SlideShare a Scribd company logo
Informatics Engineering, an International Journal (IEIJ) ,Vol.2, No.1, March 2014
1
AN EFFICIENT FEATURE EXTRACTION METHOD WITH
LOCAL REGION ZERNIKE MOMENT FOR FACIAL
RECOGNITION OF IDENTICAL TWINS
Zahra Ahmadi-Dastjerdi1
and Karim Faez2
1
Department of Electrical,Computer and Biomedical Engineering, Qazvin branch, Islamic
Azad University, Qazvin, Iran
2
Department of Electrical Engineering, Amirkabir University of Technology, Tehran,
Iran
ABSTRACT
Face recognition is one of the most challenging problems in the domain of image processing and machine
vision. The face recognition system is critical when individuals have very similar biometric signature such
as identical twins. In this paper, the facial area in an image is detected using AdaBoost approach. After
that the facial area is divided into some local regions. Finally, new efficient facial-based identical twins
feature extractor based on the geometric moment is applied into local regions of face image.The utilized
geometric moment is Zernike Moment (ZM) as a feature extractor inside the local regions of facial area of
identical twins images. The proposed method is evaluated on two datasets, Twins Days Festival and
Iranian Twin Society which contain scaled and rotated facial images of identical twins in different
illuminations. The results prove the ability of proposed method to recognize a pair of identical twins.Also,
results show that the proposed method is robust to rotation, scaling and changing illumination.
KEYWORDS
Face Recognition,Identical Twins,Invariant Moment, Zernike Moment
1. INTRODUCTION
Human face is considered as a suitable property to identify people from his (her) image. Along
with this property, recognition of facial of identical twin is one of the most challenging problems
in pattern recognition applications because of the similarity between the pair of twin.
In the domain of facial identical twins recognition, previous works are listed as: in[12], Klare and
Jain introduced a face detection algorithm which includes three levels. In the first level, an overall
appearance of the face is constructed; in the second level, exact geometric and structural
embedment of face with differentiating between two similar faces are performed; and finally, the
third level consists of process of skin disorders such as wounds, and so on. Sun et al. [16] utilized
Cognitec FaceVACS system to recognize identical twins from CASIA Multimodal Biometrics
Database and they obtained the true accept rate of approximately 90% at a false accept rate
greater than 10%. Park et al.[14] proposed an identical twins recognition algorithm that consists
of three steps: in first step, the proposed method consists of face images which are marked using
normal geometric methods; in the second step, the Euclidean distance between a pair of markers
are measured and compared; and the final step involves finding the strong similarity on the
Informatics Engineering, an International Journal (IEIJ) ,Vol.2, No.1, March 2014
2
marked regions. Srinivas et al. [15] studied on distinguishing of twins using marks on the face
image. Martin et al. [3] employed DNA approach to recognize identical twins.
In this paper, we study on a pair of facial images in order to determine whether the images belong
to the same person or to a pair of identical twin. For this purpose, we propose the geometric
moments to extract feature vector from facial images of twins to recognize identical twins.
This paper is organized as follow: feature extraction step of a face recognition system
isintroduced in Section 2. The proposed method is presented in Section 3. Experimentalresults are
described in Section 4 and the paper will be concluded in Section 5.
2. FEATURE EXTRACTION
Each face detection system contains four steps: pre-processing, face localization, feature
extraction and classification. Feature extraction refers to the extraction of useful information from
raw data so that they are suitable for the classification process. The feature extraction stage is
characterized by a series of input patterns. The major problem of feature extraction is that it
depends on application and feature extraction methods are not public.
Feature extraction methods can be divided into two majors: structural features and statistical
features [11][19]. The first group is based on local structure of image. In other words, the
structural features deals with local data. Facial change or change in environmental conditions is
the major problem for the structural features [7].
In the statistics-based feature extraction techniques, global data is employed to create a set of
feature vector elements in order to perform recognition. A mixture of irrelevant data, which are
usually part of a facial image, may result in an incorrect set of feature vector elements. Therefore,
data that are irrelevant to facial portion such as hair, shoulders, and background should be is
regarded in the feature extraction phase [10].The statistics-based feature extraction techniques are
Principle Component Analysis (PCA), Legender Moment (LM) [13] and Zernike Moments (ZM)
[20]. Legendre functions are Legendre differential equation. The main advantage is that Legendre
moments like Legendre basis functions are orthogonal. Legendre moments are independent of
each other and are free of data redundancy.In this study, we use ZM to recognize identical twins
that are presented in the next Section.
3. PROPOSED METHOD
The main goal of this paper is to distinguish the identical twins by face recognition. For this
purpose, AdaBoost [18] technique is used for face localization step and subimage creation. In the
next step, the subimage will be divided into regions. After that the ZM technique is employed in
each region to extract the feature vector from the region in the subimage of test image. After that
the feature vectors inside the subimages of all images in dataset are obtained using ZM approach.
Finally, comparison between the feature vector of test image and the feature vectors of all images
of dataset is done to select the closest image from dataset as the pair of test image. In the next
Section, the AdaBoost face detection, ZM and its task of feature vector creation are described.
