SlideShare a Scribd company logo
International Journal of Electrical and Computer Engineering (IJECE)
Vol. 9, No. 1, February 2019, pp. 402~408
ISSN: 2088-8708, DOI: 10.11591/ijece.v9i1.pp402-408  402
Journal homepage: http://iaescore.com/journals/index.php/IJECE
Classification improvement of spoken arabic language based on
radial basis function
Thamir Rashed Saeed, Jabar Salman, Alaa Hussein Ali
Digital System Design and Pattern Recognition Research Group (DSDPRG), Smart Sensor System, Radar Signal
Processing, Pattern Recognition, Department of Electrical Engineering, University of Technology, Iraq
Article Info ABSTRACT
Article history:
Received Feb 8, 2018
Revised Jul 26, 2018
Accepted Aug 15, 2018
The important task in the computer interaction is the languages recognition
and classification. In the Arab world, there is a persistent need for the Arabic
spoken language recognition To help those who have lost the upper parties in
doing what they want through speech computer interaction. While, the
Arabic automatic speech recognition (AASR) did not receive the desired
attention from the researchers. In this paper, the Radial Basis Function (RBF)
is used for the improvement of the Arabic spoken language letter. The
recognition and classification process are based on three steps; these are;
preprocessing, feature extraction and classification (Recognition). The
Arabic Language Letters (ALL) recognition is done by using the
combination between the statistical features and the Temporal Radial Basis
Function for different letter situation and noisy condition. The recognition
percent are from 90% - 99.375% has been gained with independent speaker,
where these results are over-perform the earlier works by nearly 2.045%. The
simulation has been made by using Matlab 2015b.
Keywords:
Arabic language letters
Classification
Radial basis function
Copyright © 2019 Institute of Advanced Engineering and Science.
All rights reserved.
Corresponding Author:
Thamir Rashed Saeed,
Department of Electrical Engineering,
University of Technology, Iraq.
Email: thamir_rashed@yahoo.com
1. INTRODUCTION
The recognition and classification of the Arabic Langue Letter is the interesting subject in the
applications of Arabic computer interaction. The computer interaction is an important tool in the intelligent
systems and technologies. The Language recognition is speech recognition, and it is characterized as the way
toward changing over sound waves (acoustic discourse signals) to its relating set of words or other linguistic
units [1]. In this context, that recognition is based on a specific algorithm step, where these algorithms are
based on the feature extraction of the selected subject which is required to recognize it, while the features
represent the carrier of the speaker essence [2], [3]. Where, these features will be reduced to minimize the
efforts of digital signal processing applications [4], [5], [6], [7].
In this context, the speech signal also carries the information of the particular speaker, including
social factors, affective factor and the properties of the real voice production [8]. In effect, the speech has the
potential of being an important mode of interaction with the computer. Speech processing is one of the
exciting areas of signal processing [9]. The letters of the Arabic language are different from the rest of the
languages because the letter pronunciation is differed according to their position in the word. Also, their
pronunciation varies according to the impact of the word in the sentence. As well the letter pronunciation is
between the Arab countries according to their dialect.
The recognition process has been based on two phases, training, and testing. Where, the training
phase work with extracted features by using suitable neural network (NN) algorithm, and then use this
algorithm in testing phase. There are many NN algorithms types, the Radial Basis Function (RBF) is one of
Int J Elec & Comp Eng ISSN: 2088-8708 
Classification improvement of spoken arabic language based on radial… (Thamir Rashed Saeed)
403
the optimal algorithms in a noisy environment. In this context, this algorithm is a linear combination of radial
basis functions and can use in a function approximation, time series prediction, and control.
The advancement of this algorithm over the other is the faster convergence, smaller extrapolation errors and
higher reliability [10].
Since the last years, the researchers have been looking into optimal features and ways to recognize
the Arabic Language letters [11]. In this context and for the importance of the subject there are many types of
research in this area, some of these;
In [12] a Hidden Markov Model (HMM) is used as feature extraction algorithm, while the noise
reduction is made by using power spectral estimator, and the Gabor filter bank is used for the noise
separation in an acoustic event detection system. However, in [13] was used HMM with Mel frequency
Cepstral Coefficient (MFCC) features under no noise condition for speech recognition. While in [14] there
are five speech parameters have been used as features for speech recognition. These parameters are; Relative
Spectra Processing (RASTA), MFCC, Linear Predictive Coding (LPC) Analysis, Dynamic Time Wrapping
(DTW) and Zero Crossings with Peak Amplitudes (ZCPA). Where, RASTA and MFCC are Extracted as
features In addition to being factors, While LPC predicts as features based on previous features. In [15],
a Cepstral frequency coefficient and perceptual linear prediction have been presented as feature extraction
methods. While, Rasta filtering and Cepstral mean subtraction has presented as feature normalization
technique, with a combination of Gaussian mixture models (GMM) and linear/non-linear kernels which is
based on support vector machine (SVM) as speaker identification. In [16] an FFT is used as gender
identification, then use back-end system to create a gender model to recognize these genders with an average
of the accuracy 80%. The use of signal processing technique for speech recognition for a particular language
is presented in [17], while the feature extraction is based on the adopted algorithms. Also, the comparison
between these adopted algorithms is presented in [18]. A hybrid of HMM and Radial Basis Function (RBF)
was presented for continuous speech recognition with 65% recognition rate in [10].
The problem lies, in addition to the lack of interest in the research in the Arabic automatic speech
recognition, the most of the published papers dealing with an HMM algorithm. Where the accuracy of ASR
using HMM algorithm is affected by several factors; the phoneme set used; the number of HMM states
allocated for each phoneme and the duration of each phoneme, in addition to the noisy environments, thus
reducing this accuracy.
Therefore, this paper gives an overview of speech features extraction and the proposed work which
is consisting of three steps; preprocessing, feature extraction, classification and finally the comparison with
other works. This study has been dealt with differently letter position in the word, letter's impact of the word
in the sentence and letter pronunciation of different Arab country's dialect and. Also, the number of training
pattern has increased from 10-30 per class with a constant testing pattern for each class with the noisy
condition for recognition the independent speakers. Also, the proposed work has been based on the Radial
Basis Function Neural network with statistical features. Then the comparison has been made among the
previous works which are used HMM and other algorithms.
2. SPEECH FEATURE EXTRACTION
The structure of the vocal organs generates a wide variety of waveforms. These waveforms can be
broadly categorized into voiced and unvoiced speech; this categorization is made after the features
extraction [9]. In this context, two kinds of algorithms which are used for feature extraction; the first one is
related to speech processes, while the second is related to the results of these processes. Whilr, the feature
vectors are equivalent to the vectors of explanatory variables used in statistical procedures such as linear
regression [19]. Therefore, the features are;
a. Articulatory features
Articulatory features (AFs) have attracted interest from the speech recognition community, where,
these features describe the configuration of the human vocal tract and the properties of speech products.
