SlideShare a Scribd company logo
1 of 8
Download to read offline
Integrated Optics and Lightwave:An International Journal(OPTLJ), Vol. 1, No.1 , 2016
1
VOICED SPEECH CHARACTERISATION BASED ON
EMPIRICAL MODE DECOMPOSITION
Mina Kemiha1
1
Department of electronic, Jijel University, Algeria
ABSTRACT
Empirical Mode Decomposition (EMD) is a tool for the analysis of multi-component signals. The EMD
algorithm decomposes adaptively a given oscillation modes namely the functions of intrinsic mode (IMFs)
extracted from the signal itself signal. The analysis method is no need for a basic function fixed a priori as
conventional analytical methods (eg Fourier transform and the wavelet transform). In this paper, the
algorithm of empirical mode decomposition (EMD) is proposed as an alternative to estimate the vocal tract
formants characterizing the vocal tract. The proposed method was tested on natural speech. LPC analysis
of the first three functions intrinsic modes using the autocorrelation is calculated; a comparison was made
between the LPC analysis of the first three vowel of MFIs studied and the LPC analysis of the speech
signal.
KEYWORDS
Empirical mode decomposition, intrinsinc mode function, LPC analysis.
1. INTRODUCTION
Spectral analysis is one of the most common farming methods in signal processing, the class of so-
called parametric methods expired enables better data spectral estimation was based model for
determining the parameters of the latter. A parametric analysis method is analyzed by linear
predictive coding LPC. LPC is defined as a method of encoding digital signal to analog years
everything that has a particular value is provided by a linear function of the past values of the
signal.
Recently, a new temporal signal decomposition method called Empirical Mode Decomposition
(EMD), has been introduced by Huang et al. [1] for processing data from nonstationary and
nonlinear processes. The analysis is adaptive in contrast to traditional methods such as wavelets
where the basic functions are fixed. The EMD has received more attention in terms of applications
[2]-[3], interpretation [4]-[5], and improvement [6]-[7]. The major advantage of the EMD is that
the basic functions are derived from the signal itself.
The EMD is also used in speech analysis. In this paper, we combine EMD with linear prediction
coding analysis (LPC); we exploit the characteristics of the empirical modes from the EMD to
study a new approach.
The remainder of the paper is organized as follows. Empirical mode decomposition (EMD)
algorithm is defined in Section 2. EMD combined with LPC in Section 3. Results based on real
speech signals are presented in Section 4. Finally, conclusions are given in Section 5.
Integrated Optics and Lightwave:An International Journal(OPTLJ), Vol. 1, No.1 , 2016
2
2. EMPIRICAL MODE DECOMPOSITION
The empirical mode decomposition has been proposed by Huang et al. as a new signal
decomposition method for nonlinear and/or nonstationary signals [1]. Conventional signal
analysis tools, such as Fourier or wavelet-based methods, require some predefined basis functions
to represent a signal. Therefore, the EMD can be viewed as sub-band signal decomposition. The
EMD relies on a fully data-driven mechanism that does not require any a priori known basis. The
EMD decomposes a given signal into a collection of oscillatory modes, called intrinsic mode
functions (IMFs). Each IMF can be viewed as a sub-band of the signal and represent fast to slow
oscillations in the signal. The algorithm operates through the following steps:
1. Initialize the algorithm: 1j = , initialize residue )()(0 txtr = and fix the thresholdδ
2. Extract local maxima and minima of )(1 trj−
3. Compute the upper lower envelope )(tU j
, )(tL j
by cubic spline interpolation of local maxima
and minima, respectively
4. Compute the mean envelope ( )
2
)()(
)(
tLtU
tm jj
j
+
=
5. Compute the jth component )()()( 1 tmtrth jjj −= −
6. )(thj
is processed as )(1 trj−
. Let )()(0. thth jj = and )(, tm kj .......,1,0=k be the mean envelope
of )(, th kj
, then compute )()()( 1,1,, tmthth kjkjkj −− −= until
7. Compute the jth IMF as )()( , thtIMF kjj =
8. Update the residue )()()( 1 tIMFtrtr jjj −= −
9. Increase the sifting index j and repeat steps 2 to 8 until the number of local extrema in )(trj
is
less than 3
The signal reconstruction process x(t), which involves combining the IMFs formed from the
EMD and the residual
∑=
+=
N
j
Nj trtIMFtx
1
)()()(
3. EMD COMBINED WITH LPC
To a better exploitation of IMFs, we operate an LPC analysis of the first tree IMFs of empirical
mode decomposition of speech signal, in order to analyze the forming characterizing the speech
signal [8].
4. RESULTS AND DISCUSSION
To illustrate the effectiveness of the method we performed numerical simulations. The proposed
approach has been tested on natural speech signals presented by three vowel / a /, / i /, / u /, and its
performance in terms of accuracy has been compared to that of the LPC analysis of speech signal.
The sampling rate of all speech signals used in the experiment is 11 kHz. The formants are
defined as the ordered resonances of the vocal-tract, from the lowest to the highest. Figure 2 shows
the different modes obtained from the empirical mode decomposition of the signal of the vowel / a
/, presented in Figure 1 and the residue of the last algorithm step. And similarly for the vowels / i /
and / u /, an EMD decomposition was performed. In our approach, we proceed to an LPC analysis
of the IMFs represented in figure 3 and its comparison to results of the same analysis operated on
speech signal. The results are depicted in figures 3, 4 and 5 for vowel / to / and / i / and / u /
Integrated Optics and Lightwave:An International Journal(OPTLJ), Vol. 1, No.1 , 2016
3
respectively. We can see easily that each component has the same number of zero crossings as
extrema and is symmetric with respect to zero line. We note that the first mode corresponds
naturally to the highest frequency, and the last one corresponds to the lowest frequency, we
compute an LPC analysis of the three first intrinsic mode functions using the autocorrelation
method.
0 0.05 0.1 0.15 0.2 0.25 0.3 0.35 0.4 0.45
-1
-0.8
-0.6
-0.4
-0.2
0
0.2
0.4
0.6
0.8
1
Time [s]
Figure 1. Waveform of the vowel /a/.
0 200 400 600 800 1000 1200 1400 1600 1800 2000
-1
-0.5
0
0.5
1
0 200 400 600 800 1000 1200 1400 1600 1800 2000
-1
-0.5
0
0.5
1
0 200 400 600 800 1000 1200 1400 1600 1800 2000
-1
-0.5
0
0.5
1
Time [s]
Figure 2. Waveform of the first tree IMFs of the vowel /a/.
Integrated Optics and Lightwave:An International Journal(OPTLJ), Vol. 1, No.1 , 2016
4
0 0.02 0.04 0.06 0.08 0.1 0.12 0.14 0.16 0.18 0.2
-30
-20
-10
0
10
20
30
40
50
Frequence [Hz]
x
IMF1
IMF2
IMF3
Figure 3. Comparison of the LPC analysis of the vowel / a / and the LPC analysis of the tree first IMFs
0 0.05 0.1 0.15 0.2 0.25 0.3 0.35
-0.5
-0.4
-0.3
-0.2
-0.1
0
0.1
0.2
0.3
0.4
Time [s]
Figure 4. Waveform of the vowel /i/.
Integrated Optics and Lightwave:An International Journal(OPTLJ), Vol. 1, No.1 , 2016
5
0 200 400 600 800 1000 1200 1400 1600 1800 2000 2200
-0.4
-0.2
0
0.2
0.4
0 200 400 600 800 1000 1200 1400 1600 1800 2000 2200
-0.4
-0.2
0
0.2
0.4
0 200 400 600 800 1000 1200 1400 1600 1800 2000 2200
-0.4
-0.2
0
0.2
0.4
Time [s]
Figure 5. Waveform of the first tree IMFs of the vowel /i/.
0 0.02 0.04 0.06 0.08 0.1 0.12 0.14 0.16
-30
-20
-10
0
10
20
30
40
50
60
70
Frequence [Hz]
x
IMF1
IMF2
IMF3
Figure 6. Comparison of the LPC analysis of the vowel / i / and the LPC analysis of the tree first IMFs
Integrated Optics and Lightwave:An International Journal(OPTLJ), Vol. 1, No.1 , 2016
6
0 0.05 0.1 0.15 0.2 0.25 0.3
-0.4
-0.3
-0.2
-0.1
0
0.1
0.2
0.3
Time [s]
Figure 4. Waveform of the vowel /u/.
0 500 1000 1500 2000 2500
-0.4
-0.2
0
0.2
0.4
0 500 1000 1500 2000 2500
-0.4
-0.2
0
0.2
0.4
0 500 1000 1500 2000 2500
-0.4
-0.2
0
0.2
0.4
Time [s]
Figure 8. Waveform of the first tree IMFs of the vowel /u/.
Integrated Optics and Lightwave:An International Journal(OPTLJ), Vol. 1, No.1 , 2016
7
0 0.02 0.04 0.06 0.08 0.1 0.12 0.14 0.16
-30
-20
-10
0
10
20
30
40
50
60
70
Frequence [Hz]
x
IMF1
IMF2
IMF3
Figure 9. Comparison of the LPC analysis of the vowel / u / and the LPC analysis of the tree first IMFs
As shown by Figure 3, and figure 4 and figure 5, the first IMFs have not submitted the low
frequency signals but only the high frequencies. These results can be interpreted by the frequency
response of an equivalent filter while the collection of filters resulting equivalents of any of the
LPC analysis of IMFs given vowel tends the estimation of formants of voice leading. Although
EMD is a non-linear decomposition method, but the formants of the speech signal are preserved
and properly evaluated as can be seen in table 1 and 2 and 3 which respectively presents a
comparison between the values of formants obtained from the LPC analysis of the vowel / a /, and
the vowel / i /, and the vowel / u / and the analysis LPC of their three first IMFs.
Table 1. Comparison between the value of formants obtained by LPC analysis of the vowel / a / and the
LPC analysis of these first three IMFs.
F1 F2 F3 F4
Speech /a/ 0.002639 0.05116 0.1035 0.1406
IMF1 - - 0.1028 0.1403
IMF2 - 0.05224 - -
IMF3 0.02785 - - -
Table 2. Comparison between the value of formants obtained by LPC analysis of the vowel / i / and the
LPC analysis of these first three IMFs.
F1 F2 F3 F4
Speech /a/ 0.01188 0.08082 0.1098 0.1331
IMF1 - - 0.1098 0.1345
IMF2 - 0.07869 - -
IMF3 0.01152 - - -
.
Integrated Optics and Lightwave:An International Journal(OPTLJ), Vol. 1, No.1 , 2016
8
F1 F2 F3 F4
Speech /a/ 0.01469 0.09805 0.1456 0.1909
IMF1 - - 0.1452 0.1899
IMF2 - 0.09506 - -
IMF3 0.1678 - - -
5. CONCLUSIONS
In this work, we have proposed a new methodology to decompose a speech signal into different
oscillatory modes and to extract the resonant frequencies of the vocal tract i.e. formants from the
LPC analysis of different intrinsic mode functions called IMFs. The combination of EMD with the
LPC method allows the extraction and proper evaluation of different formants characterize
different signals studied.
REFERENCES
[1] N.E. Huang and al. “The empirical mode decomposition and Hilbert spectrum for nonlinear and non-
stationary time series analysis”. Proc. Royal Society, 1998,454(1971):903–995.
[2] F. Salzenstein A.O. Boudraa, J.C. Cexus and L. Guillon. “ If estimation using empirical mode
decomposition and nonlinear teager energy operator”. Proc. IEEE ISCCSP, Hammamet, 2004.,pp 45–
48.
[3] A.O. Boudraa S. Benramdane, J.C. Cexus and J.A. Astolfi. “Transient turbulent pressure signal
processing using empirical mode decomposition”. Proc. Physics in Signal and Image Processing,
Mhoulouse, 2007.
[4] P. Flandrin, G. Rilling, and P. Goncalves. “Empirical mode decomposition as a filter bank”. IEEE
Sig. Proc. Lett., 11(2):112–114, 2004.
[5] Z. Wu and N.E. Huang. “ A study of the characteristics of white noise using the empirical mode
decomposition method”. Proc. Roy. Soc. London A, 2004,460:1597–1611.
[6] B. Weng and K.E. Barner. “Optimal and bidirectional optimal empirical mode decomposition”. Proc.
IEEE ICASSPToulouse, 2007, 3:1501–1504.
[7] R. Deering and J.F. Kaiser. “The use of a masking signal to improve empirical mode decomposition”.
Proc. IEEE Philadelphia, 2005.
[8] Ai’cha Bouzid and Noureddine Ellouze. “voiced speech analysis empirical mode decomposition”.
Springer 2007.pp 213-220.