3.1. Face Detection Method
As the mentioned before, face detection step is the second step of this algorithm to recognize
identical twins. This step is based on the combing of successively more complex classifiers in a
Informatics Engineering, an International Journal (IEIJ) ,Vol.2, No.1, March 2014
3
cascade structure using AdaBoost [18]. Furthermore, the AdaBoost technique is used to select a
small number of Haar-like features [18].
After finding an object in an image as a face candidate, an ellipse is drowning around the main
location of face in an image[8]. For this purpose, an ellipse model is constructed using five
parameters: X0 and Y0 are the centers of the ellipse, θ is the orientation, αand β are the minor and
the major axes of the ellipse, respectively. Before the calculation of theseparameters, geometric
moments are required to describe. The geometric moments of orderp+q of a digitalimageare
defined as
= ∑ ∑ ( , ) (1)
where p, q = 0, 1, 2, … and f(x, y) is the grey-scale value of the digital image at x and ylocation.
The translation invariant central moments are obtained by placing origin at thecenter of the
image:
= ∑ ∑ ( , )( − ) ( − ) (2)
where = and = yare the centers of the connected components. Thus, centerof gravity
of the connected components is used as the center of the ellipse. The orientationof the ellipse is
computed by determining the least moment of inertia [8].
= arctan( ) (3)
where shows the central moment of the connected components as described in (2). The length
of the major and the minor axes of the best-fit ellipse can also be computed byevaluating the
moment of inertia. With the least and the greatest moments of inertia of anellipse defined as
= ∑ ∑ [( − ) cos − ( − ) sin ] (4)
= ∑ ∑ [( − ) sin − ( − ) cos ] (5)
Length of the major and the minor axes are calculated from [8] as
=
/
(6)
=
/
(7)
To determine how well the best-fit ellipse approximates the connected components, a distance
measure between the connected components and the best-fit ellipse is calculated as follows [8]
∅ = (8)
∅ = (9)
Informatics Engineering, an International Journal (IEIJ) ,Vol.2, No.1, March 2014
4
where the Pinside is the number of background points inside the ellipse, Poutside is the number of
points of the connected components that are outside the ellipse, and is the sizeof the
connected components. After drawing of ellipse, a subimage is made according to theellipse and
finally, the ZM is used to extract features inside the subimage.
3.2. Zernike Moment (ZM)
ZM is geometric-based moment that is a two dimensional function of orthogonal polynomials on
the unit disk. The orthogonal moments of ZM are rotation and scale invariants which are suitable
for pattern recognition applications [5][6][8][17]. ZM contains several orthogonal sets of
complex-valued polynomials defined as
( , ) = ( , ) exp tan (10)
where + ≤ 1,n ≥ 0, |m|≤ n, and the radial polynomials { } are defined as
( , ) = ∑ ,| |, ( + )
( | |)/
(11)
where
,| |, = (−1)
( )!
!
| |
!
| |
!
(12)
The ZM of order n and repetition m can be computed as
= ∑ ∑ ( , ) ∗
( , ) (13)
It should be noted that the PZM is computed for positive m because ( , ) = ∗
( , ). Center
of the unit disk is located on the origin of coordinates and so ZM technique is independent of
scaling and rotation.In the next Section, ZM approach will be utilized to extract feature vector
elements.
3.3 Creating feature vector
After face localization and subimage creation, the ZM is computed for each subimage as face
features. The feature vector elements are defined according to ZM orders as
= { | = , + 1, … , } (14)
where j is interval [1,N−1] and so, contains all the ZM from order j to N. Samples of feature
vector elements will be demonstrated in Table 1 for j = 3, 5 and 9, and N = 10. As Table1 shows,
increasing of j decreases the number of elements in each feature vector ( ).
4. EXPERIMENTAL RESULTS
The proposed method is evaluated on two datasets: Twins Days Festival [2] and Iranian Twin
Society [1] which contain 520 and 600 pairs of identical twins images, respectively. The used
datasets contain the scaled and rotated faces with different illuminations. Figure 1 shows the
subimages of some twin test images. The results of identical twins recognition using ZM is
Informatics Engineering, an International Journal (IEIJ) ,Vol.2, No.1, March 2014
5
compared with the results of LM [13]. Experiments have been carried out in three steps according
to order of moment. In the first step, order n is in interval [1,6], in the second step, order n is in
interval [6,8] and for third step, order n is in interval [9,10] (Table 2).
In this paper, N is set 10 (N=10) and j varies from 1 to 9. The misclassification rate of all
geometric moments (LM and ZM) is presented in Table 3. The misclassification rate reported in
the table are computed as
=
.
.
(15)
Table 3 shows misclassification rates of LM and ZM. Comparison between geometric moments
in Table 3 proves that higher order moments of the ZM have most information for face
recognition while low-order moments have no significant effect on the system error. According to
the table, LM achieves high misclassification rate on recognition of twins because the rotation of
face in an image has bad effect on the performance of LM. As Table 3 shows, the
misclassification rate of ZM is lower than the LM because ZM is rotation and scale invariant.
