Extracting deep neural network bottleneck features using low-rank matrix factorization

ICASSP(2014)

引用 85|浏览531
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摘要
In this paper, we investigate the use of deep neural networks (DNNs) to generate a stacked bottleneck (SBN) feature representation for low-resource speech recognition. We examine different SBN extraction architectures, and incorporate low-rank matrix factorization in the final weight layer. Experiments on several low-resource languages demonstrate the effectiveness of the SBN configurations when compared to state-of-the-art hybrid DNN approaches.
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关键词
deep neural network,feature representation,stacked bottleneck,speech recognition,low-rank matrix factorization,sbn extraction architectures,bottleneck features,feature extraction,low-resource speech recognition,matrix decomposition,dnn,neural nets,neural networks,hidden markov models,speech
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