More Related Content

What's hot

Recovery of low frequency Signals from noisy data using Ensembled Empirical M...
Recovery of low frequency Signals from noisy data using Ensembled Empirical M...Recovery of low frequency Signals from noisy data using Ensembled Empirical M...
Recovery of low frequency Signals from noisy data using Ensembled Empirical M...inventionjournals
 
Robot Three Dimensional Space Path-planning Applying the Improved Ant Colony ...
Robot Three Dimensional Space Path-planning Applying the Improved Ant Colony ...Robot Three Dimensional Space Path-planning Applying the Improved Ant Colony ...
Robot Three Dimensional Space Path-planning Applying the Improved Ant Colony ...Nooria Sukmaningtyas
 
A JOINT TIMING OFFSET AND CHANNEL ESTIMATION USING FRACTIONAL FOURIER TRANSFO...
A JOINT TIMING OFFSET AND CHANNEL ESTIMATION USING FRACTIONAL FOURIER TRANSFO...A JOINT TIMING OFFSET AND CHANNEL ESTIMATION USING FRACTIONAL FOURIER TRANSFO...
A JOINT TIMING OFFSET AND CHANNEL ESTIMATION USING FRACTIONAL FOURIER TRANSFO...IJCNCJournal
 
A Study on Image Reconfiguration Algorithm of Compressed Sensing
A Study on Image Reconfiguration Algorithm of Compressed SensingA Study on Image Reconfiguration Algorithm of Compressed Sensing
A Study on Image Reconfiguration Algorithm of Compressed SensingTELKOMNIKA JOURNAL
 
An artificial neural network model for classification of epileptic seizures u...
An artificial neural network model for classification of epileptic seizures u...An artificial neural network model for classification of epileptic seizures u...
An artificial neural network model for classification of epileptic seizures u...ijsc
 
Ch07 1-2-overview graphcoverage
Ch07 1-2-overview graphcoverageCh07 1-2-overview graphcoverage
Ch07 1-2-overview graphcoverageRija Hameed
 
Intro tosignalprocessing
 Intro tosignalprocessing Intro tosignalprocessing
Intro tosignalprocessingJuanJTovarP
 
(2012) Rigaud, Falaize, David, Daudet - Does Inharmonicity Improve an NMF-Bas...
(2012) Rigaud, Falaize, David, Daudet - Does Inharmonicity Improve an NMF-Bas...(2012) Rigaud, Falaize, David, Daudet - Does Inharmonicity Improve an NMF-Bas...
(2012) Rigaud, Falaize, David, Daudet - Does Inharmonicity Improve an NMF-Bas...François Rigaud
 
(2011) Rigaud, David, Daudet - A Parametric Model of Piano Tuning
(2011) Rigaud, David, Daudet - A Parametric Model of Piano Tuning(2011) Rigaud, David, Daudet - A Parametric Model of Piano Tuning
(2011) Rigaud, David, Daudet - A Parametric Model of Piano TuningFrançois Rigaud
 
(2013) Rigaud et al. - A parametric model and estimation techniques for the i...
(2013) Rigaud et al. - A parametric model and estimation techniques for the i...(2013) Rigaud et al. - A parametric model and estimation techniques for the i...
(2013) Rigaud et al. - A parametric model and estimation techniques for the i...François Rigaud
 

What's hot (12)

Recovery of low frequency Signals from noisy data using Ensembled Empirical M...
Recovery of low frequency Signals from noisy data using Ensembled Empirical M...Recovery of low frequency Signals from noisy data using Ensembled Empirical M...
Recovery of low frequency Signals from noisy data using Ensembled Empirical M...
 
