Clipped LPC Cepstrum and Its Application to Text-Independent Speaker Identification
نویسنده
چکیده
A new modification of the LPC cepstrum of speech signal called clipped LPC (CLPC) cepstrum is proposed. In the CLPC cepstrum is reduced the influence of the low level LPC spectrum’s regions. Three LPC cepstrums as features in a textindependent speaker identification task were evaluated using reading text in Bulgarian language collected over noisy telephone lines. These cepstrums are: standard LPC cepstrum, CLPC cepstrum and OSALPC cepstrum. As experimental results shown the proposed cepstrum achieves better results than both LPC and OSALPC cepstrums in this task.
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