Title of article :
Neural Network Based Missing Feature Method For Text-Independent Speaker Identification
Author/Authors :
Ying WANG، نويسنده , , Wei LU، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2010
Abstract :
The first step of missing feature methods in text-independent speaker identification is to identify highly corrupted spectrographic representation of speech as missing feature. Most mask estimation techniques rely on explicit estimation of the characteristics of the corrupting noise and usually fail to work with inaccurate estimation of noise. We present a mask estimation technique that uses neural networks to determine the reliability of spectrographic elements. Without any prior knowledge of the noise or prior probability of speech, this method exploits only the characteristics of the speech signal. Experiments were performed on speech corrupted by stationary F16 noise and non-stationary Babble noise from 5dB to 20 dB separately, using cluster based reconstruction missing feature method. The result performs better recognition accuracy than conventional spectral subtraction mask estimation methods.
Keywords :
Speaker identification , Missing Feature Reconstruction , Mask Estimation , neural network
Journal title :
International Journal of Communications, Network and System Sciences
Journal title :
International Journal of Communications, Network and System Sciences