Small-footprint keyword spotting using deep neural networks

ICASSP(2014)

引用 657|浏览285
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摘要
Our application requires a keyword spotting system with a small memory footprint, low computational cost, and high precision. To meet these requirements, we propose a simple approach based on deep neural networks. A deep neural network is trained to directly predict the keyword(s) or subword units of the keyword(s) followed by a posterior handling method producing a final confidence score. Keyword recognition results achieve 45% relative improvement with respect to a competitive Hidden Markov Model-based system, while performance in the presence of babble noise shows 39% relative improvement.
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关键词
deep neural networks,confidence score,speech recognition,small memory footprint,deep neural network,posterior handling method,keyword prediction,small-footprint keyword spotting,telecommunication computing,low computational cost,high precision,keyword spotting,babble noise,hidden markov models,subword unit prediction,neural nets,keyword recognition,hidden markov model,embedded speech recognition,computational modeling,neural networks,speech processing,acoustics,speech
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