Robot Three Dimensional Space Path-planning Applying the Improved Ant Colony ...
Robot Three Dimensional Space Path-planning Applying the Improved Ant Colony ...Robot Three Dimensional Space Path-planning Applying the Improved Ant Colony ...
Robot Three Dimensional Space Path-planning Applying the Improved Ant Colony ...
 
A JOINT TIMING OFFSET AND CHANNEL ESTIMATION USING FRACTIONAL FOURIER TRANSFO...
A JOINT TIMING OFFSET AND CHANNEL ESTIMATION USING FRACTIONAL FOURIER TRANSFO...A JOINT TIMING OFFSET AND CHANNEL ESTIMATION USING FRACTIONAL FOURIER TRANSFO...
A JOINT TIMING OFFSET AND CHANNEL ESTIMATION USING FRACTIONAL FOURIER TRANSFO...
 
A Study on Image Reconfiguration Algorithm of Compressed Sensing
A Study on Image Reconfiguration Algorithm of Compressed SensingA Study on Image Reconfiguration Algorithm of Compressed Sensing
A Study on Image Reconfiguration Algorithm of Compressed Sensing
 
I0414752
I0414752I0414752
I0414752
 
An artificial neural network model for classification of epileptic seizures u...
An artificial neural network model for classification of epileptic seizures u...An artificial neural network model for classification of epileptic seizures u...
An artificial neural network model for classification of epileptic seizures u...
 
Ch07 1-2-overview graphcoverage
Ch07 1-2-overview graphcoverageCh07 1-2-overview graphcoverage
Ch07 1-2-overview graphcoverage
 
Intro tosignalprocessing
 Intro tosignalprocessing Intro tosignalprocessing
Intro tosignalprocessing
 
(2012) Rigaud, Falaize, David, Daudet - Does Inharmonicity Improve an NMF-Bas...
(2012) Rigaud, Falaize, David, Daudet - Does Inharmonicity Improve an NMF-Bas...(2012) Rigaud, Falaize, David, Daudet - Does Inharmonicity Improve an NMF-Bas...
(2012) Rigaud, Falaize, David, Daudet - Does Inharmonicity Improve an NMF-Bas...
 
(2011) Rigaud, David, Daudet - A Parametric Model of Piano Tuning
(2011) Rigaud, David, Daudet - A Parametric Model of Piano Tuning(2011) Rigaud, David, Daudet - A Parametric Model of Piano Tuning
(2011) Rigaud, David, Daudet - A Parametric Model of Piano Tuning
 
Rigaud_et_al_WASPAA
Rigaud_et_al_WASPAARigaud_et_al_WASPAA
Rigaud_et_al_WASPAA
 
(2013) Rigaud et al. - A parametric model and estimation techniques for the i...
(2013) Rigaud et al. - A parametric model and estimation techniques for the i...(2013) Rigaud et al. - A parametric model and estimation techniques for the i...
(2013) Rigaud et al. - A parametric model and estimation techniques for the i...
 

Similar to VOICED SPEECH CHARACTERISATION BASED ON EMPIRICAL MODE DECOMPOSITION

VOICED SPEECH CHARACTERISATION BASED ON EMPIRICAL MODE DECOMPOSITION
VOICED SPEECH CHARACTERISATION BASED ON EMPIRICAL MODE DECOMPOSITION VOICED SPEECH CHARACTERISATION BASED ON EMPIRICAL MODE DECOMPOSITION
VOICED SPEECH CHARACTERISATION BASED ON EMPIRICAL MODE DECOMPOSITION optljjournal
 
Empirical mode decomposition and normal shrink tresholding for speech denoising
Empirical mode decomposition and normal shrink tresholding for speech denoisingEmpirical mode decomposition and normal shrink tresholding for speech denoising
Empirical mode decomposition and normal shrink tresholding for speech denoisingijitjournal
 
Investigation of-combined-use-of-mfcc-and-lpc-features-in-speech-recognition-...
Investigation of-combined-use-of-mfcc-and-lpc-features-in-speech-recognition-...Investigation of-combined-use-of-mfcc-and-lpc-features-in-speech-recognition-...
Investigation of-combined-use-of-mfcc-and-lpc-features-in-speech-recognition-...Cemal Ardil
 
Ensemble Empirical Mode Decomposition: An adaptive method for noise reduction
Ensemble Empirical Mode Decomposition: An adaptive method for noise reductionEnsemble Empirical Mode Decomposition: An adaptive method for noise reduction
Ensemble Empirical Mode Decomposition: An adaptive method for noise reductionIOSR Journals
 
ELM and K-nn machine learning in classification of Breath sounds signals
ELM and K-nn machine learning in classification  of Breath sounds signals  ELM and K-nn machine learning in classification  of Breath sounds signals
ELM and K-nn machine learning in classification of Breath sounds signals IJECEIAES
 
International Journal of Engineering Research and Development (IJERD)
International Journal of Engineering Research and Development (IJERD)International Journal of Engineering Research and Development (IJERD)
International Journal of Engineering Research and Development (IJERD)IJERD Editor
 
Estimation of Ensembles in an Adventitious Wave by EMD and EEMD Techniques
Estimation of Ensembles in an Adventitious Wave by EMD and EEMD TechniquesEstimation of Ensembles in an Adventitious Wave by EMD and EEMD Techniques
Estimation of Ensembles in an Adventitious Wave by EMD and EEMD TechniquesIJERDJOURNAL
 
An Effective Approach for Chinese Speech Recognition on Small Size of Vocabulary
An Effective Approach for Chinese Speech Recognition on Small Size of VocabularyAn Effective Approach for Chinese Speech Recognition on Small Size of Vocabulary
An Effective Approach for Chinese Speech Recognition on Small Size of Vocabularysipij
 
An Artificial Neural Network Model for Classification of Epileptic Seizures U...
An Artificial Neural Network Model for Classification of Epileptic Seizures U...An Artificial Neural Network Model for Classification of Epileptic Seizures U...
An Artificial Neural Network Model for Classification of Epileptic Seizures U...ijsc
 
Audio/Speech Signal Analysis for Depression
Audio/Speech Signal Analysis for DepressionAudio/Speech Signal Analysis for Depression
Audio/Speech Signal Analysis for Depressionijsrd.com
 
De-Noising Corrupted ECG Signals By Empirical Mode Decomposition (EMD) With A...
De-Noising Corrupted ECG Signals By Empirical Mode Decomposition (EMD) With A...De-Noising Corrupted ECG Signals By Empirical Mode Decomposition (EMD) With A...
De-Noising Corrupted ECG Signals By Empirical Mode Decomposition (EMD) With A...IOSR Journals
 
