声学变异性,儿童语音识别在大多数ASR系统中受到显著的性能下降,这些系统主要使用有限甚至没有儿童语音的成人语音进行优化。解决这一问题的一个最直接的思路是在训练过程中增加儿童的语音数据,然而,与成人相比,儿童语音的收集过程更困难,成本也更高。在这项工作中,我们开发了一种基于生成对抗网络(GANs)的数据增强方法来增加儿童训练数据的大小,以提高儿童语音的语音识别性能。在WGAN-GP训练框架下探讨了两种不同类型的gan,包括具有无监督学习框架的无条件gan和以声学状态为条件的条件gan。提出的数据增强方法在一个普通话语音识别任务上进行了评估,只有40小时的儿童语音或进一步包括100小时的成人语音训练。实验结果表明,该方法可以在儿童语音测试集上获得相对20%以上的WER降低,并且在我们的实验设置中,使用GAN生成的儿童语音甚至可以改善成人语音。
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