Table 1. Feature vector elements based on the ZM
j value jFV feature elements ( kmZM ) Number of
feature elementK M
4
4 0,2,4
30
5 1,3,5
6 0,2,4,6
7 1,3,5,7
8 0,2,4,6,8
9 1,3,5,7,9
10 0,2,4,6,8,10
6
6 0,2,4,6
24
7 1,3,5,7
8 0,2,4,6,8
9 1,3,5,7,9
10 0,2,4,6,8,10
9
9 1,3,5,7,9
11
10 0,2,4,6,8,10
Informatics Engineering, an International Journal (IEIJ) ,Vol.2, No.1, March 2014
6
Table 2. Feature vector elements produced by geometric moments in each experiment.
Cat. LM feature elements ZM feature elements
1
n=1, m=1
n=2, m=0,2
n=3, m=1,3
n=4, m=0,2,4
n=5, m=1,3,5
n=6, m=0,2,4,6
n=1, m=1
n=2, m=0,2
n=3, m=1,3
n=4, m=0,2,4
n=5, m=1,3,5
n=6, m=0,2,4,6
2
n=6, m=0,2,4,6
n=7, m=1,3,5,7
n=8, m=0,2,4,6,8
n=6, m=0,2,4,6
n=7, m=1,3,5,7
n=8, m=0,2,4,6,8
3
n=9, m=1,3,5,7,9
n=10, m=0,2,4,6,8,10
n=9, m=1,3,5,7,9
n=10, m=,0,2,4,6,8,10
Visual results of ZM on pair of identical twins are illustrated in Figure 2which refers to Twins
Days Festival [2] and Iranian Twin Society [1] datasets, respectively.
According to numerical and visual results, ZM is able to create informative feature vector inside
the subimages of pair of identical twins which is necessary for recognition of identical twins. The
results prove that ZM is scale and rotation invariant.
Figure 1. Creating of subimage based on the ellipse formation.
Table 4 shows the second phase of testing where the two geometric moments are compared on
finding a pair of a person as the twin ink-nearest persons. In the other words for a test image, his
(her) pair is found in k-nearest persons. In Table 4, the above comparison is done in several ranks
(k), k=3, 5, 7 and 9. Also, visual results of ZM on the second phase of testing are demonstrated in
Figure 3.The results reported in Table 4 are the percentage of identical twins that the pair ofa
person cannot be found in k-nearest persons (16). According to the results of ZM in Table 4and
Figure 3, pair of input image as the identical twin is detected in 3-nearest persons with the
Table 3. Error rate of each geometric moment in different categories. The bold values means the best
values
Cat.
LM ZM
No. of
Feature
Elements
No. of
Misclassificati
on
Error rate
No. of
Feature
Elements
No. of
Misclassificati
on
Error
rate
n=1,2,…,
6
15 20 10% 15 17 8.5%
n=6,7,8 13 18 9.1% 13 13 6.5%
n=9,10 11 12 6.1% 11 8 4%
Informatics Engineering, an International Journal (IEIJ) ,Vol.2, No.1, March 2014
7
probability of 95.1% (100%-4.9%) while with LM, the obtained value is with the probability of
91.3% (100%-8.7%). For the other ranks, the ZM approach takes the best error rates. As a result
of Table 4, the detected person as the identical twin using the proposed feature extractor is in k-
nearest persons with high probability.
=
.
.
(16)
5. CONCLUSIONS
This paper is focused on the improving of face recognition systems for distinguishing of a pair of
identical twins. The proposed method is based on the Zernike Moment (ZM) as a feature extractor
to recognize a pair of (identical or non-identical) twins. Also, the location of the face in an image
is detected using the AdaBoost method and then the ZM method is utilized to construct feature
vector elements. Experimental results on two datasets show that the proposed method is superior
to the other geometric moment such as Legendre Moment (LM) and also is robust to rotation and
scaling and changing illumination.
Figure 2. Samples of testing identical twins which were correctly classified by ZM. The first row refers to
the results of ZM on the Twins Days Festival dataset [2] and the second row is the results of ZM on the
Iranian Twin Society dataset [1].
Informatics Engineering, an International Journal (IEIJ) ,Vol.2, No.1, March 2014
8
Figure 3. Visual results of ZM on the second phase of testing with rank=3.
Table 4. Results of geometric moments on the second phase of testing with rank=3. Bold values
refer to the best scores.
Rank
Feature extractor
LM ZM
3 8.7% 4.9%
5 5.3% 1.2%
7 3.2% 0%
9 0.9% 0%
REFERENCES
[1] Iranian twin society. http://www.irtwins.com/.
[2] Twins days festival. http://www.twinsdays.org.
[3] Arias, E., MacDorman, M.F., Strobino, D.M.& Guyer, B. (2003)“Annual summary of
vitalstatistics2002”,Pediatrics,Vol. 112, No. 6, pp. 1215-1230.
[4] Bailey, R.R. (1993)“Automatic recognition of handwritten numerals via orthogonal momentsusing
statistical and neural network classifiers”, Ph.D. thesis, Dallas, TX, USA (1993),aAI9331109.
