Convolutional Attention-based Seq2Seq Neural Network for End-to-End ASR

10/12/2017
by   Dan Lim, et al.
0

This thesis introduces the sequence to sequence model with Luong's attention mechanism for end-to-end ASR. It also describes various neural network algorithms including Batch normalization, Dropout and Residual network which constitute the convolutional attention-based seq2seq neural network. Finally the proposed model proved its effectiveness for speech recognition achieving 15.8

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