A novel whispered speaker identification system based on extreme learning machine |
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Authors: | J. Sangeetha T. Jayasankar |
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Affiliation: | 1.Department of IT/SOC,SASTRA Deemed University,Thanjavur,India;2.Department of ECE,Anna University,Trichirappalli,India |
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Abstract: | Whispered speech speaker identification system is one of the most demanding efforts in automatic speaker recognition applications. Due to the profound variations between neutral and whispered speech in acoustic characteristics, the performance of conventional speaker identification systems applied on neutral speech degrades drastically when compared to whisper speech. This work presents a novel speaker identification system using whispered speech based on an innovative learning algorithm which is named as extreme learning machine (ELM). The features used in this proposed system are Instantaneous frequency with probability density models. Parametric and nonparametric probability density estimation with ELM was compared with the hybrid parametric and nonparametric probability density estimation with Extreme Learning Machine (HPNP-ELM) for instantaneous frequency modeling. The experimental result shows the significant performance improvement of the proposed whisper speech speaker identification system. |
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