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引用次数: 18

摘要

深度神经网络声学模型极大地提高了自动语音识别(ASR)的性能。然而,基于dnn的系统在混响环境中仍然表现不佳。卷积神经网络(CNN)声学模型在远端语音识别中的单词错误率(WER)低于全连接DNN声学模型。为了提高使用CNN声学模型进行混响语音识别的性能,我们提出了具有两个独立流的多分辨率CNN:一个是具有宽上下文窗口的宽带特征,另一个是具有窄上下文窗口的窄带特征。在REVERB challenge 2014的ASR任务上进行的实验表明,与传统的基于CNN的方法相比,本文提出的基于多分辨率CNN的方法对模拟测试数据和真实条件测试数据的WER分别降低了8.79%和8.83%。
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Multiresolution CNN for reverberant speech recognition
The performance of automatic speech recognition (ASR) has been greatly improved by deep neural network (DNN) acoustic models. However, DNN-based systems still perform poorly in reverberant environments. Convolutional neural network (CNN) acoustic models showed lower word error rate (WER) in distant speech recognition than fully-connected DNN acoustic models. To improve the performance of reverberant speech recognition using CNN acoustic models, we propose the multiresolution CNN that has two separate streams: one is the wideband feature with wide-context window and the other is the narrowband feature with narrow-context window. The experiments on the ASR task of the REVERB challenge 2014 showed that the proposed multiresolution CNN based approach reduced the WER by 8.79% and 8.83% for the simulated test data and the real-condition test data, respectively, compared with the conventional CNN based method.
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