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Transfer learning for automatic speech recognition systems

机译:自动语音识别系统的转移学习

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This paper presents the effects of transfer learning on deep neural network based speech recognition systems. The source acoustic model is trained on a large corpus of call centers telephony records, and an acoustically mismatched out-of-domain data that consists of the meeting recordings of the Grand National Assembly of Turkey is selected as the target. Our goal is to adapt the source model to the target data using transfer learning, and we investigate the effects of different target training data sizes, transferred layer counts and feature extractors on transfer learning. Our experiments show that for all target training sizes, the transferred models outperformed the models that are only trained on the target data, and the model that is transferred using 20 hours of target data achieved 7.8% higher recognition accuracy than the source model.
机译:本文介绍了转移学习对基于深度神经网络的语音识别系统的影响。在大量呼叫中心电话记录上训练了源声学模型,并选择了由土耳其国民议会会议记录组成的声学上不匹配的域外数据作为目标。我们的目标是使用转移学习使源模型适应目标数据,并且我们研究不同目标训练数据大小,转移的层数和特征提取器对转移学习的影响。我们的实验表明,对于所有目标训练大小,所转移的模型均优于仅对目标数据进行训练的模型,并且使用20小时目标数据进行转移的模型比源模型实现了7.8%的识别精度。

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