The Journal of Korean Institute of Communications and Information Sciences (한국통신학회논문지)
- Volume 25 Issue 3B
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- Pages.565-569
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- 2000
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- 1226-4717(pISSN)
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- 2287-3880(eISSN)
A study on the spoken digit recognition performance of the Two-Stage recurrent neural network
2단 회귀신경망의 숫자음 인식에관한 연구
Abstract
We compose the two-stage recurrent neural network that returns both signals of a hidden and an output layer to the hidden layer. It is tested on the basis of syllables for Korean spoken digit from /gong/to /gu. For these experiments, we adjust the neuron number of the hidden layer, the predictive order of input data and self-recurrent coefficient of the decision state layer. By the experimental results, the recognition rate of this neural network is between 91% and 97.5% in the speaker-dependent case and between 80.75% and 92% in the speaker-independent case. In the speaker-dependent case, this network shows an equivalent recognition performance to Jordan and Elman network but in the speaker-independent case, it does improved performance.
Keywords