[5] Belhumeur, P., Hespanha, J.& Kriegman, D. (1997)“Eigenfaces vs. fisherfaces recognition using
classspecific linear projection”, IEEETransactions on Pattern Analysis and Machine Intelligence,Vol.
19, No. 7, pp. 711-720.
[6] Belkasim, S., Shridhar, M.& Ahmadi, M. (1991)“Pattern recognition with moment invariants:A
comparative study and new results”,Pattern Recognition,Vol. 24, No.12, pp. 1117-
1138,http://www.sciencedirect.com/science/article/pii/003132039190140Z.
[7] Bichsel, M.& Pentland, A. (1994)“Human face recognition and the face image sets topology” CVGIP
Image Understanding,Vol. 59, No. 2, pp. 254-261.
[8] Haddadnia, J., Ahmadi, M.& Faez, K. (2002)“An efficient method for recognition of human
facesusing higher orders pseudo Zernike moment invariant”,In: Proceedings. Fifth IEEE International
Conference on Automatic Face and Gesture Recognition 2002, pp. 330-335.
[9] Haddadnia, J., Faez, K.& Moallem, P. (2001)“Neural network based face recognition with moment
invariants”,In Proceedings of Int. Conference on Image Processing 2001, Vol. 1, pp. 1018-1021.
[10] Haddadnia, J., Ahmadi, M.& Faez, K. (2003)“An efficient feature extraction method withpseudo-
Zernike moment in RBF neural network-based human face recognition system”, EURASIP Journal of
Appl. Signal Process,pp. 890-901, http://dx.doi.org/10. 1155/S1110865703305128.
Informatics Engineering, an International Journal (IEIJ) ,Vol.2, No.1, March 2014
9
[11] Hjelms, E.& Low, B.K. (2001)“Face detection: A survey”,Computer Vision and Image
Understanding, Vol. 83, No. 3, PP. 236-274.
[12] Klare, B.& Jain, A. (2010)“On a taxonomy of facial features”,In Fourth IEEE International
Conference on Biometrics, Theory Applications and Systems (BTAS), pp. 18.
[13] Liao, S.& Pawlak, M. (1996)“On image analysis by moments”,IEEE Transactions on Pattern Analysis
and Machine Intelligence, Vol. 18, No. 3, pp. 254-266.
[14] Park, U., Jillela, R., Ross, A.& Jain, A. (2011)“Periocular biometrics in the visible spectrum”, IEEE
Transactions on Information Forensics and Security, Vol. 6 No. 1, pp. 96-106.
[15] Srinivas, N., Aggarwal, G., Flynn, P.& Vorder Bruegge, R. (2012)“Analysis of facial marks
todistinguish between identical twins”,IEEE Transactions on Information Forensics and Security, Vol.
7, No. 5, pp. 1536-1550.
[16] Sun, Z., Paulino, A.A., Feng, J., Chai, Z., Tan, T.& Jain, A.K.(2010) “A study of multibiometrictraits
of identical twins”,http://dx.doi.org/10.1117/12.851369.
[17] Teh, C.H.& Chin, R.(1988) “On image analysis by the methods of moments”. IEEE Transactions on
Pattern Analysis and Machine Intelligence, Vol. 10, No. 4, pp. 496-513.
[18] Viola, P.& Jones, M. (2001)“Rapid object detection using a boosted cascade of simple features”, In
Proceedings of the IEEE Computer Society Conference on Computer Vision and Pattern Recognition
2001 (CVPR’01),Vol. 1, pp. I-511-I-518.
[19] Yang, M.H., Kriegman, D., Ahuja, N.(2002) “Detecting faces in images: a survey”,IEEE Transactions
on Pattern Analysis and Machine Intelligence, Vol. 24, No. 1, pp. 34-58.
[20] Zernike, v.F.(1934),“Beugungstheorie des schneidenver-fahrens und seiner verbesserten form,der
phasenkontrastmethode”,Physica,Vol. 1, No. 7, pp. 689-704.

More Related Content

PDF
ZERNIKE MOMENT-BASED FEATURE EXTRACTION FOR FACIAL RECOGNITION OF IDENTICAL T...
PDF
An efficient feature extraction method with pseudo zernike moment for facial ...
PDF
LOCAL REGION PSEUDO-ZERNIKE MOMENT- BASED FEATURE EXTRACTION FOR FACIAL RECOG...
PDF
Effective face feature for human identification
PDF
Automatic rectification of perspective distortion from a single image using p...
PDF
Farsi character recognition using new hybrid feature extraction methods
PDF
Nose Tip Detection Using Shape index and Energy Effective for 3d Face Recogni...
PDF
Medoid based model for face recognition using eigen and fisher faces
ZERNIKE MOMENT-BASED FEATURE EXTRACTION FOR FACIAL RECOGNITION OF IDENTICAL T...
An efficient feature extraction method with pseudo zernike moment for facial ...
LOCAL REGION PSEUDO-ZERNIKE MOMENT- BASED FEATURE EXTRACTION FOR FACIAL RECOG...
Effective face feature for human identification
Automatic rectification of perspective distortion from a single image using p...