ANALYSIS OF SPEECH UNDER STRESS USING LINEAR TECHNIQUES AND NON-LINEAR TECHNI...
ANALYSIS OF SPEECH UNDER STRESS USING LINEAR TECHNIQUES AND NON-LINEAR TECHNI...ANALYSIS OF SPEECH UNDER STRESS USING LINEAR TECHNIQUES AND NON-LINEAR TECHNI...
ANALYSIS OF SPEECH UNDER STRESS USING LINEAR TECHNIQUES AND NON-LINEAR TECHNI...cscpconf
 
New Method of R-Wave Detection by Continuous Wavelet Transform
New Method of R-Wave Detection by Continuous Wavelet TransformNew Method of R-Wave Detection by Continuous Wavelet Transform
New Method of R-Wave Detection by Continuous Wavelet TransformCSCJournals
 
Analysis the results_of_acoustic_echo_cancellation_for_speech_processing_usin...
Analysis the results_of_acoustic_echo_cancellation_for_speech_processing_usin...Analysis the results_of_acoustic_echo_cancellation_for_speech_processing_usin...
Analysis the results_of_acoustic_echo_cancellation_for_speech_processing_usin...Venkata Sudhir Vedurla
 
DESIGN REALIZATION AND PERFORMANCE EVALUATION OF AN ACOUSTIC ECHO CANCELLATIO...
DESIGN REALIZATION AND PERFORMANCE EVALUATION OF AN ACOUSTIC ECHO CANCELLATIO...DESIGN REALIZATION AND PERFORMANCE EVALUATION OF AN ACOUSTIC ECHO CANCELLATIO...
DESIGN REALIZATION AND PERFORMANCE EVALUATION OF AN ACOUSTIC ECHO CANCELLATIO...sipij
 
Rolling Element Bearing Condition Monitoring using Filtered Acoustic Emission
Rolling Element Bearing Condition Monitoring using Filtered Acoustic Emission Rolling Element Bearing Condition Monitoring using Filtered Acoustic Emission
Rolling Element Bearing Condition Monitoring using Filtered Acoustic Emission IJECEIAES
 
Application of Hilbert-Huang Transform in the Field of Power Quality Events A...
Application of Hilbert-Huang Transform in the Field of Power Quality Events A...Application of Hilbert-Huang Transform in the Field of Power Quality Events A...
Application of Hilbert-Huang Transform in the Field of Power Quality Events A...idescitation
 
Bio-medical (EMG) Signal Analysis and Feature Extraction Using Wavelet Transform
Bio-medical (EMG) Signal Analysis and Feature Extraction Using Wavelet TransformBio-medical (EMG) Signal Analysis and Feature Extraction Using Wavelet Transform
Bio-medical (EMG) Signal Analysis and Feature Extraction Using Wavelet TransformIJERA Editor
 
Error entropy minimization for brain image registration using hilbert huang t...
Error entropy minimization for brain image registration using hilbert huang t...Error entropy minimization for brain image registration using hilbert huang t...
Error entropy minimization for brain image registration using hilbert huang t...eSAT Publishing House
 
Research: Applying Various DSP-Related Techniques for Robust Recognition of A...
Research: Applying Various DSP-Related Techniques for Robust Recognition of A...Research: Applying Various DSP-Related Techniques for Robust Recognition of A...
Research: Applying Various DSP-Related Techniques for Robust Recognition of A...Roman Atachiants
 

Similar to VOICED SPEECH CHARACTERISATION BASED ON EMPIRICAL MODE DECOMPOSITION (20)

VOICED SPEECH CHARACTERISATION BASED ON EMPIRICAL MODE DECOMPOSITION
VOICED SPEECH CHARACTERISATION BASED ON EMPIRICAL MODE DECOMPOSITION VOICED SPEECH CHARACTERISATION BASED ON EMPIRICAL MODE DECOMPOSITION
VOICED SPEECH CHARACTERISATION BASED ON EMPIRICAL MODE DECOMPOSITION
 
Empirical mode decomposition and normal shrink tresholding for speech denoising
Empirical mode decomposition and normal shrink tresholding for speech denoisingEmpirical mode decomposition and normal shrink tresholding for speech denoising
Empirical mode decomposition and normal shrink tresholding for speech denoising
 
Investigation of-combined-use-of-mfcc-and-lpc-features-in-speech-recognition-...
Investigation of-combined-use-of-mfcc-and-lpc-features-in-speech-recognition-...Investigation of-combined-use-of-mfcc-and-lpc-features-in-speech-recognition-...
Investigation of-combined-use-of-mfcc-and-lpc-features-in-speech-recognition-...
 
Ensemble Empirical Mode Decomposition: An adaptive method for noise reduction
Ensemble Empirical Mode Decomposition: An adaptive method for noise reductionEnsemble Empirical Mode Decomposition: An adaptive method for noise reduction
Ensemble Empirical Mode Decomposition: An adaptive method for noise reduction
 
ELM and K-nn machine learning in classification of Breath sounds signals
ELM and K-nn machine learning in classification  of Breath sounds signals  ELM and K-nn machine learning in classification  of Breath sounds signals
ELM and K-nn machine learning in classification of Breath sounds signals
 
International Journal of Engineering Research and Development (IJERD)
International Journal of Engineering Research and Development (IJERD)International Journal of Engineering Research and Development (IJERD)
International Journal of Engineering Research and Development (IJERD)
 
Estimation of Ensembles in an Adventitious Wave by EMD and EEMD Techniques
Estimation of Ensembles in an Adventitious Wave by EMD and EEMD TechniquesEstimation of Ensembles in an Adventitious Wave by EMD and EEMD Techniques
Estimation of Ensembles in an Adventitious Wave by EMD and EEMD Techniques
 
An Effective Approach for Chinese Speech Recognition on Small Size of Vocabulary
An Effective Approach for Chinese Speech Recognition on Small Size of VocabularyAn Effective Approach for Chinese Speech Recognition on Small Size of Vocabulary
An Effective Approach for Chinese Speech Recognition on Small Size of Vocabulary
 
An Artificial Neural Network Model for Classification of Epileptic Seizures U...
An Artificial Neural Network Model for Classification of Epileptic Seizures U...An Artificial Neural Network Model for Classification of Epileptic Seizures U...
An Artificial Neural Network Model for Classification of Epileptic Seizures U...
 
Audio/Speech Signal Analysis for Depression
Audio/Speech Signal Analysis for DepressionAudio/Speech Signal Analysis for Depression
Audio/Speech Signal Analysis for Depression
 
De-Noising Corrupted ECG Signals By Empirical Mode Decomposition (EMD) With A...
De-Noising Corrupted ECG Signals By Empirical Mode Decomposition (EMD) With A...De-Noising Corrupted ECG Signals By Empirical Mode Decomposition (EMD) With A...
De-Noising Corrupted ECG Signals By Empirical Mode Decomposition (EMD) With A...
 
ANALYSIS OF SPEECH UNDER STRESS USING LINEAR TECHNIQUES AND NON-LINEAR TECHNI...
ANALYSIS OF SPEECH UNDER STRESS USING LINEAR TECHNIQUES AND NON-LINEAR TECHNI...ANALYSIS OF SPEECH UNDER STRESS USING LINEAR TECHNIQUES AND NON-LINEAR TECHNI...
ANALYSIS OF SPEECH UNDER STRESS USING LINEAR TECHNIQUES AND NON-LINEAR TECHNI...
 
New Method of R-Wave Detection by Continuous Wavelet Transform
New Method of R-Wave Detection by Continuous Wavelet TransformNew Method of R-Wave Detection by Continuous Wavelet Transform
New Method of R-Wave Detection by Continuous Wavelet Transform
 
Analysis the results_of_acoustic_echo_cancellation_for_speech_processing_usin...
Analysis the results_of_acoustic_echo_cancellation_for_speech_processing_usin...Analysis the results_of_acoustic_echo_cancellation_for_speech_processing_usin...
Analysis the results_of_acoustic_echo_cancellation_for_speech_processing_usin...
 