The essential thought of this approach is to bear a proclivity to the articulatory occasions fundamental the
discourse flag. This portrayal is made out of classes depicting a basic articulatory properties of discourse
sounds, for example, put, way, voicing, lip adjusting, the opening between the lips, and the position of the
tongue.
b. Features based on perception system
The auditory system has been based on the sensory system for the feeling of hearing. The research
in speech recognition is dealing with the way in which the human can recognize the speech and use the
speech information to understand the spoken language [20]. In effect, the statistical features can be
considered as the second kind of features, but it's related to the first kind also. Therefore the statistical feature
can represent as an active feature in the speech recognition application.
 ISSN: 2088-8708
Int J Elec & Comp Eng, Vol. 9, No. 1, February 2019 : 402 - 408
404
3. PROPOSED WORK
The proposed work in this paper consists of three stages; preprocessing, statistical feature extraction,
and classification.
a. Preprocessing
The preprocessing stage is represented as preparing stage, where it prepares the signal to the feature
extraction stage. Therefore, this stage consists of five steps; these are; Salience is removed, Normalized, pre-
emphasis, Framing and windowing, and then take one frame. In this context, the salience removing is done to
reduce the size of data which need to process and keep the samples which contain the information only.
The normalization step is a limitation of the sample values which need to process it. Pre-emphasis is a signal
concentrated step and boosted the energy at the upper band frequency, while the framing is segmented step
also to reduce the process time and data size. One Arabic letter has been taken as an example in this stage as
in Figure 1. Where, the sound signal of a sad (‫)ص‬ letter from Arabic alphabet letters has been taken in real
environments, as in Figure (1a-b), then removing the effect of the environment. The preprocessing steps
results have further strengthened our confidence in the statistical features as the classification tools, where the
salience is removed, and normalization then framing and select one frame with a window which gives signal
effect with decreasing the number of process samples as shown in the Figure 1.
a) Original signal b) Removing salience
c ) Normalized d) After pre-emphases
e) Framing and windowing f) Windowing for one frame
Figure 1. Preprocessing stage
Int J Elec & Comp Eng ISSN: 2088-8708 
Classification improvement of spoken arabic language based on radial… (Thamir Rashed Saeed)
405
b. Statistical Features
Statistical features have represented the core of the signals, and It carries the spirit of the signal.
Where some of these features are; zero crossing rate, signal Energy, temporal centroid, d) energy entropy
(EE), RMS, spectral flux, Spectral energy, and MFCC. Where these features have been representing the
suitable features for the sound signal as in Figure 2. After preprocessing step, some clear-cut, effectively
feature was used instead of all extracted feature to reduce processing time while maintaining the accuracy.
a) Zero crossing rate b) Signal with Energy
c) Temporal centroid d) Energy entropy (EE)
e) RMS f) Spectral flux
g) Spectral energy h) MFCC
Figure 2. Statistical features of the sound signal (for Sad [ ‫ص‬ ] letter)
 ISSN: 2088-8708
Int J Elec & Comp Eng, Vol. 9, No. 1, February 2019 : 402 - 408
406
c. Classification
The classification stage has been based on the Radial Basis Function(RBF) neural network as shown
in Figure 3. This stage is affected by many factors, one of the most powerful ones is the number of training
and testing patterns. Therefore, the increasing of the training pattern will cause to undermine the similarity
between the patterns to appear the difference between these patterns. Many experiments have been done with
different letter position in the word, letter's impact of the word in the sentence and letter pronunciation of
different Arab country's dialect. In this context, the number of training pattern has also increased from 10-30
per class with ten testing pattern for each class. Tables 1, 2, 3, and 4. shown the results of classification of
different experimental parameters.
Figure 3. Radial Basis Function(RBF) neural network
Table 1. Recognition of Bee (‫ب‬ ) Letter with a Different Number of Training Patterns for Different Letter
position, impact and letter pronunciation of a different Arab country's dialect
Results %No of trainingResults %No of trainingResults %No of trainingLetters
903080205010‫ب‬
0302020010‫ج‬
0300201010‫س‬
030020010‫ك‬
10300204010‫ص‬
Table 2. Recognition of Bee (‫ب‬ ) Letter with a Different Number of Training Patterns for one Arab Country's
Dialect with Different Letter Position and Impact
Results %No of trainingResults %No of trainingResults %No of trainingLetters
98.333096.662091.6610‫ب‬
0303.3320010‫ج‬
0300201.6610‫س‬
030020010‫ك‬
1.66300206.6610‫ص‬
Table 3. Recognition of Bee (‫ب‬ ) Letter with a Different Number of Training Patterns for One Arab Country's
Dialect with Different Letter Position
Results %No of trainingResults %No of trainingResults %No of trainingLetters
99.3753098.8752096.87510‫ب‬
0301.2520010‫ج‬
0300200.62510‫س‬
030020010‫ك‬
0.625300202.510‫ص‬
Table 4. Classification by Using the Temporal Radial Basis Function(TRBF) Neural Network
‫ب‬‫ج‬‫س‬‫ك‬‫ص‬Letters
00.6250099.375%‫ب‬
000.62598.125%1.25‫ج‬
01.2598.125%0.6250‫س‬
097.5%00.62501.875‫ك‬
98.75%0001.25‫ص‬
Int J Elec & Comp Eng ISSN: 2088-8708 
Classification improvement of spoken arabic language based on radial… (Thamir Rashed Saeed)
407
The average classification is 95.9% for five letters in experimental which was conducted with
different parameters of letters situations, while the classification is 98.175% for one Arab country's dialect
with different letter position. Therefore, the advancement of the proposed algorithm has been proved by the
comparison between the results (classification) which has been gained with other work as presented in the
Table 5.
Table 5. Comparison proposed work with others
Ref Classification method Average Recognition %
[12] HMM 74.5%
[21] TMNN 90.7%
[22] MLP 96.3%
Previous work[23] MLFFNN 96.33%
Present work TRBFNN 98.175%
4. CONCLUSION
The recognition which is based on the combination of the statistical features with the Radial Basis
Function (RBF) as the recognition neural network algorithm are gaining an overperform the other
combinations by 1.845%. This advancement of that combination is caused by using RBF where in this
algorithm the hidden function is a Gaussian, while the Euclidean distance is computed from the test point to
the main center of each neuron. Therefore, the average recognition rate, which is a gain of that combination
is 98.175%. Also, the parameters which are effected on the Arabic letter classification are letter position in
the word, letter's impact of the word in the sentence and letter pronunciation of different Arab country's
dialect.
ACKNOWLEDGEMENTS
We would like to thank Asst. prof. Dr. Mahmmod M Hamza for his support and advice in
accomplishing our work.