Farsi character recognition using new hybrid feature extraction methods
Nose Tip Detection Using Shape index and Energy Effective for 3d Face Recogni...
Medoid based model for face recognition using eigen and fisher faces

What's hot (13)

PDF
A Novel Mathematical Based Method for Generating Virtual Samples from a Front...
PDF
Human Face Detection Based on Combination of Logistic Regression, Distance of...
PDF
MULTIPLE CONFIGURATIONS FOR PUNCTURING ROBOT POSITIONING
PDF
MULTIPLE CONFIGURATIONS FOR PUNCTURING ROBOT POSITIONING
PDF
Face Detection for identification of people in Images of Internet
PDF
Reconstructing Vehicle License Plate Image from Low Resolution Images using N...
PDF
FACE RECOGNITION USING DIFFERENT LOCAL FEATURES WITH DIFFERENT DISTANCE TECHN...
PDF
Iris Localization - a Biometric Approach Referring Daugman's Algorithm
PDF
Face Alignment Using Active Shape Model And Support Vector Machine
PDF
Extraction of texture features by using gabor filter in wheat crop disease de...
PDF
Aa4102207210
PDF
FPGA ARCHITECTURE FOR FACIAL-FEATURES AND COMPONENTS EXTRACTION
PDF
Development modeling methods of analysis and synthesis of fingerprint deforma...
A Novel Mathematical Based Method for Generating Virtual Samples from a Front...
Human Face Detection Based on Combination of Logistic Regression, Distance of...
MULTIPLE CONFIGURATIONS FOR PUNCTURING ROBOT POSITIONING
MULTIPLE CONFIGURATIONS FOR PUNCTURING ROBOT POSITIONING
Face Detection for identification of people in Images of Internet
Reconstructing Vehicle License Plate Image from Low Resolution Images using N...
FACE RECOGNITION USING DIFFERENT LOCAL FEATURES WITH DIFFERENT DISTANCE TECHN...
Iris Localization - a Biometric Approach Referring Daugman's Algorithm
Face Alignment Using Active Shape Model And Support Vector Machine
Extraction of texture features by using gabor filter in wheat crop disease de...
Aa4102207210
FPGA ARCHITECTURE FOR FACIAL-FEATURES AND COMPONENTS EXTRACTION
Development modeling methods of analysis and synthesis of fingerprint deforma...
Ad

Similar to An Efficient Feature Extraction Method With Local Region Zernike Moment for Facial Recognition of Identical Twins (20)

PDF
ZERNIKE MOMENT-BASED FEATURE EXTRACTION FOR FACIAL RECOGNITION OF IDENTICAL T...
PDF
& Topics International Journal of Computer Science, Engineering and Informati...
PDF
Local Region Pseudo-Zernike Moment- Based Feature Extraction for Facial Recog...
PDF
Advanced Computational Intelligence: An International Journal (ACII)
PDF
Local Region Pseudo-Zernike Moment- Based Feature Extraction for Facial Recog...
PDF
Persian character recognition using new
PDF
FARSI CHARACTER RECOGNITION USING NEW HYBRID FEATURE EXTRACTION METHODS
PDF
International Journal of Computer Science, Engineering and Information Techno...
PDF
Human’s facial parts extraction to recognize facial expression
PDF
SYMMETRICAL WEIGHTED SUBSPACE HOLISTIC APPROACH FOR EXPRESSION RECOGNITION
PPTX
Model Based Emotion Detection using Point Clouds
PDF
Improvement of the Recognition Rate by Random Forest
PDF
Improvement oh the recognition rate by random forest
PDF
Realtime human face tracking and recognition system on uncontrolled environment
PDF
Independent Component Analysis of Edge Information for Face Recognition
PDF
2. 7698 8113-1-pb
PDF
Feature extraction based retrieval of
PDF
A study of techniques for facial detection and expression classification
PDF
International Journal of Computer Science, Engineering and Information Techno...
PDF
National Flags Recognition Based on Principal Component Analysis
ZERNIKE MOMENT-BASED FEATURE EXTRACTION FOR FACIAL RECOGNITION OF IDENTICAL T...
& Topics International Journal of Computer Science, Engineering and Informati...
Local Region Pseudo-Zernike Moment- Based Feature Extraction for Facial Recog...
Advanced Computational Intelligence: An International Journal (ACII)
Local Region Pseudo-Zernike Moment- Based Feature Extraction for Facial Recog...
Persian character recognition using new
FARSI CHARACTER RECOGNITION USING NEW HYBRID FEATURE EXTRACTION METHODS
International Journal of Computer Science, Engineering and Information Techno...
Human’s facial parts extraction to recognize facial expression
SYMMETRICAL WEIGHTED SUBSPACE HOLISTIC APPROACH FOR EXPRESSION RECOGNITION
Model Based Emotion Detection using Point Clouds
Improvement of the Recognition Rate by Random Forest
Improvement oh the recognition rate by random forest
Realtime human face tracking and recognition system on uncontrolled environment
Independent Component Analysis of Edge Information for Face Recognition
2. 7698 8113-1-pb
Feature extraction based retrieval of
A study of techniques for facial detection and expression classification
International Journal of Computer Science, Engineering and Information Techno...
