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Advances in STC Russian Spontaneous Speech Recognition System

机译:STC俄罗斯自发性语音识别系统的进步

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In this paper we present the latest improvements to the Russian spontaneous speech recognition system developed in Speech Technology Center (STC). Significant word error rate (WER) reduction was obtained by applying hypothesis rescoring with sophisticated language models. These were the Recurrent Neural Network Language Model and regularized Long-Short Term Memory Language Model. For acoustic modeling we used the deep neural network (DNN) trained with speaker-dependent bottleneck features, similar to our previous system. This DNN was combined with the deep Bidirectional Long Short-Term Memory acoustic model by the use of score fusion. The resulting system achieves WER of 16.4%, with an absolute reduction of 8.7% and relative reduction of 34.7% compared to our previous system result on this test set.
机译:在本文中,我们提出了对语音技术中心(STC)开发的俄罗斯自发性语音识别系统的最新改进。通过应用具有复杂语言模型的假设繁殖来获得显着的字错误率(WER)减少。这些是经常性的神经网络语言模型和正规化的长期记忆语言模型。对于声学建模,我们使用与扬声器相关的瓶颈特征有关的深神经网络(DNN),类似于我们以前的系统。该DNN通过使用分数融合与深双向短期内记忆声学模型相结合。由此产生的系统实现了16.4%的WER,绝对减少了8.7%,而且与我们之前的系统结果相比,34.7%相对减少了34.7%。

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