Using Second-Order Hidden Markov Model to Improve Speaker Identification Recognition Performance under Neutral Condition

06/29/2017
by   Ismail Shahin, et al.
0

In this paper, second-order hidden Markov model (HMM2) has been used and implemented to improve the recognition performance of text-dependent speaker identification systems under neutral talking condition. Our results show that HMM2 improves the recognition performance under neutral talking condition compared to the first-order hidden Markov model (HMM1). The recognition performance has been improved by 9

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