National Flags Recognition Based on Principal Component Analysis
Ad

More from ieijjournal (20)

PDF
Call for Papers - Informatics Engineering, an International Journal (IEIJ)
PDF
10th International Conference on Software Engineering (SOEN 2025)
PDF
Submit Your Research Articles...!!! Sep Issue!!!
PDF
Call for Papers - 12th International Conference on Artificial Intelligence & ...
PDF
September Issue - Informatics Engineering, an International Journal (IEIJ)
PDF
Informatics Engineering, an International Journal (IEIJ)
PDF
6th International Conference on Cloud, Big Data and IoT (CBIoT 2025)
PDF
SIMILARITY AND NOVELTY METRICS: A MACHINE LEARNING FRAMEWORK FOR AUDIENCE EXT...
PDF
September Issue - Informatics Engineering, an International Journal (IEIJ)
PDF
11th International Conference on Artificial Intelligence and Soft Computing (...
PDF
Current Issue: June 2025, Volume 9, Number 1/2
PDF
Upcoming Issue - Informatics Engineering, an International Journal (IEIJ)
PDF
Submit Your Research Articles - Informatics Engineering, an International Jou...
PDF
CFP - 14th International Conference on Digital Image Processing and Vision (I...
PDF
June Issue - Informatics Engineering, an International Journal (IEIJ)
PDF
Submit Your Research Papers! Welcome to AMLA Conference!
PDF
Low Power SI Class E Power Amplifier and Rf Switch for Health Care
PDF
Informatics Engineering, an International Journal (IEIJ)
PDF
Fitted Operator Finite Difference Method for Singularly Perturbed Parabolic C...
PDF
June Issue - Informatics Engineering, an International Journal (IEIJ)
Call for Papers - Informatics Engineering, an International Journal (IEIJ)
10th International Conference on Software Engineering (SOEN 2025)
Submit Your Research Articles...!!! Sep Issue!!!
Call for Papers - 12th International Conference on Artificial Intelligence & ...
September Issue - Informatics Engineering, an International Journal (IEIJ)
Informatics Engineering, an International Journal (IEIJ)
6th International Conference on Cloud, Big Data and IoT (CBIoT 2025)
SIMILARITY AND NOVELTY METRICS: A MACHINE LEARNING FRAMEWORK FOR AUDIENCE EXT...
September Issue - Informatics Engineering, an International Journal (IEIJ)
11th International Conference on Artificial Intelligence and Soft Computing (...
Current Issue: June 2025, Volume 9, Number 1/2
Upcoming Issue - Informatics Engineering, an International Journal (IEIJ)
Submit Your Research Articles - Informatics Engineering, an International Jou...
CFP - 14th International Conference on Digital Image Processing and Vision (I...
June Issue - Informatics Engineering, an International Journal (IEIJ)
Submit Your Research Papers! Welcome to AMLA Conference!
Low Power SI Class E Power Amplifier and Rf Switch for Health Care
Informatics Engineering, an International Journal (IEIJ)
Fitted Operator Finite Difference Method for Singularly Perturbed Parabolic C...
June Issue - Informatics Engineering, an International Journal (IEIJ)

Recently uploaded (20)

PPTX
Cell Structure & Organelles in detailed.
PDF
Yogi Goddess Pres Conference Studio Updates
PPTX
Final Presentation General Medicine 03-08-2024.pptx
PDF
A GUIDE TO GENETICS FOR UNDERGRADUATE MEDICAL STUDENTS
PPTX
Orientation - ARALprogram of Deped to the Parents.pptx
PDF
RTP_AR_KS1_Tutor's Guide_English [FOR REPRODUCTION].pdf
PDF
What if we spent less time fighting change, and more time building what’s rig...
PPTX
UNIT III MENTAL HEALTH NURSING ASSESSMENT
PDF
Paper A Mock Exam 9_ Attempt review.pdf.
PPTX
Final Presentation General Medicine 03-08-2024.pptx
PDF
Microbial disease of the cardiovascular and lymphatic systems
PPTX
Microbial diseases, their pathogenesis and prophylaxis
PDF
Black Hat USA 2025 - Micro ICS Summit - ICS/OT Threat Landscape
PDF
01-Introduction-to-Information-Management.pdf
PDF
2.FourierTransform-ShortQuestionswithAnswers.pdf
PPTX
Lesson notes of climatology university.
PPTX
UV-Visible spectroscopy..pptx UV-Visible Spectroscopy – Electronic Transition...
PPTX
1st Inaugural Professorial Lecture held on 19th February 2020 (Governance and...
PDF
grade 11-chemistry_fetena_net_5883.pdf teacher guide for all student
PPTX
Introduction-to-Literarature-and-Literary-Studies-week-Prelim-coverage.pptx
Cell Structure & Organelles in detailed.