REFERENCES
[1]. Khalid M.O, Nahar, Moustafa, Elshafei, Wasfi G, “Al-Khatib and Husni Al-Muhtaseb. Statistical Analysis of
Arabic Phonemes for Continuous Arabic Speech Recognition,” International Journal of Computer and Information
Technology, (ISSN: 2279 – 0764), vol. 01 no. 02, November 2012.
[2]. Srinivasa Perumal R, Nadesh R. K. and Senthil Kumar N. C., “Robust Face Recognition Using Enhanced Local
Binary Pattern,” Bulletin of Electrical Engineering and Informatics, vol. 7, no. 1, pp. 96-101, March 2018.
[3]. Shofwatul ‘Uyun and Lina Choridah. “Feature Selection Mammogram based on Breast Cancer Mining,”
International Journal of Electrical and Computer Engineering (IJECE), vol. 8, no. 1, pp. 60-69, February 2018.
[4]. Aws Al-Qaisi, Saleh A. Khawatreh, Ahmad A. Sharadqah, Ziad A. Alqadi, "Wave File Features Extraction Using
Reduced LBP", International Journal of Electrical and Computer Engineering (IJECE), vol 8, no. 5, Oct., part1,
2018.
[5]. Hussein Ali Aldelfy, Mahmood Hamza Al-Mufraji, Thamir R. Saeed, “Improved Key Frame Extraction Using
Discrete Wavelet Transform with Modified Threshold Factor,” Telecomminication Computing Electronics and
Control (TELKOMNIKA), vol.16, no.2, pp. 567-572, April 2018.
[6]. Hameed R. Farhan, Mahmuod H, “Al-Muifraje and Thamir R. Saeed. A Novel Face Recognition Method based on
One State of Discrete Hidden Markov Model,” IEEE Annual Conference on New Trends in Information &
Communications Technology Applications, pp. 7-9, March 2017.
[7]. Hameed R. Farhan, Mahmuod H. Al-Muifraje and Thamir R. Saeed, “Using only Two States of Discrete HMM for
High-Speed Face Recognition,” IEEE Al-Sadeq International Conference on Multidisciplinary in IT and
Communication Science and Applications, IRAQ, pp. 9-10, May, 2016.
[8]. Sadek Ali. “Gender Recognition System Using Speech Signal,” International Journal of Computer Science,
Engineering and Information Technology (IJCSEIT), vol. 2, no.1, February 2012.
[9]. Satyanand Singh. “Forensic and Automatic Speaker Recognition System,” IJECE, vol. 8, no. 5, Oct., part1, 2018.
[10]. Judith Justin and 2Ila Vennila. “A Hybrid Speech Recognition System with Hidden Markov Model and Redial
Basis Function Neural Network,” American Journal of Applied Sciences, vol. 10, no.10, 2013.
[11]. Megha Agrawal and Tina Raikwar, “Speech Recognition Using Signal Processing Techniques,” International
Journal of Engineering and Innovative Technology (IJEIT), vol. 5, no. 8, February 2016.
[12]. Jens Schro¨der, Benjamin Cauchi, Marc Rene´ Scha¨dler, Niko Moritz, Kamil Adiloglu, Jo¨rn Anemu¨ller, Simon
Doclo1, Birger Kollmeier and Stefan Goetze, “Acoustic Event Detection Using Signal Enhancement and Spectro-
Temporal Feature Extraction,” IEEE, Applications of Signal Processing to Audio and Acoustics (WASPAA), New
Paltz, NY, USA, 2013.
 ISSN: 2088-8708
Int J Elec & Comp Eng, Vol. 9, No. 1, February 2019 : 402 - 408
408
[13]. Shaik Shafee and Prof.B.Anuradha, “Isolated Telugu Speech Recognition using MFCC and Gamma Tone Features
by Radial Basis Networks in Noisy Environment,” International Journal of Innovative Research in Computer and
Communication Engineering, vol. 3, no. 3, March 2015.
[14]. Pratik K. Kurzekar, Ratnadeep R. Deshmukh, Vishal B. Waghmare, Pukhraj P. Shrishrimal, “A Comparative Study
of Feature Extraction Techniques for Speech Recognition System,” International Journal of Innovative Research in
Science, Engineering and Technology, vol. 3, no. 12, December 2014.
[15]. Imen TRABELSI, Dorra BEN AYED, “On the Use of Different Feature Extraction Methods for Linear and Non
Linear kernels,” IEEE Sciences of Electronics, Technologies and Telecommunications, March 21-24, Tunisia, 2012.
[16]. Sadek Ali, Shariful Islam and Alamgir Hossain, “Gender Recognition System Using Speech Signal,” International
Journal of Computer Science, Engineering and Information Technology (IJCSEIT), vol.2, no.1, February 2012.
[17]. Megha Agrawal, Tina Raikwar, “Speech Recognition Using Signal Processing Techniques,” International Journal
of Engineering and Innovative Technology (IJEIT), vol. 5, no. 8, February 2016.
[18]. M. Honda, “Human Speech Production Mechanisms,” NTT Technical Review, vol. 1, no. 2 May 2003.
[19]. Liu, H., Motoda H, “Feature Selection for Knowledge Discovery and Data Mining,” Kluwer Academic Publishers,
Norwell, MA, USA. The Springer International Series in Engineering and Computer Science book series (SECS),
vol. 454, 1998.
[20]. D. Kim, S. Lee, “Auditory Processing of Speech Signals for Robust Speech Recognition on Real World Noisy
Environment,” IEEE Transaction on Speech and Audio Processing, vol. 7, no. 1, 1999.
[21]. Khalid Saeed, “A New Feature Extraction Method for TMNN-Based Arabic Character Classification,” Computing
and Informatics, vol. 26, pp. 403-4020, 2007.
[22]. Manal El-Obaid, Amer Al-Nassir and Iman Abuel Maaly, "Arabic Phoneme Recognition using Neural Networks",
Proceeding SIP'06 Proceedings of the 5th WSEAS international conference on Signal processing, pp. 99-104,
Istanbul, Turkey-May, pp. 27-29, 2006.
[23]. Jabar Salman, Alaa Hussein Ali and Thamir Rashed Saeed, “Improve the Recognition of Arabic Sign Languages
Based on Statistical Features,” Accepted in Iraqi Journal of Computers, Communications, Control & Systems
Engineering (IJCCCE), 2018.
BIOGRAPHIES OF AUTHORS
Thamir Rashed Saeed was Born in Baghdad, Iraq, on February 10, 1965. He received the B.Sc.
Degree from military engineering college in Baghdad in 1987, the M.Sc. Degree from military
engineering college in Baghdad in 1994 and Ph.D. degree from AL-Rashed college of
engineering and Secinec in Baghdad 2003. From 1994 to 2003, he worked with military
engineering college in Baghdad as a member of teaching staff. From 2003 till now, he worked
with the University of Technology in Baghdad as a member of teaching staff. Currently, he is the
Asst. Professor of electrical engineering at university of Technology and a head of radar research
group in the Electrical Eng. Dept.. His major interests are in digital signal processing, digital
circuit design for DSP based on FPGA, sensor network and Pattern Recognition.
