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Preliminary experiments on the robustness of biologically motivated features for DNN-based ASR

机译:基于DNN的ASR的生物动机特征的稳健性初步实验

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A perceptually motivated feature extraction method based on mimicking the masking properties of the cochlea has been recently found to provide enhanced performance when applied to conventional speech recognition back-ends. On the other hand, the introduction of Deep Neural Network (DNN) based acoustic models has produced dramatic improvements in performance. In particular, we found that Deep Maxout Networks, a modification of DNNs' feed-forward architecture that uses a max-out activation function, provides enhanced robustness to environmental noise. In this paper, we present preliminary experiments on the combination of these two elements that already show how the DMN-based back-end is capable of taking advantage of these auditorily inspired features making the whole system more robust and also suggesting that human-like representations of speech keep playing an important role in DNN-based automatic speech recognition systems.
机译:最近发现基于模拟耳蜗的掩蔽性质的感觉动力的特征提取方法,以在施加到常规语音识别后端时提供增强的性能。另一方面,基于深度神经网络(DNN)的声学模型的引入产生了性能的显着改善。特别是,我们发现深颤突网络,用于使用最大激活功能的DNN的前馈架构的修改,为环境噪声提供了增强的鲁棒性。在本文中,我们对这两个元素的结合提出了初步实验,这些元素已经表明了基于DMN的后端能够利用这些视听者的启发功能,使整个系统更加强大,并且还表明人类的表现言语在基于DNN的自动语音识别系统中发挥着重要作用。

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