DESIGN REALIZATION AND PERFORMANCE EVALUATION OF AN ACOUSTIC ECHO CANCELLATIO...
DESIGN REALIZATION AND PERFORMANCE EVALUATION OF AN ACOUSTIC ECHO CANCELLATIO...DESIGN REALIZATION AND PERFORMANCE EVALUATION OF AN ACOUSTIC ECHO CANCELLATIO...
DESIGN REALIZATION AND PERFORMANCE EVALUATION OF AN ACOUSTIC ECHO CANCELLATIO...
 
Rolling Element Bearing Condition Monitoring using Filtered Acoustic Emission
Rolling Element Bearing Condition Monitoring using Filtered Acoustic Emission Rolling Element Bearing Condition Monitoring using Filtered Acoustic Emission
Rolling Element Bearing Condition Monitoring using Filtered Acoustic Emission
 
Application of Hilbert-Huang Transform in the Field of Power Quality Events A...
Application of Hilbert-Huang Transform in the Field of Power Quality Events A...Application of Hilbert-Huang Transform in the Field of Power Quality Events A...
Application of Hilbert-Huang Transform in the Field of Power Quality Events A...
 
Bio-medical (EMG) Signal Analysis and Feature Extraction Using Wavelet Transform
Bio-medical (EMG) Signal Analysis and Feature Extraction Using Wavelet TransformBio-medical (EMG) Signal Analysis and Feature Extraction Using Wavelet Transform
Bio-medical (EMG) Signal Analysis and Feature Extraction Using Wavelet Transform
 
Error entropy minimization for brain image registration using hilbert huang t...
Error entropy minimization for brain image registration using hilbert huang t...Error entropy minimization for brain image registration using hilbert huang t...
Error entropy minimization for brain image registration using hilbert huang t...
 
Research: Applying Various DSP-Related Techniques for Robust Recognition of A...
Research: Applying Various DSP-Related Techniques for Robust Recognition of A...Research: Applying Various DSP-Related Techniques for Robust Recognition of A...
Research: Applying Various DSP-Related Techniques for Robust Recognition of A...
 

More from optljjournal

Integrated Optics and Lightwave : An International Journal
Integrated Optics and Lightwave : An International JournalIntegrated Optics and Lightwave : An International Journal
Integrated Optics and Lightwave : An International Journaloptljjournal
 
Integrated Optics and Lightwave : An International Journal ( OPTLJ )
Integrated Optics and Lightwave : An International Journal ( OPTLJ )Integrated Optics and Lightwave : An International Journal ( OPTLJ )
Integrated Optics and Lightwave : An International Journal ( OPTLJ )optljjournal
 
Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )optljjournal
 
Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )optljjournal
 
Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )optljjournal
 
Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )optljjournal
 
Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )optljjournal
 
Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )optljjournal
 
Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )optljjournal
 
Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )optljjournal
 
ANALYTICAL PERFORMANCE EVALUATION OF AN LDPC CODED INDOOR OPTICAL WIRELESS CO...
ANALYTICAL PERFORMANCE EVALUATION OF AN LDPC CODED INDOOR OPTICAL WIRELESS CO...ANALYTICAL PERFORMANCE EVALUATION OF AN LDPC CODED INDOOR OPTICAL WIRELESS CO...
ANALYTICAL PERFORMANCE EVALUATION OF AN LDPC CODED INDOOR OPTICAL WIRELESS CO...optljjournal
 
Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )optljjournal
 
Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )optljjournal
 
Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )optljjournal
 
Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )optljjournal
 
Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )optljjournal
 
ANALYTICAL PERFORMANCE EVALUATION OF A MIMO FSO COMMUNICATION SYSTEM WITH DIR...
ANALYTICAL PERFORMANCE EVALUATION OF A MIMO FSO COMMUNICATION SYSTEM WITH DIR...ANALYTICAL PERFORMANCE EVALUATION OF A MIMO FSO COMMUNICATION SYSTEM WITH DIR...
ANALYTICAL PERFORMANCE EVALUATION OF A MIMO FSO COMMUNICATION SYSTEM WITH DIR...optljjournal
 
Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )optljjournal
 
Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )optljjournal
 
Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )optljjournal
 

More from optljjournal (20)

Integrated Optics and Lightwave : An International Journal
Integrated Optics and Lightwave : An International JournalIntegrated Optics and Lightwave : An International Journal
Integrated Optics and Lightwave : An International Journal
 
Integrated Optics and Lightwave : An International Journal ( OPTLJ )
Integrated Optics and Lightwave : An International Journal ( OPTLJ )Integrated Optics and Lightwave : An International Journal ( OPTLJ )
Integrated Optics and Lightwave : An International Journal ( OPTLJ )
 
Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )
 
Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )
 
Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )
 
Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )
 
Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )
 
Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )
 
Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )
 
Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )
 
ANALYTICAL PERFORMANCE EVALUATION OF AN LDPC CODED INDOOR OPTICAL WIRELESS CO...
ANALYTICAL PERFORMANCE EVALUATION OF AN LDPC CODED INDOOR OPTICAL WIRELESS CO...ANALYTICAL PERFORMANCE EVALUATION OF AN LDPC CODED INDOOR OPTICAL WIRELESS CO...
ANALYTICAL PERFORMANCE EVALUATION OF AN LDPC CODED INDOOR OPTICAL WIRELESS CO...
 
Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )
 
Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )
 
Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )
 
Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )
 
Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )
 
ANALYTICAL PERFORMANCE EVALUATION OF A MIMO FSO COMMUNICATION SYSTEM WITH DIR...
ANALYTICAL PERFORMANCE EVALUATION OF A MIMO FSO COMMUNICATION SYSTEM WITH DIR...ANALYTICAL PERFORMANCE EVALUATION OF A MIMO FSO COMMUNICATION SYSTEM WITH DIR...
ANALYTICAL PERFORMANCE EVALUATION OF A MIMO FSO COMMUNICATION SYSTEM WITH DIR...
 
Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )
 
Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )
 
Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )Integrated Optics and Light wave: An International Journal ( OPTLJ )
Integrated Optics and Light wave: An International Journal ( OPTLJ )
 

Recently uploaded

Study on Air-Water & Water-Water Heat Exchange in a Finned Tube Exchanger
Study on Air-Water & Water-Water Heat Exchange in a Finned Tube ExchangerStudy on Air-Water & Water-Water Heat Exchange in a Finned Tube Exchanger
Study on Air-Water & Water-Water Heat Exchange in a Finned Tube ExchangerAnamika Sarkar
 
MANUFACTURING PROCESS-II UNIT-5 NC MACHINE TOOLS
MANUFACTURING PROCESS-II UNIT-5 NC MACHINE TOOLSMANUFACTURING PROCESS-II UNIT-5 NC MACHINE TOOLS
MANUFACTURING PROCESS-II UNIT-5 NC MACHINE TOOLSSIVASHANKAR N
 
What are the advantages and disadvantages of membrane structures.pptx
What are the advantages and disadvantages of membrane structures.pptxWhat are the advantages and disadvantages of membrane structures.pptx
What are the advantages and disadvantages of membrane structures.pptxwendy cai
 
Internship report on mechanical engineering
Internship report on mechanical engineeringInternship report on mechanical engineering
Internship report on mechanical engineeringmalavadedarshan25
 
VIP Call Girls Service Kondapur Hyderabad Call +91-8250192130
VIP Call Girls Service Kondapur Hyderabad Call +91-8250192130VIP Call Girls Service Kondapur Hyderabad Call +91-8250192130
VIP Call Girls Service Kondapur Hyderabad Call +91-8250192130Suhani Kapoor
 
Analog to Digital and Digital to Analog Converter
Analog to Digital and Digital to Analog ConverterAnalog to Digital and Digital to Analog Converter
Analog to Digital and Digital to Analog ConverterAbhinavSharma374939
 