Jabbar Slman Hussain has born in 1974 in Baghdad, Iraq and he received the B.Sc. Degree in
electronic and communication engineering in 1998 from university of technology, department of
electrical and electronic engineering, Baghdad, Iraq. He obtained his M.Sc Degree in electronics
engineering from university of technology, department of electrical and electronic engineering,
Baghdad, Iraq, in 2001. He is working in university of technology, Baghdad, Iraq, as a lecturer in
the Department of Electrical Engineering, electronic branch. In the research field, is the active
member of Digital System Design and Pattern Recognition Research Group (DSDPRG)
Dr. Alaa Hussein Ali Al-Ameri was Born in Baghdad, Iraq on 1970. He received the B.Sc.
Degree from military engineering college in Baghdad in 1993, the M.Sc. Degree from military
engineering college in Baghdad in 2002 and Ph.D. degree from AL-Rashed college of
engineering and Science in Baghdad 2008. From 2003 till now, he worked with the University of
Technology in Baghdad as a member of teaching staff. Currently, he is the Asst. Professor of
electrical engineering at university of Technology.

More Related Content

PDF
Modeling of Speech Synthesis of Standard Arabic Using an Expert System
PDF
International journal of signal and image processing issues vol 2015 - no 1...
PDF
E0502 01 2327
PDF
IRJET - Language Linguist using Image Processing on Intelligent Transport Sys...
PDF
Kc3517481754
PDF
CURVELET BASED SPEECH RECOGNITION SYSTEM IN NOISY ENVIRONMENT: A STATISTICAL ...
PDF
An expert system for automatic reading of a text written in standard arabic
PDF
Ijetcas14 426
Modeling of Speech Synthesis of Standard Arabic Using an Expert System
International journal of signal and image processing issues vol 2015 - no 1...
E0502 01 2327
IRJET - Language Linguist using Image Processing on Intelligent Transport Sys...
Kc3517481754
CURVELET BASED SPEECH RECOGNITION SYSTEM IN NOISY ENVIRONMENT: A STATISTICAL ...
An expert system for automatic reading of a text written in standard arabic
Ijetcas14 426

What's hot (13)

PDF
COMBINED FEATURE EXTRACTION TECHNIQUES AND NAIVE BAYES CLASSIFIER FOR SPEECH ...
PDF
5215ijcseit01
PDF
PUNJABI SPEECH SYNTHESIS SYSTEM USING HTK
PDF
Extractive Summarization with Very Deep Pretrained Language Model
PDF
Hindi digits recognition system on speech data collected in different natural...
PDF
19 ijcse-01227
PDF
EXTRACTIVE SUMMARIZATION WITH VERY DEEP PRETRAINED LANGUAGE MODEL
PDF
Wavelet Based Feature Extraction for the Indonesian CV Syllables Sound
PDF
SPEAKER VERIFICATION USING ACOUSTIC AND PROSODIC FEATURES
PDF
Bachelors project summary
PDF
A Robust Speaker Identification System
PPTX
A Survey on Speaker Recognition System
PDF
BIDIRECTIONAL LONG SHORT-TERM MEMORY (BILSTM)WITH CONDITIONAL RANDOM FIELDS (...
COMBINED FEATURE EXTRACTION TECHNIQUES AND NAIVE BAYES CLASSIFIER FOR SPEECH ...
5215ijcseit01
PUNJABI SPEECH SYNTHESIS SYSTEM USING HTK
Extractive Summarization with Very Deep Pretrained Language Model
Hindi digits recognition system on speech data collected in different natural...
19 ijcse-01227
EXTRACTIVE SUMMARIZATION WITH VERY DEEP PRETRAINED LANGUAGE MODEL
Wavelet Based Feature Extraction for the Indonesian CV Syllables Sound
SPEAKER VERIFICATION USING ACOUSTIC AND PROSODIC FEATURES
Bachelors project summary
A Robust Speaker Identification System
A Survey on Speaker Recognition System
BIDIRECTIONAL LONG SHORT-TERM MEMORY (BILSTM)WITH CONDITIONAL RANDOM FIELDS (...
Ad

Similar to Classification improvement of spoken arabic language based on radial basis function (20)

PDF
Course report-islam-taharimul (1)
PDF
CURVELET BASED SPEECH RECOGNITION SYSTEM IN NOISY ENVIRONMENT: A STATISTICAL ...
PDF
Comparison and Analysis Of LDM and LMS for an Application of a Speech
PDF
A Review On Speech Feature Techniques And Classification Techniques
PDF
Emotional telugu speech signals classification based on k nn classifier
PDF
Emotional telugu speech signals classification based on k nn classifier
PDF
[IJET-V1I6P21] Authors : Easwari.N , Ponmuthuramalingam.P
PDF
Combined feature extraction techniques and naive bayes classifier for speech ...
PDF
COMBINED FEATURE EXTRACTION TECHNIQUES AND NAIVE BAYES CLASSIFIER FOR SPEECH ...
PDF
Bayesian distance metric learning and its application in automatic speaker re...
PDF
Speech emotion recognition with light gradient boosting decision trees machine
PDF
High level speaker specific features modeling in automatic speaker recognitio...
PDF
Comparison of Feature Extraction MFCC and LPC in Automatic Speech Recognition...
PDF
EFFECT OF MFCC BASED FEATURES FOR SPEECH SIGNAL ALIGNMENTS
PDF
Effect of MFCC Based Features for Speech Signal Alignments
PDF
Effect of MFCC Based Features for Speech Signal Alignments
PDF
ROBUST FEATURE EXTRACTION USING AUTOCORRELATION DOMAIN FOR NOISY SPEECH RECOG...
PDF
Intelligent Arabic letters speech recognition system based on mel frequency c...
PDF
Effect of Time Derivatives of MFCC Features on HMM Based Speech Recognition S...
PDF
Speech to text conversion for visually impaired person using µ law companding
Course report-islam-taharimul (1)
CURVELET BASED SPEECH RECOGNITION SYSTEM IN NOISY ENVIRONMENT: A STATISTICAL ...
Comparison and Analysis Of LDM and LMS for an Application of a Speech
A Review On Speech Feature Techniques And Classification Techniques
Emotional telugu speech signals classification based on k nn classifier
Emotional telugu speech signals classification based on k nn classifier
[IJET-V1I6P21] Authors : Easwari.N , Ponmuthuramalingam.P
Combined feature extraction techniques and naive bayes classifier for speech ...
COMBINED FEATURE EXTRACTION TECHNIQUES AND NAIVE BAYES CLASSIFIER FOR SPEECH ...
Bayesian distance metric learning and its application in automatic speaker re...
Speech emotion recognition with light gradient boosting decision trees machine
High level speaker specific features modeling in automatic speaker recognitio...
