By Dong Yu
This publication presents a entire evaluate of the new development within the box of automated speech reputation with a spotlight on deep studying versions together with deep neural networks and lots of in their editions. this can be the 1st computerized speech attractiveness e-book devoted to the deep studying process. as well as the rigorous mathematical remedy of the topic, the e-book additionally offers insights and theoretical starting place of a sequence of hugely winning deep studying models.
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Extra info for Automatic Speech Recognition: A Deep Learning Approach
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