(PRIYA) Rajgurunagar Call Girls Just Call 7001035870 [ Cash on Delivery ] Pun...
(PRIYA) Rajgurunagar Call Girls Just Call 7001035870 [ Cash on Delivery ] Pun...(PRIYA) Rajgurunagar Call Girls Just Call 7001035870 [ Cash on Delivery ] Pun...
(PRIYA) Rajgurunagar Call Girls Just Call 7001035870 [ Cash on Delivery ] Pun...ranjana rawat
 
High Profile Call Girls Nashik Megha 7001305949 Independent Escort Service Na...
High Profile Call Girls Nashik Megha 7001305949 Independent Escort Service Na...High Profile Call Girls Nashik Megha 7001305949 Independent Escort Service Na...
High Profile Call Girls Nashik Megha 7001305949 Independent Escort Service Na...Call Girls in Nagpur High Profile
 
APPLICATIONS-AC/DC DRIVES-OPERATING CHARACTERISTICS
APPLICATIONS-AC/DC DRIVES-OPERATING CHARACTERISTICSAPPLICATIONS-AC/DC DRIVES-OPERATING CHARACTERISTICS
APPLICATIONS-AC/DC DRIVES-OPERATING CHARACTERISTICSKurinjimalarL3
 
HARDNESS, FRACTURE TOUGHNESS AND STRENGTH OF CERAMICS
HARDNESS, FRACTURE TOUGHNESS AND STRENGTH OF CERAMICSHARDNESS, FRACTURE TOUGHNESS AND STRENGTH OF CERAMICS
HARDNESS, FRACTURE TOUGHNESS AND STRENGTH OF CERAMICSRajkumarAkumalla
 
OSVC_Meta-Data based Simulation Automation to overcome Verification Challenge...
OSVC_Meta-Data based Simulation Automation to overcome Verification Challenge...OSVC_Meta-Data based Simulation Automation to overcome Verification Challenge...
OSVC_Meta-Data based Simulation Automation to overcome Verification Challenge...Soham Mondal
 
Call Girls Delhi {Jodhpur} 9711199012 high profile service
Call Girls Delhi {Jodhpur} 9711199012 high profile serviceCall Girls Delhi {Jodhpur} 9711199012 high profile service
Call Girls Delhi {Jodhpur} 9711199012 high profile servicerehmti665
 
Coefficient of Thermal Expansion and their Importance.pptx
Coefficient of Thermal Expansion and their Importance.pptxCoefficient of Thermal Expansion and their Importance.pptx
Coefficient of Thermal Expansion and their Importance.pptxAsutosh Ranjan
 
Architect Hassan Khalil Portfolio for 2024
Architect Hassan Khalil Portfolio for 2024Architect Hassan Khalil Portfolio for 2024
Architect Hassan Khalil Portfolio for 2024hassan khalil
 
(RIA) Call Girls Bhosari ( 7001035870 ) HI-Fi Pune Escorts Service
(RIA) Call Girls Bhosari ( 7001035870 ) HI-Fi Pune Escorts Service(RIA) Call Girls Bhosari ( 7001035870 ) HI-Fi Pune Escorts Service
(RIA) Call Girls Bhosari ( 7001035870 ) HI-Fi Pune Escorts Serviceranjana rawat
 
Microscopic Analysis of Ceramic Materials.pptx
Microscopic Analysis of Ceramic Materials.pptxMicroscopic Analysis of Ceramic Materials.pptx
Microscopic Analysis of Ceramic Materials.pptxpurnimasatapathy1234
 
Introduction to IEEE STANDARDS and its different types.pptx
Introduction to IEEE STANDARDS and its different types.pptxIntroduction to IEEE STANDARDS and its different types.pptx
Introduction to IEEE STANDARDS and its different types.pptxupamatechverse
 
Biology for Computer Engineers Course Handout.pptx
Biology for Computer Engineers Course Handout.pptxBiology for Computer Engineers Course Handout.pptx
Biology for Computer Engineers Course Handout.pptxDeepakSakkari2
 
High Profile Call Girls Nagpur Meera Call 7001035870 Meet With Nagpur Escorts
High Profile Call Girls Nagpur Meera Call 7001035870 Meet With Nagpur EscortsHigh Profile Call Girls Nagpur Meera Call 7001035870 Meet With Nagpur Escorts
High Profile Call Girls Nagpur Meera Call 7001035870 Meet With Nagpur EscortsCall Girls in Nagpur High Profile
 

Recently uploaded (20)

Study on Air-Water & Water-Water Heat Exchange in a Finned Tube Exchanger
Study on Air-Water & Water-Water Heat Exchange in a Finned Tube ExchangerStudy on Air-Water & Water-Water Heat Exchange in a Finned Tube Exchanger
Study on Air-Water & Water-Water Heat Exchange in a Finned Tube Exchanger
 
MANUFACTURING PROCESS-II UNIT-5 NC MACHINE TOOLS
MANUFACTURING PROCESS-II UNIT-5 NC MACHINE TOOLSMANUFACTURING PROCESS-II UNIT-5 NC MACHINE TOOLS
MANUFACTURING PROCESS-II UNIT-5 NC MACHINE TOOLS
 
What are the advantages and disadvantages of membrane structures.pptx
What are the advantages and disadvantages of membrane structures.pptxWhat are the advantages and disadvantages of membrane structures.pptx
What are the advantages and disadvantages of membrane structures.pptx
 
Internship report on mechanical engineering
Internship report on mechanical engineeringInternship report on mechanical engineering
Internship report on mechanical engineering
 
VIP Call Girls Service Kondapur Hyderabad Call +91-8250192130
VIP Call Girls Service Kondapur Hyderabad Call +91-8250192130VIP Call Girls Service Kondapur Hyderabad Call +91-8250192130
VIP Call Girls Service Kondapur Hyderabad Call +91-8250192130
 
Analog to Digital and Digital to Analog Converter
Analog to Digital and Digital to Analog ConverterAnalog to Digital and Digital to Analog Converter
Analog to Digital and Digital to Analog Converter
 
(PRIYA) Rajgurunagar Call Girls Just Call 7001035870 [ Cash on Delivery ] Pun...
(PRIYA) Rajgurunagar Call Girls Just Call 7001035870 [ Cash on Delivery ] Pun...(PRIYA) Rajgurunagar Call Girls Just Call 7001035870 [ Cash on Delivery ] Pun...
(PRIYA) Rajgurunagar Call Girls Just Call 7001035870 [ Cash on Delivery ] Pun...
 
★ CALL US 9953330565 ( HOT Young Call Girls In Badarpur delhi NCR
★ CALL US 9953330565 ( HOT Young Call Girls In Badarpur delhi NCR★ CALL US 9953330565 ( HOT Young Call Girls In Badarpur delhi NCR
★ CALL US 9953330565 ( HOT Young Call Girls In Badarpur delhi NCR
 
High Profile Call Girls Nashik Megha 7001305949 Independent Escort Service Na...
High Profile Call Girls Nashik Megha 7001305949 Independent Escort Service Na...High Profile Call Girls Nashik Megha 7001305949 Independent Escort Service Na...
High Profile Call Girls Nashik Megha 7001305949 Independent Escort Service Na...
 