Comparison of Feature Extraction MFCC and LPC in Automatic Speech Recognition...
EFFECT OF MFCC BASED FEATURES FOR SPEECH SIGNAL ALIGNMENTS
Effect of MFCC Based Features for Speech Signal Alignments
Effect of MFCC Based Features for Speech Signal Alignments
ROBUST FEATURE EXTRACTION USING AUTOCORRELATION DOMAIN FOR NOISY SPEECH RECOG...
Intelligent Arabic letters speech recognition system based on mel frequency c...
Effect of Time Derivatives of MFCC Features on HMM Based Speech Recognition S...
Speech to text conversion for visually impaired person using µ law companding
Ad

More from IJECEIAES (20)

PDF
Redefining brain tumor segmentation: a cutting-edge convolutional neural netw...
PDF
Embedded machine learning-based road conditions and driving behavior monitoring
PDF
Advanced control scheme of doubly fed induction generator for wind turbine us...
PDF
Neural network optimizer of proportional-integral-differential controller par...
PDF
An improved modulation technique suitable for a three level flying capacitor ...
PDF
A review on features and methods of potential fishing zone
PDF
Electrical signal interference minimization using appropriate core material f...
PDF
Electric vehicle and photovoltaic advanced roles in enhancing the financial p...
PDF
Bibliometric analysis highlighting the role of women in addressing climate ch...
PDF
Voltage and frequency control of microgrid in presence of micro-turbine inter...
PDF
Enhancing battery system identification: nonlinear autoregressive modeling fo...
PDF
Smart grid deployment: from a bibliometric analysis to a survey
PDF
Use of analytical hierarchy process for selecting and prioritizing islanding ...
PDF
Enhancing of single-stage grid-connected photovoltaic system using fuzzy logi...
PDF
Enhancing photovoltaic system maximum power point tracking with fuzzy logic-b...
PDF
Adaptive synchronous sliding control for a robot manipulator based on neural ...
PDF
Remote field-programmable gate array laboratory for signal acquisition and de...
PDF
Detecting and resolving feature envy through automated machine learning and m...
PDF
Smart monitoring technique for solar cell systems using internet of things ba...
PDF
An efficient security framework for intrusion detection and prevention in int...
Redefining brain tumor segmentation: a cutting-edge convolutional neural netw...
Embedded machine learning-based road conditions and driving behavior monitoring
Advanced control scheme of doubly fed induction generator for wind turbine us...
Neural network optimizer of proportional-integral-differential controller par...
An improved modulation technique suitable for a three level flying capacitor ...
A review on features and methods of potential fishing zone
Electrical signal interference minimization using appropriate core material f...
Electric vehicle and photovoltaic advanced roles in enhancing the financial p...
Bibliometric analysis highlighting the role of women in addressing climate ch...
Voltage and frequency control of microgrid in presence of micro-turbine inter...
Enhancing battery system identification: nonlinear autoregressive modeling fo...
Smart grid deployment: from a bibliometric analysis to a survey
Use of analytical hierarchy process for selecting and prioritizing islanding ...
Enhancing of single-stage grid-connected photovoltaic system using fuzzy logi...
Enhancing photovoltaic system maximum power point tracking with fuzzy logic-b...
Adaptive synchronous sliding control for a robot manipulator based on neural ...
Remote field-programmable gate array laboratory for signal acquisition and de...
Detecting and resolving feature envy through automated machine learning and m...
Smart monitoring technique for solar cell systems using internet of things ba...
An efficient security framework for intrusion detection and prevention in int...

Recently uploaded (20)

PPTX
CYBER-CRIMES AND SECURITY A guide to understanding
PDF
Digital Logic Computer Design lecture notes
PPTX
M Tech Sem 1 Civil Engineering Environmental Sciences.pptx
PPTX
OOP with Java - Java Introduction (Basics)
PDF
Well-logging-methods_new................
PPTX
Current and future trends in Computer Vision.pptx
PDF
Automation-in-Manufacturing-Chapter-Introduction.pdf
PPTX
CH1 Production IntroductoryConcepts.pptx
DOCX
573137875-Attendance-Management-System-original
PDF
PRIZ Academy - 9 Windows Thinking Where to Invest Today to Win Tomorrow.pdf
PPT
introduction to datamining and warehousing
PPTX
MET 305 2019 SCHEME MODULE 2 COMPLETE.pptx
PPT
Project quality management in manufacturing
PPTX
CARTOGRAPHY AND GEOINFORMATION VISUALIZATION chapter1 NPTE (2).pptx
PDF
composite construction of structures.pdf
PDF
Enhancing Cyber Defense Against Zero-Day Attacks using Ensemble Neural Networks
PPTX
UNIT-1 - COAL BASED THERMAL POWER PLANTS
PDF
R24 SURVEYING LAB MANUAL for civil enggi
PPTX
Geodesy 1.pptx...............................................
PDF
The CXO Playbook 2025 – Future-Ready Strategies for C-Suite Leaders Cerebrai...
CYBER-CRIMES AND SECURITY A guide to understanding
Digital Logic Computer Design lecture notes
M Tech Sem 1 Civil Engineering Environmental Sciences.pptx
OOP with Java - Java Introduction (Basics)
Well-logging-methods_new................
Current and future trends in Computer Vision.pptx
Automation-in-Manufacturing-Chapter-Introduction.pdf
CH1 Production IntroductoryConcepts.pptx
573137875-Attendance-Management-System-original
PRIZ Academy - 9 Windows Thinking Where to Invest Today to Win Tomorrow.pdf
introduction to datamining and warehousing
MET 305 2019 SCHEME MODULE 2 COMPLETE.pptx
Project quality management in manufacturing
CARTOGRAPHY AND GEOINFORMATION VISUALIZATION chapter1 NPTE (2).pptx
composite construction of structures.pdf
Enhancing Cyber Defense Against Zero-Day Attacks using Ensemble Neural Networks
UNIT-1 - COAL BASED THERMAL POWER PLANTS
R24 SURVEYING LAB MANUAL for civil enggi
Geodesy 1.pptx...............................................
The CXO Playbook 2025 – Future-Ready Strategies for C-Suite Leaders Cerebrai...