Yogi Goddess Pres Conference Studio Updates
Final Presentation General Medicine 03-08-2024.pptx
A GUIDE TO GENETICS FOR UNDERGRADUATE MEDICAL STUDENTS
Orientation - ARALprogram of Deped to the Parents.pptx
RTP_AR_KS1_Tutor's Guide_English [FOR REPRODUCTION].pdf
What if we spent less time fighting change, and more time building what’s rig...
UNIT III MENTAL HEALTH NURSING ASSESSMENT
Paper A Mock Exam 9_ Attempt review.pdf.
Final Presentation General Medicine 03-08-2024.pptx
Microbial disease of the cardiovascular and lymphatic systems
Microbial diseases, their pathogenesis and prophylaxis
Black Hat USA 2025 - Micro ICS Summit - ICS/OT Threat Landscape
01-Introduction-to-Information-Management.pdf
2.FourierTransform-ShortQuestionswithAnswers.pdf
Lesson notes of climatology university.
UV-Visible spectroscopy..pptx UV-Visible Spectroscopy – Electronic Transition...
1st Inaugural Professorial Lecture held on 19th February 2020 (Governance and...
grade 11-chemistry_fetena_net_5883.pdf teacher guide for all student
Introduction-to-Literarature-and-Literary-Studies-week-Prelim-coverage.pptx

An Efficient Feature Extraction Method With Local Region Zernike Moment for Facial Recognition of Identical Twins

  • 1. Informatics Engineering, an International Journal (IEIJ) ,Vol.2, No.1, March 2014 1 AN EFFICIENT FEATURE EXTRACTION METHOD WITH LOCAL REGION ZERNIKE MOMENT FOR FACIAL RECOGNITION OF IDENTICAL TWINS Zahra Ahmadi-Dastjerdi1 and Karim Faez2 1 Department of Electrical,Computer and Biomedical Engineering, Qazvin branch, Islamic Azad University, Qazvin, Iran 2 Department of Electrical Engineering, Amirkabir University of Technology, Tehran, Iran ABSTRACT Face recognition is one of the most challenging problems in the domain of image processing and machine vision. The face recognition system is critical when individuals have very similar biometric signature such as identical twins. In this paper, the facial area in an image is detected using AdaBoost approach. After that the facial area is divided into some local regions. Finally, new efficient facial-based identical twins feature extractor based on the geometric moment is applied into local regions of face image.The utilized geometric moment is Zernike Moment (ZM) as a feature extractor inside the local regions of facial area of identical twins images. The proposed method is evaluated on two datasets, Twins Days Festival and Iranian Twin Society which contain scaled and rotated facial images of identical twins in different illuminations. The results prove the ability of proposed method to recognize a pair of identical twins.Also, results show that the proposed method is robust to rotation, scaling and changing illumination. KEYWORDS Face Recognition,Identical Twins,Invariant Moment, Zernike Moment 1. INTRODUCTION Human face is considered as a suitable property to identify people from his (her) image. Along with this property, recognition of facial of identical twin is one of the most challenging problems in pattern recognition applications because of the similarity between the pair of twin. In the domain of facial identical twins recognition, previous works are listed as: in[12], Klare and Jain introduced a face detection algorithm which includes three levels. In the first level, an overall appearance of the face is constructed; in the second level, exact geometric and structural embedment of face with differentiating between two similar faces are performed; and finally, the third level consists of process of skin disorders such as wounds, and so on. Sun et al. [16] utilized Cognitec FaceVACS system to recognize identical twins from CASIA Multimodal Biometrics Database and they obtained the true accept rate of approximately 90% at a false accept rate greater than 10%. Park et al.[14] proposed an identical twins recognition algorithm that consists of three steps: in first step, the proposed method consists of face images which are marked using normal geometric methods; in the second step, the Euclidean distance between a pair of markers are measured and compared; and the final step involves finding the strong similarity on the
  • 2. Informatics Engineering, an International Journal (IEIJ) ,Vol.2, No.1, March 2014 2 marked regions. Srinivas et al. [15] studied on distinguishing of twins using marks on the face image. Martin et al. [3] employed DNA approach to recognize identical twins. In this paper, we study on a pair of facial images in order to determine whether the images belong to the same person or to a pair of identical twin. For this purpose, we propose the geometric moments to extract feature vector from facial images of twins to recognize identical twins. This paper is organized as follow: feature extraction step of a face recognition system isintroduced in Section 2. The proposed method is presented in Section 3. Experimentalresults are described in Section 4 and the paper will be concluded in Section 5. 2. FEATURE EXTRACTION Each face detection system contains four steps: pre-processing, face localization, feature extraction and classification. Feature extraction refers to the extraction of useful information from raw data so that they are suitable for the classification process. The feature extraction stage is characterized by a series of input patterns. The major problem of feature extraction is that it depends on application and feature extraction methods are not public. Feature extraction methods can be divided into two majors: structural features and statistical features [11][19]. The first group is based on local structure of image. In other words, the structural features deals with local data. Facial change or change in environmental conditions is the major problem for the structural features [7]. In the statistics-based feature extraction techniques, global data is employed to create a set of feature vector elements in order to perform recognition. A mixture of irrelevant data, which are usually part of a facial image, may result in an incorrect set of feature vector elements. Therefore, data that are irrelevant to facial portion such as hair, shoulders, and background should be is regarded in the feature extraction phase [10].The statistics-based feature extraction techniques are Principle Component Analysis (PCA), Legender Moment (LM) [13] and Zernike Moments (ZM) [20]. Legendre functions are Legendre differential equation. The main advantage is that Legendre moments like Legendre basis functions are orthogonal. Legendre moments are independent of each other and are free of data redundancy.In this study, we use ZM to recognize identical twins that are presented in the next Section. 