APPLICATIONS-AC/DC DRIVES-OPERATING CHARACTERISTICS
APPLICATIONS-AC/DC DRIVES-OPERATING CHARACTERISTICSAPPLICATIONS-AC/DC DRIVES-OPERATING CHARACTERISTICS
APPLICATIONS-AC/DC DRIVES-OPERATING CHARACTERISTICS
 
HARDNESS, FRACTURE TOUGHNESS AND STRENGTH OF CERAMICS
HARDNESS, FRACTURE TOUGHNESS AND STRENGTH OF CERAMICSHARDNESS, FRACTURE TOUGHNESS AND STRENGTH OF CERAMICS
HARDNESS, FRACTURE TOUGHNESS AND STRENGTH OF CERAMICS
 
OSVC_Meta-Data based Simulation Automation to overcome Verification Challenge...
OSVC_Meta-Data based Simulation Automation to overcome Verification Challenge...OSVC_Meta-Data based Simulation Automation to overcome Verification Challenge...
OSVC_Meta-Data based Simulation Automation to overcome Verification Challenge...
 
Call Girls Delhi {Jodhpur} 9711199012 high profile service
Call Girls Delhi {Jodhpur} 9711199012 high profile serviceCall Girls Delhi {Jodhpur} 9711199012 high profile service
Call Girls Delhi {Jodhpur} 9711199012 high profile service
 
Coefficient of Thermal Expansion and their Importance.pptx
Coefficient of Thermal Expansion and their Importance.pptxCoefficient of Thermal Expansion and their Importance.pptx
Coefficient of Thermal Expansion and their Importance.pptx
 
Architect Hassan Khalil Portfolio for 2024
Architect Hassan Khalil Portfolio for 2024Architect Hassan Khalil Portfolio for 2024
Architect Hassan Khalil Portfolio for 2024
 
(RIA) Call Girls Bhosari ( 7001035870 ) HI-Fi Pune Escorts Service
(RIA) Call Girls Bhosari ( 7001035870 ) HI-Fi Pune Escorts Service(RIA) Call Girls Bhosari ( 7001035870 ) HI-Fi Pune Escorts Service
(RIA) Call Girls Bhosari ( 7001035870 ) HI-Fi Pune Escorts Service
 
Microscopic Analysis of Ceramic Materials.pptx
Microscopic Analysis of Ceramic Materials.pptxMicroscopic Analysis of Ceramic Materials.pptx
Microscopic Analysis of Ceramic Materials.pptx
 
Introduction to IEEE STANDARDS and its different types.pptx
Introduction to IEEE STANDARDS and its different types.pptxIntroduction to IEEE STANDARDS and its different types.pptx
Introduction to IEEE STANDARDS and its different types.pptx
 
Biology for Computer Engineers Course Handout.pptx
Biology for Computer Engineers Course Handout.pptxBiology for Computer Engineers Course Handout.pptx
Biology for Computer Engineers Course Handout.pptx
 
High Profile Call Girls Nagpur Meera Call 7001035870 Meet With Nagpur Escorts
High Profile Call Girls Nagpur Meera Call 7001035870 Meet With Nagpur EscortsHigh Profile Call Girls Nagpur Meera Call 7001035870 Meet With Nagpur Escorts
High Profile Call Girls Nagpur Meera Call 7001035870 Meet With Nagpur Escorts
 

