Towards Relevance and Sequence Modeling in Language Recognition
- URL: http://arxiv.org/abs/2004.01221v1
- Date: Thu, 2 Apr 2020 18:31:18 GMT
- Title: Towards Relevance and Sequence Modeling in Language Recognition
- Authors: Bharat Padi, Anand Mohan and Sriram Ganapathy
- Abstract summary: We propose a neural network framework utilizing short-sequence information in language recognition.
A new model is proposed for incorporating relevance in language recognition, where parts of speech data are weighted more based on their relevance for the language recognition task.
Experiments are performed using the language recognition task in NIST LRE 2017 Challenge using clean, noisy and multi-speaker speech data.
- Score: 39.547398348702025
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The task of automatic language identification (LID) involving multiple
dialects of the same language family in the presence of noise is a challenging
problem. In these scenarios, the identity of the language/dialect may be
reliably present only in parts of the temporal sequence of the speech signal.
The conventional approaches to LID (and for speaker recognition) ignore the
sequence information by extracting long-term statistical summary of the
recording assuming an independence of the feature frames. In this paper, we
propose a neural network framework utilizing short-sequence information in
language recognition. In particular, a new model is proposed for incorporating
relevance in language recognition, where parts of speech data are weighted more
based on their relevance for the language recognition task. This relevance
weighting is achieved using the bidirectional long short-term memory (BLSTM)
network with attention modeling. We explore two approaches, the first approach
uses segment level i-vector/x-vector representations that are aggregated in the
neural model and the second approach where the acoustic features are directly
modeled in an end-to-end neural model. Experiments are performed using the
language recognition task in NIST LRE 2017 Challenge using clean, noisy and
multi-speaker speech data as well as in the RATS language recognition corpus.
In these experiments on noisy LRE tasks as well as the RATS dataset, the
proposed approach yields significant improvements over the conventional
i-vector/x-vector based language recognition approaches as well as with other
previous models incorporating sequence information.
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