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ATTENTION-BASED MODELS FOR TEXT-DEPENDENT SPEAKER VERIFICATION

Citation Author(s):
F A Rezaur Rahman Chowdhury, Quan Wang, Ignacio Lopez Moreno, Li Wan
Submitted by:
Quan Wang
Last updated:
12 April 2018 - 11:42am
Document Type:
Poster
Document Year:
2018
Event:
Presenters:
F. A. Rezaur Rahman Chowdhury
Paper Code:
SP-P7.8
 

Attention-based models have recently shown great performance on a range of tasks, such as speech recognition, machine translation, and image captioning due to their ability to summarize relevant information that expands through the entire length of an input sequence. In this paper, we analyze the usage of attention mechanisms to the problem of sequence summarization in our end-to-end text-dependent speaker recognition system. We explore different topologies and their variants of the attention layer, and compare different pooling methods on the attention weights. Ultimately, we show that attention-based models can improves the Equal Error Rate (EER) of our speaker verification system by relatively 14% compared to our non-attention LSTM baseline model.

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