基于弹性频谱畸变的深度神经网络低资源语音识别

Naoyuki Kanda, Ryu Takeda, Y. Obuchi
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引用次数: 112

摘要

最近提出了一种基于隐马尔可夫模型和深度神经网络(DNN-HMM)的声学模型,并取得了较高的识别精度。在本文中,我们研究了一种弹性谱失真方法来人为地增加训练样本,以帮助dnn - hmm在训练样本数量有限的情况下获得足够的鲁棒性。我们研究了三种失真方法-声道长度失真、语速失真和频率轴随机失真-并使用日语演讲录音对这些方法进行了评估。在仅10小时训练样本的大词汇量连续语音识别任务中,与常规训练的DNN-HMM相比,使用弹性谱失真方法训练的DNN-HMM相对单词误差降低了10.1%。
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Elastic spectral distortion for low resource speech recognition with deep neural networks
An acoustic model based on hidden Markov models with deep neural networks (DNN-HMM) has recently been proposed and achieved high recognition accuracy. In this paper, we investigated an elastic spectral distortion method to artificially augment training samples to help DNN-HMMs acquire enough robustness even when there are a limited number of training samples. We investigated three distortion methods - vocal tract length distortion, speech rate distortion, and frequency-axis random distortion - and evaluated those methods with Japanese lecture recordings. In a large vocabulary continuous speech recognition task with only 10 hours of training samples, a DNN-HMM trained with the elastic spectral distortion method achieved a 10.1% relative word error reduction compared with a normally trained DNN-HMM.
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