In this paper, we introduce an extension of Mel-Frequency Cepstrum Coefficients (1D-MFCC) methodology to bispectrum data, referred to as 2D-MFCC, for feature extraction. 2D-MFCC is based on 2D bispectrum data rather than 1D spectrum vector yielded by Fourier transform, so the filter in 1D-MFCC must be extend to 2D filter and using 2D cosine transform to get the mel-cepstrum coefficients from the filtered bispectrum values. Based on 2D-MFCC, we develop a speaker recognition system with Hidden Markov Model (HMM) as classifier. The experimental results show that the recognition rate is around 88%, 92% and 99% for 20, 40 and 60 data training, respectively.  
Speaker recognition system is intended to recognize a person’s identity. This task can be done by kn...
commonly used for speech decoding. Initially, n numbers of speech signals of n number of speakers ar...
The Mel-Frequency Cepstral Coefficients (MFCC) feature extraction method is a leading approach for s...
The speech is the prominent and natural form of communication among human being. There are different...
The speech is the prominent and natural form of communication among human being. There are different...
ABSTRAKSI: Pengidentifikasian Kata dengan Hidden Markov Model (HMM) menggunakan ekstraksi ciri Mel-f...
Biometrik adalah teknologi yang berfungsi mengenali subjek berdasarkan ciri biologisnya. Aspek biolo...
Speaker identification is a biometric process. The objective of speaker identification is to extract...
In this research, we design and build a speaking verification system that use MFCC as voice extracti...
The domain area of this topic is Bio-metric. Speaker Recognition is biometric system. This paper dea...
This paper presents an approach to the recognition of speech signal using frequency spectral informa...
Speaker recognition is a very important research area where speech synthesis, and speech noise reduc...
Speech recognition is of an important contribution in promoting new technologies in human computer i...
Speaker recognition system is intended to recognize a person’s identity. This task can be done by kn...
AbstractSpeaker identification system identifies the person by his/her speech sample. Speaker Identi...
Speaker recognition system is intended to recognize a person’s identity. This task can be done by kn...
commonly used for speech decoding. Initially, n numbers of speech signals of n number of speakers ar...
The Mel-Frequency Cepstral Coefficients (MFCC) feature extraction method is a leading approach for s...
The speech is the prominent and natural form of communication among human being. There are different...
The speech is the prominent and natural form of communication among human being. There are different...
ABSTRAKSI: Pengidentifikasian Kata dengan Hidden Markov Model (HMM) menggunakan ekstraksi ciri Mel-f...
Biometrik adalah teknologi yang berfungsi mengenali subjek berdasarkan ciri biologisnya. Aspek biolo...
Speaker identification is a biometric process. The objective of speaker identification is to extract...
In this research, we design and build a speaking verification system that use MFCC as voice extracti...
The domain area of this topic is Bio-metric. Speaker Recognition is biometric system. This paper dea...
This paper presents an approach to the recognition of speech signal using frequency spectral informa...
Speaker recognition is a very important research area where speech synthesis, and speech noise reduc...
Speech recognition is of an important contribution in promoting new technologies in human computer i...
Speaker recognition system is intended to recognize a person’s identity. This task can be done by kn...
AbstractSpeaker identification system identifies the person by his/her speech sample. Speaker Identi...
Speaker recognition system is intended to recognize a person’s identity. This task can be done by kn...
commonly used for speech decoding. Initially, n numbers of speech signals of n number of speakers ar...
The Mel-Frequency Cepstral Coefficients (MFCC) feature extraction method is a leading approach for s...