Classification improvement of spoken arabic language based on radial basis function

  • 1. International Journal of Electrical and Computer Engineering (IJECE) Vol. 9, No. 1, February 2019, pp. 402~408 ISSN: 2088-8708, DOI: 10.11591/ijece.v9i1.pp402-408  402 Journal homepage: http://iaescore.com/journals/index.php/IJECE Classification improvement of spoken arabic language based on radial basis function Thamir Rashed Saeed, Jabar Salman, Alaa Hussein Ali Digital System Design and Pattern Recognition Research Group (DSDPRG), Smart Sensor System, Radar Signal Processing, Pattern Recognition, Department of Electrical Engineering, University of Technology, Iraq Article Info ABSTRACT Article history: Received Feb 8, 2018 Revised Jul 26, 2018 Accepted Aug 15, 2018 The important task in the computer interaction is the languages recognition and classification. In the Arab world, there is a persistent need for the Arabic spoken language recognition To help those who have lost the upper parties in doing what they want through speech computer interaction. While, the Arabic automatic speech recognition (AASR) did not receive the desired attention from the researchers. In this paper, the Radial Basis Function (RBF) is used for the improvement of the Arabic spoken language letter. The recognition and classification process are based on three steps; these are; preprocessing, feature extraction and classification (Recognition). The Arabic Language Letters (ALL) recognition is done by using the combination between the statistical features and the Temporal Radial Basis Function for different letter situation and noisy condition. The recognition percent are from 90% - 99.375% has been gained with independent speaker, where these results are over-perform the earlier works by nearly 2.045%. The simulation has been made by using Matlab 2015b. Keywords: Arabic language letters Classification Radial basis function Copyright © 2019 Institute of Advanced Engineering and Science. All rights reserved. Corresponding Author: Thamir Rashed Saeed, Department of Electrical Engineering, University of Technology, Iraq. Email: thamir_rashed@yahoo.com 1. INTRODUCTION The recognition and classification of the Arabic Langue Letter is the interesting subject in the applications of Arabic computer interaction. The computer interaction is an important tool in the intelligent systems and technologies. The Language recognition is speech recognition, and it is characterized as the way toward changing over sound waves (acoustic discourse signals) to its relating set of words or other linguistic units [1]. In this context, that recognition is based on a specific algorithm step, where these algorithms are based on the feature extraction of the selected subject which is required to recognize it, while the features represent the carrier of the speaker essence [2], [3]. Where, these features will be reduced to minimize the efforts of digital signal processing applications [4], [5], [6], [7]. In this context, the speech signal also carries the information of the particular speaker, including social factors, affective factor and the properties of the real voice production [8]. In effect, the speech has the potential of being an important mode of interaction with the computer. Speech processing is one of the exciting areas of signal processing [9]. The letters of the Arabic language are different from the rest of the languages because the letter pronunciation is differed according to their position in the word. Also, their pronunciation varies according to the impact of the word in the sentence. As well the letter pronunciation is between the Arab countries according to their dialect. The recognition process has been based on two phases, training, and testing. Where, the training phase work with extracted features by using suitable neural network (NN) algorithm, and then use this algorithm in testing phase. There are many NN algorithms types, the Radial Basis Function (RBF) is one of
  • 2. Int J Elec & Comp Eng ISSN: 2088-8708  Classification improvement of spoken arabic language based on radial… (Thamir Rashed Saeed) 403 the optimal algorithms in a noisy environment. In this context, this algorithm is a linear combination of radial basis functions and can use in a function approximation, time series prediction, and control. The advancement of this algorithm over the other is the faster convergence, smaller extrapolation errors and higher reliability [10]. Since the last years, the researchers have been looking into optimal features and ways to recognize the Arabic Language letters [11]. In this context and for the importance of the subject there are many types of research in this area, some of these; In [12] a Hidden Markov Model (HMM) is used as feature extraction algorithm, while the noise reduction is made by using power spectral estimator, and the Gabor filter bank is used for the noise separation in an acoustic event detection system. However, in [13] was used HMM with Mel frequency Cepstral Coefficient (MFCC) features under no noise condition for speech recognition. While in [14] there are five speech parameters have been used as features for speech recognition. These parameters are; Relative Spectra Processing (RASTA), MFCC, Linear Predictive Coding (LPC) Analysis, Dynamic Time Wrapping (DTW) and Zero Crossings with Peak Amplitudes (ZCPA). Where, RASTA and MFCC are Extracted as features In addition to being factors, While LPC predicts as features based on previous features. In [15], a Cepstral frequency coefficient and perceptual linear prediction have been presented as feature extraction methods. While, Rasta filtering and Cepstral mean subtraction has presented as feature normalization technique, with a combination of Gaussian mixture models (GMM) and linear/non-linear kernels which is based on support vector machine (SVM) as speaker identification. In [16] an FFT is used as gender identification, then use back-end system to create a gender model to recognize these genders with an average of the accuracy 80%. The use of signal processing technique for speech recognition for a particular language is presented in [17], while the feature extraction is based on the adopted algorithms. Also, the comparison between these adopted algorithms is presented in [18]. A hybrid of HMM and Radial Basis Function (RBF) was presented for continuous speech recognition with 65% recognition rate in [10]. The problem lies, in addition to the lack of interest in the research in the Arabic automatic speech recognition, the most of the published papers dealing with an HMM algorithm. Where the accuracy of ASR using HMM algorithm is affected by several factors; the phoneme set used; the number of HMM states allocated for each phoneme and the duration of each phoneme, in addition to the noisy environments, thus reducing this accuracy. Therefore, this paper gives an overview of speech features extraction and the proposed work which is consisting of three steps; preprocessing, feature extraction, classification and finally the comparison with other works. This study has been dealt with differently letter position in the word, letter's impact of the word in the sentence and letter pronunciation of different Arab country's dialect and. Also, the number of training pattern has increased from 10-30 per class with a constant testing pattern for each class with the noisy condition for recognition the independent speakers. Also, the proposed work has been based on the Radial Basis Function Neural network with statistical features. Then the comparison has been made among the previous works which are used HMM and other algorithms. 2. SPEECH FEATURE EXTRACTION The structure of the vocal organs generates a wide variety of waveforms. These waveforms can be broadly categorized into voiced and unvoiced speech; this categorization is made after the features extraction [9]. In this context, two kinds of algorithms which are used for feature extraction; the first one is related to speech processes, while the second is related to the results of these processes. Whilr, the feature vectors are equivalent to the vectors of explanatory variables used in statistical procedures such as linear regression [19]. Therefore, the features are; a. Articulatory features Articulatory features (AFs) have attracted interest from the speech recognition community, where, these features describe the configuration of the human vocal tract and the properties of speech products. The essential thought of this approach is to bear a proclivity to the articulatory occasions fundamental the discourse flag. This portrayal is made out of classes depicting a basic articulatory properties of discourse sounds, for example, put, way, voicing, lip adjusting, the opening between the lips, and the position of the tongue. b. Features based on perception system The auditory system has been based on the sensory system for the feeling of hearing. The research in speech recognition is dealing with the way in which the human can recognize the speech and use the speech information to understand the spoken language [20]. In effect, the statistical features can be considered as the second kind of features, but it's related to the first kind also. Therefore the statistical feature can represent as an active feature in the speech recognition application.
