Thank you for Attention: A survey on Attention-based Artificial Neural Networks for Automatic Speech Recognition

02/14/2021
by   Priyabrata Karmakar, et al.
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Attention is a very popular and effective mechanism in artificial neural network-based sequence-to-sequence models. In this survey paper, a comprehensive review of the different attention models used in developing automatic speech recognition systems is provided. The paper focuses on the development and evolution of attention models for offline and streaming speech recognition within recurrent neural network- and Transformer- based architectures.

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