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A Initial Attempt on Task-Specific Adaptation for Deep Neural Network-based Large Vocabulary Continuous Speech Recognition

机译:基于深度神经网络的大词汇连续语音识别的任务特定适应性的初步尝试

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In the state-of-the-art automatic speech recognition (ASR) systems, adaption techniques are used to the mitigate performance degradation caused by the mismatch in the training and testing procedure. Although there are bunch of adaption techniques for the hidden Markov models (HMM)-GMM-based system[3], there is rare work about the adaption in the hybrid artificial neural network (ANN)/HMM-based system [7][8]. Recently, there is a resurgence on ANN/HMM scheme for ASR with the success of context dependent deep neural network HMM (CD-DNN/HMM). Therefore in this paper, we present our initial efforts on the adaption techniques in the CD-DNN/HMM system. Specially, a linear input network(LIN)-based method and a neural network retraining(NNR)-based method is experimentally explored for the the task-adaptation purpose. Experiments on conversation telephone speech data set shows that these techniques can improve the system significantly and LIN-based method seems to work better with medium mount of adaptation data.
机译:在最先进的自动语音识别(ASR)系统中,适应技术用于缓解由训练和测试程序中的不匹配引起的性能劣化。虽然存在堆的隐马尔可夫模型(基于HMM)的系统[3],但有关于混合人工神经网络(基于HMM的系统的适应性的罕见工作[7] [8 ]。最近,ASR的ANN / HMM方案有一种复兴,具有上下文依赖性深度神经网络HMM(CD-DNN / HMM)的成功。因此,在本文中,我们展示了CD-DNN / HMM系统中的适应技术的初步努力。特别地,基于线性输入网络(LIN)的基础方法和基于神经网络再培训(NNR)的方法,用于任务适应目的。对话电话语音数据集的实验表明,这些技术可以显着提高系统,并且基于林的方法似乎使用中等适应数据的中置方式更好地工作。

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