  • 3.  ISSN: 2088-8708 Int J Elec & Comp Eng, Vol. 9, No. 1, February 2019 : 402 - 408 404 3. PROPOSED WORK The proposed work in this paper consists of three stages; preprocessing, statistical feature extraction, and classification. a. Preprocessing The preprocessing stage is represented as preparing stage, where it prepares the signal to the feature extraction stage. Therefore, this stage consists of five steps; these are; Salience is removed, Normalized, pre- emphasis, Framing and windowing, and then take one frame. In this context, the salience removing is done to reduce the size of data which need to process and keep the samples which contain the information only. The normalization step is a limitation of the sample values which need to process it. Pre-emphasis is a signal concentrated step and boosted the energy at the upper band frequency, while the framing is segmented step also to reduce the process time and data size. One Arabic letter has been taken as an example in this stage as in Figure 1. Where, the sound signal of a sad (‫)ص‬ letter from Arabic alphabet letters has been taken in real environments, as in Figure (1a-b), then removing the effect of the environment. The preprocessing steps results have further strengthened our confidence in the statistical features as the classification tools, where the salience is removed, and normalization then framing and select one frame with a window which gives signal effect with decreasing the number of process samples as shown in the Figure 1. a) Original signal b) Removing salience c ) Normalized d) After pre-emphases e) Framing and windowing f) Windowing for one frame Figure 1. Preprocessing stage
  • 4. Int J Elec & Comp Eng ISSN: 2088-8708  Classification improvement of spoken arabic language based on radial… (Thamir Rashed Saeed) 405 b. Statistical Features Statistical features have represented the core of the signals, and It carries the spirit of the signal. Where some of these features are; zero crossing rate, signal Energy, temporal centroid, d) energy entropy (EE), RMS, spectral flux, Spectral energy, and MFCC. Where these features have been representing the suitable features for the sound signal as in Figure 2. After preprocessing step, some clear-cut, effectively feature was used instead of all extracted feature to reduce processing time while maintaining the accuracy. a) Zero crossing rate b) Signal with Energy c) Temporal centroid d) Energy entropy (EE) e) RMS f) Spectral flux g) Spectral energy h) MFCC Figure 2. Statistical features of the sound signal (for Sad [ ‫ص‬ ] letter)
  • 5.  ISSN: 2088-8708 Int J Elec & Comp Eng, Vol. 9, No. 1, February 2019 : 402 - 408 406 c. Classification The classification stage has been based on the Radial Basis Function(RBF) neural network as shown in Figure 3. This stage is affected by many factors, one of the most powerful ones is the number of training and testing patterns. Therefore, the increasing of the training pattern will cause to undermine the similarity between the patterns to appear the difference between these patterns. Many experiments have been done with different letter position in the word, letter's impact of the word in the sentence and letter pronunciation of different Arab country's dialect. In this context, the number of training pattern has also increased from 10-30 per class with ten testing pattern for each class. Tables 1, 2, 3, and 4. shown the results of classification of different experimental parameters. Figure 3. Radial Basis Function(RBF) neural network Table 1. Recognition of Bee (‫ب‬ ) Letter with a Different Number of Training Patterns for Different Letter position, impact and letter pronunciation of a different Arab country's dialect Results %No of trainingResults %No of trainingResults %No of trainingLetters 903080205010‫ب‬ 0302020010‫ج‬ 0300201010‫س‬ 030020010‫ك‬ 10300204010‫ص‬ Table 2. Recognition of Bee (‫ب‬ ) Letter with a Different Number of Training Patterns for one Arab Country's Dialect with Different Letter Position and Impact Results %No of trainingResults %No of trainingResults %No of trainingLetters 98.333096.662091.6610‫ب‬ 0303.3320010‫ج‬ 0300201.6610‫س‬ 030020010‫ك‬ 1.66300206.6610‫ص‬ Table 3. Recognition of Bee (‫ب‬ ) Letter with a Different Number of Training Patterns for One Arab Country's Dialect with Different Letter Position Results %No of trainingResults %No of trainingResults %No of trainingLetters 99.3753098.8752096.87510‫ب‬ 0301.2520010‫ج‬ 0300200.62510‫س‬ 030020010‫ك‬ 0.625300202.510‫ص‬ Table 4. Classification by Using the Temporal Radial Basis Function(TRBF) Neural Network ‫ب‬‫ج‬‫س‬‫ك‬‫ص‬Letters 00.6250099.375%‫ب‬ 000.62598.125%1.25‫ج‬ 01.2598.125%0.6250‫س‬ 097.5%00.62501.875‫ك‬ 98.75%0001.25‫ص‬
  • 6. Int J Elec & Comp Eng ISSN: 2088-8708  Classification improvement of spoken arabic language based on radial… (Thamir Rashed Saeed) 407 The average classification is 95.9% for five letters in experimental which was conducted with different parameters of letters situations, while the classification is 98.175% for one Arab country's dialect with different letter position. Therefore, the advancement of the proposed algorithm has been proved by the comparison between the results (classification) which has been gained with other work as presented in the Table 5. Table 5. Comparison proposed work with others Ref Classification method Average Recognition % [12] HMM 74.5% [21] TMNN 90.7% [22] MLP 96.3% Previous work[23] MLFFNN 96.33% Present work TRBFNN 98.175% 4. CONCLUSION The recognition which is based on the combination of the statistical features with the Radial Basis Function (RBF) as the recognition neural network algorithm are gaining an overperform the other combinations by 1.845%. This advancement of that combination is caused by using RBF where in this algorithm the hidden function is a Gaussian, while the Euclidean distance is computed from the test point to the main center of each neuron. Therefore, the average recognition rate, which is a gain of that combination is 98.175%. Also, the parameters which are effected on the Arabic letter classification are letter position in the word, letter's impact of the word in the sentence and letter pronunciation of different Arab country's dialect. ACKNOWLEDGEMENTS We would like to thank Asst. prof. Dr. Mahmmod M Hamza for his support and advice in accomplishing our work. REFERENCES [1]. Khalid M.O, Nahar, Moustafa, Elshafei, Wasfi G, “Al-Khatib and Husni Al-Muhtaseb. Statistical Analysis of Arabic Phonemes for Continuous Arabic Speech Recognition,” International Journal of Computer and Information Technology, (ISSN: 2279 – 0764), vol. 01 no. 02, November 2012. [2]. Srinivasa Perumal R, Nadesh R. K. and Senthil Kumar N. C., “Robust Face Recognition Using Enhanced Local Binary Pattern,” Bulletin of Electrical Engineering