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Small-footprint Deep Neural Networks with Highway Connections for Speech Recognition

机译:具有公路连接的小型深度神经网络用于语音识别

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摘要

For speech recognition, deep neural networks (DNNs) have significantly improved the recognition accuracy in most of benchmark datasets and application domains. However, compared to the conventional Gaussian mixture models, DNN-based acoustic models usually have much larger number of model parameters, making it challenging for their applications in resource constrained platforms, e.g., mobile devices. In this paper, we study the application of the recently proposed highway network to train small-footprint DNNs, which are {\it thinner} and {\it deeper}, and have significantly smaller number of model parameters compared to conventional DNNs. We investigated this approach on the AMI meeting speech transcription corpus which has around 70 hours of audio data. The highway neural networks constantly outperformed their plain DNN counterparts, and the number of model parameters can be reduced significantly without sacrificing the recognition accuracy.
机译:对于语音识别,深度神经网络(DNN)大大提高了大多数基准数据集和应用程序域的识别精度。但是,与传统的高斯混合模型相比,基于DNN的声学模型通常具有更多的模型参数,这使其在资源受限的平台(例如移动设备)中的应用面临挑战。在本文中,我们研究了最近提出的高速公路网络在训练小足迹DNN上的应用,这些小足迹DNN比传统DNN的厚度更薄,深度更小。我们在拥有约70个小时音频数据的AMI会议语音转录语料库上研究了这种方法。高速公路神经网络的性能始终优于普通的DNN,并且可以在不牺牲识别精度的情况下显着减少模型参数的数量。

著录项

  • 作者

    Lu, Liang; Renals, Steve;

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  • 年度 2016
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  • 原文格式 PDF
  • 正文语种 eng
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