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Poster
		    Insights into End-to-End Learning Scheme for Language Identification
			- Citation Author(s):
 - Submitted by:
 - Weicheng Cai
 - Last updated:
 - 13 April 2018 - 9:32am
 - Document Type:
 - Poster
 - Document Year:
 - 2018
 - Event:
 - Presenters:
 - Weicheng Cai
 - Paper Code:
 - 3855
 
- Categories:
 
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A novel interpretable end-to-end learning scheme for language identification is proposed. It is in line with the classical GMM i-vector methods both theoretically and practically. In the end-to-end pipeline, a general encoding layer is employed on top of the front-end CNN, so that it can encode the variable-length input sequence into an utterance level vector automatically. After comparing with the state-of-the-art GMM i-vector methods, we give insights into CNN, and reveal its role and effect in the whole pipeline. We further introduce a general encoding layer, illustrating the reason why they might be appropriate for language identification. We elaborate on several typical encoding layers, including a temporal average pooling layer, a recurrent encoding layer and a novel learnable dictionary encoding layer. We conducted experiment on NIST LRE07 closed-set task, and the results show that our proposed end-to-end systems achieve state-of-the-art performance.