Bi-directional recurrent end-to-end neural network classifier for spoken Arab digit recognition

Citation:

Zerari N, Abdelhamid S, Bouzgou H, Raymond C. Bi-directional recurrent end-to-end neural network classifier for spoken Arab digit recognition. 2nd International Conference on Natural Language and Speech Processing (ICNLSP) IEEE [Internet]. 2018 :1-6.

Abstract:

Automatic Speech Recognition can be considered as a transcription of spoken utterances into text which can be used to monitor/command a specific system. In this paper, we propose a general end-to-end approach to sequence learning that uses Long Short-Term Memory (LSTM) to deal with the non-uniform sequence length of the speech utterances. The neural architecture can recognize the Arabic spoken digit spelling of an isolated Arabic word using a classification methodology, with the aim to enable natural human-machine interaction. The proposed system consists to, first, extract the relevant features from the input speech signal using Mel Frequency Cepstral Coefficients (MFCC) and then these features are processed by a deep neural network able to deal with the non uniformity of the sequences length. A recurrent LSTM or GRU architecture is used to encode sequences of MFCC features as a fixed size vector that will feed a multilayer perceptron network to perform the classification. The whole neural network classifier is trained in an end-to-end manner. The proposed system outperforms by a large gap the previous published results on the same database.

Publisher's Version

Last updated on 06/13/2018