VOICED SPEECH CHARACTERISATION BASED ON EMPIRICAL MODE DECOMPOSITION

  • 1. Integrated Optics and Lightwave:An International Journal(OPTLJ), Vol. 1, No.1 , 2016 1 VOICED SPEECH CHARACTERISATION BASED ON EMPIRICAL MODE DECOMPOSITION Mina Kemiha1 1 Department of electronic, Jijel University, Algeria ABSTRACT Empirical Mode Decomposition (EMD) is a tool for the analysis of multi-component signals. The EMD algorithm decomposes adaptively a given oscillation modes namely the functions of intrinsic mode (IMFs) extracted from the signal itself signal. The analysis method is no need for a basic function fixed a priori as conventional analytical methods (eg Fourier transform and the wavelet transform). In this paper, the algorithm of empirical mode decomposition (EMD) is proposed as an alternative to estimate the vocal tract formants characterizing the vocal tract. The proposed method was tested on natural speech. LPC analysis of the first three functions intrinsic modes using the autocorrelation is calculated; a comparison was made between the LPC analysis of the first three vowel of MFIs studied and the LPC analysis of the speech signal. KEYWORDS Empirical mode decomposition, intrinsinc mode function, LPC analysis. 1. INTRODUCTION Spectral analysis is one of the most common farming methods in signal processing, the class of so- called parametric methods expired enables better data spectral estimation was based model for determining the parameters of the latter. A parametric analysis method is analyzed by linear predictive coding LPC. LPC is defined as a method of encoding digital signal to analog years everything that has a particular value is provided by a linear function of the past values of the signal. Recently, a new temporal signal decomposition method called Empirical Mode Decomposition (EMD), has been introduced by Huang et al. [1] for processing data from nonstationary and nonlinear processes. The analysis is adaptive in contrast to traditional methods such as wavelets where the basic functions are fixed. The EMD has received more attention in terms of applications [2]-[3], interpretation [4]-[5], and improvement [6]-[7]. The major advantage of the EMD is that the basic functions are derived from the signal itself. The EMD is also used in speech analysis. In this paper, we combine EMD with linear prediction coding analysis (LPC); we exploit the characteristics of the empirical modes from the EMD to study a new approach. The remainder of the paper is organized as follows. Empirical mode decomposition (EMD) algorithm is defined in Section 2. EMD combined with LPC in Section 3. Results based on real speech signals are presented in Section 4. Finally, conclusions are given in Section 5.
  • 2. Integrated Optics and Lightwave:An International Journal(OPTLJ), Vol. 1, No.1 , 2016 2 2. EMPIRICAL MODE DECOMPOSITION The empirical mode decomposition has been proposed by Huang et al. as a new signal decomposition method for nonlinear and/or nonstationary signals [1]. Conventional signal analysis tools, such as Fourier or wavelet-based methods, require some predefined basis functions to represent a signal. Therefore, the EMD can be viewed as sub-band signal decomposition. The EMD relies on a fully data-driven mechanism that does not require any a priori known basis. The EMD decomposes a given signal into a collection of oscillatory modes, called intrinsic mode functions (IMFs). Each IMF can be viewed as a sub-band of the signal and represent fast to slow oscillations in the signal. The algorithm operates through the following steps: 1. Initialize the algorithm: 1j = , initialize residue )()(0 txtr = and fix the thresholdδ 2. Extract local maxima and minima of )(1 trj− 3. Compute the upper lower envelope )(tU j , )(tL j by cubic spline interpolation of local maxima and minima, respectively 4. Compute the mean envelope ( ) 2 )()( )( tLtU tm jj j + = 5. Compute the jth component )()()( 1 tmtrth jjj −= − 6. )(thj is processed as )(1 trj− . Let )()(0. thth jj = and )(, tm kj .......,1,0=k be the mean envelope of )(, th kj , then compute )()()( 1,1,, tmthth kjkjkj −− −= until 7. Compute the jth IMF as )()( , thtIMF kjj = 8. Update the residue )()()( 1 tIMFtrtr jjj −= − 9. Increase the sifting index j and repeat steps 2 to 8 until the number of local extrema in )(trj is less than 3 The signal reconstruction process x(t), which involves combining the IMFs formed from the EMD and the residual ∑= += N j Nj trtIMFtx 1 )()()( 3. EMD COMBINED WITH LPC To a better exploitation of IMFs, we operate an LPC analysis of the first tree IMFs of empirical mode decomposition of speech signal, in order to analyze the forming characterizing the speech signal [8]. 4. RESULTS AND DISCUSSION To illustrate the effectiveness of the method we performed numerical simulations. The proposed approach has been tested on natural speech signals presented by three vowel / a /, / i /, / u /, and its performance in terms of accuracy has been compared to that of the LPC analysis of speech signal. The sampling rate of all speech signals used in the experiment is 11 kHz. The formants are defined as the ordered resonances of the vocal-tract, from the lowest to the highest. Figure 2 shows the different modes obtained from the empirical mode decomposition of the signal of the vowel / a /, presented in Figure 1 and the residue of the last algorithm step. And similarly for the vowels / i / and / u /, an EMD decomposition was performed. In our approach, we proceed to an LPC analysis of the IMFs represented in figure 3 and its comparison to results of the same analysis operated on speech signal. The results are depicted in figures 3, 4 and 5 for vowel / to / and / i / and / u /
  • 3. Integrated Optics and Lightwave:An International Journal(OPTLJ), Vol. 1, No.1 , 2016 3 respectively. We can see easily that each component has the same number of zero crossings as extrema and is symmetric with respect to zero line. We note that the first mode corresponds naturally to the highest frequency, and the last one corresponds to the lowest frequency, we compute an LPC analysis of the three first intrinsic mode functions using the autocorrelation method. 0 0.05 0.1 0.15 0.2 0.25 0.3 0.35 0.4 0.45 -1 -0.8 -0.6 -0.4 -0.2 0 0.2 0.4 0.6 0.8 1 Time [s] Figure 1. Waveform of the vowel /a/. 0 200 400 600 800 1000 1200 1400 1600 1800 2000 -1 -0.5 0 0.5 1 0 200 400 600 800 1000 1200 1400 1600 1800 2000 -1 -0.5 0 0.5 1 0 200 400 600 800 1000 1200 1400 1600 1800 2000 -1 -0.5 0 0.5 1 Time [s] Figure 2. Waveform of the first tree IMFs of the vowel /a/.
  • 4. Integrated Optics and Lightwave:An International Journal(OPTLJ), Vol. 1, No.1 , 2016 4 0 0.02 0.04 0.06 0.08 0.1 0.12 0.14 0.16 0.18 0.2 -30 -20 -10 0 10 20 30 40 50 Frequence [Hz] x IMF1 IMF2 IMF3 Figure 3. Comparison of the LPC analysis of the vowel / a / and the LPC analysis of the tree first IMFs 0 0.05 0.1 0.15 0.2 0.25 0.3 0.35 -0.5 -0.4 -0.3 -0.2 -0.1 0 0.1 0.2 0.3 0.4 Time [s] Figure 4. Waveform of the vowel /i/.
  • 5. Integrated Optics and Lightwave:An International Journal(OPTLJ), Vol. 1, No.1 , 2016 5 0 200 400 600 800 1000 1200 1400 1600 1800 2000 2200 -0.4 -0.2 0 0.2 0.4 0 200 400 600 800 1000 1200 1400 1600 1800 2000 2200 -0.4 -0.2 0 0.2 0.4 0 200 400 600 800 1000 1200 1400 1600 1800 2000 2200 -0.4 -0.2 0 0.2 0.4 Time [s] Figure 5. Waveform of the first tree IMFs of the vowel /i/. 0 0.02 0.04 0.06 0.08 0.1 0.12 0.14 0.16 -30 -20 -10 0 10 20 30 40 50 60 70 Frequence [Hz] x IMF1 IMF2 IMF3 Figure 6. Comparison of the LPC analysis of the vowel / i / and the LPC analysis of the tree first IMFs
  • 6. Integrated Optics and Lightwave:An International Journal(OPTLJ), Vol. 1, No.1 , 2016 6 0 0.05 0.1 0.15 0.2 0.25 0.3 -0.4 -0.3 -0.2 -0.1 0 0.1 0.2 0.3 Time [s] Figure 4. Waveform of the vowel /u/. 0 500 1000 1500 2000 2500 -0.4 -0.2 0 0.2 0.4 0 500 1000 1500 2000 2500 -0.4 -0.2 0 0.2 0.4 0 500 1000 1500 2000 2500 -0.4 -0.2 0 0.2 0.4 Time [s] Figure 8. Waveform of the first tree IMFs of the vowel /u/.
  • 7. Integrated Optics and Lightwave:An International Journal(OPTLJ), Vol. 1, No.1 , 2016 7 0 0.02 0.04 0.06 0.08 0.1 0.12 0.14 0.16 -30 -20 -10 0 10 20 30 40 50 60 70 Frequence [Hz] x IMF1 IMF2 IMF3 Figure 9. Comparison of the LPC analysis of the vowel / u / and the LPC analysis of the tree first IMFs As shown by Figure 3, and figure 4 and figure 5, the first IMFs have not submitted the low frequency signals but only the high frequencies. These results can be interpreted by the frequency response of an equivalent filter while the collection of filters resulting equivalents of any of the LPC analysis of IMFs given vowel tends the estimation of formants of voice leading. Although EMD is a non-linear decomposition method, but the formants of the speech signal are preserved and properly evaluated as can be seen in table 1 and 2 and 3 which respectively presents a comparison between the values of formants obtained from the LPC analysis of the vowel / a /, and the vowel / i /, and the vowel / u / and the analysis LPC of their three first IMFs. Table 1. Comparison between the value of formants obtained by LPC analysis of the vowel / a / and the LPC analysis of these first three IMFs. F1 F2 F3 F4 Speech /a/ 0.002639 0.05116 0.1035 0.1406 IMF1 - - 0.1028 0.1403 IMF2 - 0.05224 - - IMF3 0.02785 - - - Table 2. Comparison between the value of formants obtained by LPC analysis of the vowel / i / and the LPC analysis of these first three IMFs. F1 F2 F3 F4 Speech /a/ 0.01188 0.08082 0.1098 0.1331 IMF1 - - 0.1098 0.1345 IMF2 - 0.07869 - - IMF3 0.01152 - - - .
  • 8. Integrated Optics and Lightwave:An International Journal(OPTLJ), Vol. 1, No.1 , 2016 8 F1 F2 F3 F4 Speech /a/ 0.01469 0.09805 0.1456 0.1909 IMF1 - - 0.1452 0.1899 IMF2 - 0.09506 - - IMF3 0.1678 - - - 5. CONCLUSIONS In this work, we have proposed a new methodology to decompose a speech signal into different oscillatory modes and to extract the resonant frequencies of the vocal tract i.e. formants from the LPC analysis of different intrinsic mode functions called IMFs. The combination of EMD with the LPC method allows the extraction and proper evaluation of different formants characterize different signals studied. REFERENCES [1] N.E. Huang and al. “The empirical mode decomposition and Hilbert spectrum for nonlinear and non- stationary time series analysis”. Proc. Royal Society, 1998,454(1971):903–995. [2] F. Salzenstein A.O. Boudraa, J.C. Cexus and L. Guillon. “ If estimation using empirical mode decomposition and nonlinear teager energy operator”. Proc. IEEE ISCCSP, Hammamet, 2004.,pp 45– 48. [3] A.O. Boudraa S. Benramdane, J.C. Cexus and J.A. Astolfi. “Transient turbulent pressure signal processing using empirical mode decomposition”. Proc. Physics in Signal and Image Processing, Mhoulouse, 2007. [4] P. Flandrin, G. Rilling, and P. Goncalves. “Empirical mode decomposition as a filter bank”. IEEE Sig. Proc. Lett., 11(2):112–114, 2004. [5] Z. Wu and N.E. Huang. “ A study of the characteristics of white noise using the empirical mode decomposition method”. Proc. Roy. Soc. London A, 2004,460:1597–1611. [6] B. Weng and K.E. Barner. “Optimal and bidirectional optimal empirical mode decomposition”. Proc. IEEE ICASSPToulouse, 2007, 3:1501–1504. [7] R. Deering and J.F. Kaiser. “The use of a masking signal to improve empirical mode decomposition”. Proc. IEEE Philadelphia, 2005. [8] Ai’cha Bouzid and Noureddine Ellouze. “voiced speech analysis empirical mode decomposition”. Springer 2007.pp 213-220.