and Informatics, vol. 7, no. 1, pp. 96-101, March 2018. [3]. Shofwatul ‘Uyun and Lina Choridah. “Feature Selection Mammogram based on Breast Cancer Mining,” International Journal of Electrical and Computer Engineering (IJECE), vol. 8, no. 1, pp. 60-69, February 2018. [4]. Aws Al-Qaisi, Saleh A. Khawatreh, Ahmad A. Sharadqah, Ziad A. Alqadi, "Wave File Features Extraction Using Reduced LBP", International Journal of Electrical and Computer Engineering (IJECE), vol 8, no. 5, Oct., part1, 2018. [5]. Hussein Ali Aldelfy, Mahmood Hamza Al-Mufraji, Thamir R. Saeed, “Improved Key Frame Extraction Using Discrete Wavelet Transform with Modified Threshold Factor,” Telecomminication Computing Electronics and Control (TELKOMNIKA), vol.16, no.2, pp. 567-572, April 2018. [6]. Hameed R. Farhan, Mahmuod H, “Al-Muifraje and Thamir R. Saeed. A Novel Face Recognition Method based on One State of Discrete Hidden Markov Model,” IEEE Annual Conference on New Trends in Information & Communications Technology Applications, pp. 7-9, March 2017. [7]. Hameed R. Farhan, Mahmuod H. Al-Muifraje and Thamir R. Saeed, “Using only Two States of Discrete HMM for High-Speed Face Recognition,” IEEE Al-Sadeq International Conference on Multidisciplinary in IT and Communication Science and Applications, IRAQ, pp. 9-10, May, 2016. [8]. Sadek Ali. “Gender Recognition System Using Speech Signal,” International Journal of Computer Science, Engineering and Information Technology (IJCSEIT), vol. 2, no.1, February 2012. [9]. Satyanand Singh. “Forensic and Automatic Speaker Recognition System,” IJECE, vol. 8, no. 5, Oct., part1, 2018. [10]. Judith Justin and 2Ila Vennila. “A Hybrid Speech Recognition System with Hidden Markov Model and Redial Basis Function Neural Network,” American Journal of Applied Sciences, vol. 10, no.10, 2013. [11]. Megha Agrawal and Tina Raikwar, “Speech Recognition Using Signal Processing Techniques,” International Journal of Engineering and Innovative Technology (IJEIT), vol. 5, no. 8, February 2016. [12]. Jens Schro¨der, Benjamin Cauchi, Marc Rene´ Scha¨dler, Niko Moritz, Kamil Adiloglu, Jo¨rn Anemu¨ller, Simon Doclo1, Birger Kollmeier and Stefan Goetze, “Acoustic Event Detection Using Signal Enhancement and Spectro- Temporal Feature Extraction,” IEEE, Applications of Signal Processing to Audio and Acoustics (WASPAA), New Paltz, NY, USA, 2013.
  • 7.  ISSN: 2088-8708 Int J Elec & Comp Eng, Vol. 9, No. 1, February 2019 : 402 - 408 408 [13]. Shaik Shafee and Prof.B.Anuradha, “Isolated Telugu Speech Recognition using MFCC and Gamma Tone Features by Radial Basis Networks in Noisy Environment,” International Journal of Innovative Research in Computer and Communication Engineering, vol. 3, no. 3, March 2015. [14]. Pratik K. Kurzekar, Ratnadeep R. Deshmukh, Vishal B. Waghmare, Pukhraj P. Shrishrimal, “A Comparative Study of Feature Extraction Techniques for Speech Recognition System,” International Journal of Innovative Research in Science, Engineering and Technology, vol. 3, no. 12, December 2014. [15]. Imen TRABELSI, Dorra BEN AYED, “On the Use of Different Feature Extraction Methods for Linear and Non Linear kernels,” IEEE Sciences of Electronics, Technologies and Telecommunications, March 21-24, Tunisia, 2012. [16]. Sadek Ali, Shariful Islam and Alamgir Hossain, “Gender Recognition System Using Speech Signal,” International Journal of Computer Science, Engineering and Information Technology (IJCSEIT), vol.2, no.1, February 2012. [17]. Megha Agrawal, Tina Raikwar, “Speech Recognition Using Signal Processing Techniques,” International Journal of Engineering and Innovative Technology (IJEIT), vol. 5, no. 8, February 2016. [18]. M. Honda, “Human Speech Production Mechanisms,” NTT Technical Review, vol. 1, no. 2 May 2003. [19]. Liu, H., Motoda H, “Feature Selection for Knowledge Discovery and Data Mining,” Kluwer Academic Publishers, Norwell, MA, USA. The Springer International Series in Engineering and Computer Science book series (SECS), vol. 454, 1998. [20]. D. Kim, S. Lee, “Auditory Processing of Speech Signals for Robust Speech Recognition on Real World Noisy Environment,” IEEE Transaction on Speech and Audio Processing, vol. 7, no. 1, 1999. [21]. Khalid Saeed, “A New Feature Extraction Method for TMNN-Based Arabic Character Classification,” Computing and Informatics, vol. 26, pp. 403-4020, 2007. [22]. Manal El-Obaid, Amer Al-Nassir and Iman Abuel Maaly, "Arabic Phoneme Recognition using Neural Networks", Proceeding SIP'06 Proceedings of the 5th WSEAS international conference on Signal processing, pp. 99-104, Istanbul, Turkey-May, pp. 27-29, 2006. [23]. Jabar Salman, Alaa Hussein Ali and Thamir Rashed Saeed, “Improve the Recognition of Arabic Sign Languages Based on Statistical Features,” Accepted in Iraqi Journal of Computers, Communications, Control & Systems Engineering (IJCCCE), 2018. BIOGRAPHIES OF AUTHORS Thamir Rashed Saeed was Born in Baghdad, Iraq, on February 10, 1965. He received the B.Sc. Degree from military engineering college in Baghdad in 1987, the M.Sc. Degree from military engineering college in Baghdad in 1994 and Ph.D. degree from AL-Rashed college of engineering and Secinec in Baghdad 2003. From 1994 to 2003, he worked with military engineering college in Baghdad as a member of teaching staff. From 2003 till now, he worked with the University of Technology in Baghdad as a member of teaching staff. Currently, he is the Asst. Professor of electrical engineering at university of Technology and a head of radar research group in the Electrical Eng. Dept.. His major interests are in digital signal processing, digital circuit design for DSP based on FPGA, sensor network and Pattern Recognition. Jabbar Slman Hussain has born in 1974 in Baghdad, Iraq and he received the B.Sc. Degree in electronic and communication engineering in 1998 from university of technology, department of electrical and electronic engineering, Baghdad, Iraq. He obtained his M.Sc Degree in electronics engineering from university of technology, department of electrical and electronic engineering, Baghdad, Iraq, in 2001. He is working in university of technology, Baghdad, Iraq, as a lecturer in the Department of Electrical Engineering, electronic branch. In the research field, is the active member of Digital System Design and Pattern Recognition Research Group (DSDPRG) Dr. Alaa Hussein Ali Al-Ameri was Born in Baghdad, Iraq on 1970. He received the B.Sc. Degree from military engineering college in Baghdad in 1993, the M.Sc. Degree from military engineering college in Baghdad in 2002 and Ph.D. degree from AL-Rashed college of engineering and Science in Baghdad 2008. From 2003 till now, he worked with the University of Technology in Baghdad as a member of teaching staff. Currently, he is the Asst. Professor of electrical engineering at university of Technology.