Title :
The effectiveness of ICA-based representation: Application to speech feature extraction for noise robust speaker recognition
Author :
Xin Zou ; Jancovic, Peter ; Ju Liu
Author_Institution :
Electron., Electr. & Comput. Eng., Univ. of Birmingham, Birmingham, UK
Abstract :
In this paper, we present a mathematical derivation demonstrating that feature representation obtained by using the Independent Component Analysis (ICA) is an effective representation for non-Gaussian signals when being both clean and corrupted by Gaussian noise. Our findings are experimentally demonstrated by employing the ICA for speech feature extraction; specifically, the ICA is used to transform the logarithm filter-bank-energies (instead of the DCT which provides MFCC features). The evaluation is presented for a GMM-based speaker identification task on the TIMIT database for clean speech and speech corrupted by white noise. The effectiveness of ICA is analysed individually for signals corresponding to each phoneme. The experimental results show that the ICA-based features can provide significantly better performance than traditional MFCCs and PCA-based features in both clean and noisy speech.
Keywords :
Gaussian noise; channel bank filters; feature extraction; independent component analysis; mixture models; speaker recognition; white noise; GMM-based speaker identification task; Gaussian noise; ICA-based representation; TIMIT database; clean speech; feature representation; independent component analysis; logarithm filter-bank-energies; mathematical derivation; nonGaussian signals; speaker recognition; speech feature extraction; white noise; Abstracts; Dairy products; Databases; Europe; Feature extraction; Method of moments; Speech;
Conference_Titel :
Signal Processing Conference, 2006 14th European
Conference_Location :
Florence