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Unsupervised Domain Adaptation by Adversarial Learning for Robust Speech Recognition

机译:对抗性学习的无监督域自适应以实现鲁棒的语音识别

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In this paper, we investigate the use of adversarial learning for unsupervised adaptation to unseen recording conditions, more specifically, single microphone far-field speech. We adapt neural networks based acoustic models trained with close-talk clean speech to the new recording conditions using untranscribed adaptation data. Our experimental results on Italian SPEECON data set show that our proposed method achieves 19.8% relative word error rate (WER) reduction compared to the unadapted models. Furthermore, this adaptation method is beneficial even when performed on data from another language (i.e. French) giving 12.6% relative WER reduction.
机译:在本文中,我们研究了对抗性学习在不受监督的情况下如何适应看不见的录音条件的情况,更具体地说是单麦克风远场语音。我们使用未经转录的自适应数据,将基于神经网络的,经过近距离交谈清晰语音训练的声学模型改编为新的录音条件。我们在意大利SPEECON数据集上的实验结果表明,与不适用的模型相比,我们提出的方法可实现19.8%的相对单词错误率(WER)降低。此外,即使对来自另一种语言(即法语)的数据执行此调整方法,也会带来相对WER降低12.6%的好处。

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