3. PROPOSED METHOD The main goal of this paper is to distinguish the identical twins by face recognition. For this purpose, AdaBoost [18] technique is used for face localization step and subimage creation. In the next step, the subimage will be divided into regions. After that the ZM technique is employed in each region to extract the feature vector from the region in the subimage of test image. After that the feature vectors inside the subimages of all images in dataset are obtained using ZM approach. Finally, comparison between the feature vector of test image and the feature vectors of all images of dataset is done to select the closest image from dataset as the pair of test image. In the next Section, the AdaBoost face detection, ZM and its task of feature vector creation are described. 3.1. Face Detection Method As the mentioned before, face detection step is the second step of this algorithm to recognize identical twins. This step is based on the combing of successively more complex classifiers in a
  • 3. Informatics Engineering, an International Journal (IEIJ) ,Vol.2, No.1, March 2014 3 cascade structure using AdaBoost [18]. Furthermore, the AdaBoost technique is used to select a small number of Haar-like features [18]. After finding an object in an image as a face candidate, an ellipse is drowning around the main location of face in an image[8]. For this purpose, an ellipse model is constructed using five parameters: X0 and Y0 are the centers of the ellipse, θ is the orientation, αand β are the minor and the major axes of the ellipse, respectively. Before the calculation of theseparameters, geometric moments are required to describe. The geometric moments of orderp+q of a digitalimageare defined as = ∑ ∑ ( , ) (1) where p, q = 0, 1, 2, … and f(x, y) is the grey-scale value of the digital image at x and ylocation. The translation invariant central moments are obtained by placing origin at thecenter of the image: = ∑ ∑ ( , )( − ) ( − ) (2) where = and = yare the centers of the connected components. Thus, centerof gravity of the connected components is used as the center of the ellipse. The orientationof the ellipse is computed by determining the least moment of inertia [8]. = arctan( ) (3) where shows the central moment of the connected components as described in (2). The length of the major and the minor axes of the best-fit ellipse can also be computed byevaluating the moment of inertia. With the least and the greatest moments of inertia of anellipse defined as = ∑ ∑ [( − ) cos − ( − ) sin ] (4) = ∑ ∑ [( − ) sin − ( − ) cos ] (5) Length of the major and the minor axes are calculated from [8] as = / (6) = / (7) To determine how well the best-fit ellipse approximates the connected components, a distance measure between the connected components and the best-fit ellipse is calculated as follows [8] ∅ = (8) ∅ = (9)
  • 4. Informatics Engineering, an International Journal (IEIJ) ,Vol.2, No.1, March 2014 4 where the Pinside is the number of background points inside the ellipse, Poutside is the number of points of the connected components that are outside the ellipse, and is the sizeof the connected components. After drawing of ellipse, a subimage is made according to theellipse and finally, the ZM is used to extract features inside the subimage. 3.2. Zernike Moment (ZM) ZM is geometric-based moment that is a two dimensional function of orthogonal polynomials on the unit disk. The orthogonal moments of ZM are rotation and scale invariants which are suitable for pattern recognition applications [5][6][8][17]. ZM contains several orthogonal sets of complex-valued polynomials defined as ( , ) = ( , ) exp tan (10) where + ≤ 1,n ≥ 0, |m|≤ n, and the radial polynomials { } are defined as ( , ) = ∑ ,| |, ( + ) ( | |)/ (11) where ,| |, = (−1) ( )! ! | | ! | | ! (12) The ZM of order n and repetition m can be computed as = ∑ ∑ ( , ) ∗ ( , ) (13) It should be noted that the PZM is computed for positive m because ( , ) = ∗ ( , ). Center of the unit disk is located on the origin of coordinates and so ZM technique is independent of scaling and rotation.In the next Section, ZM approach will be utilized to extract feature vector elements. 3.3 Creating feature vector After face localization and subimage creation, the ZM is computed for each subimage as face features. The feature vector elements are defined according to ZM orders as = { | = , + 1, … , } (14) where j is interval [1,N−1] and so, contains all the ZM from order j to N. Samples of feature vector elements will be demonstrated in Table 1 for j = 3, 5 and 9, and N = 10. As Table1 shows, increasing of j decreases the number of elements in each feature vector ( ). 4. EXPERIMENTAL RESULTS The proposed method is evaluated on two datasets: Twins Days Festival [2] and Iranian Twin Society [1] which contain 520 and 600 pairs of identical twins images, respectively. The used datasets contain the scaled and rotated faces with different illuminations. Figure 1 shows the subimages of some twin test images. The results of identical twins recognition using ZM is
  • 5. Informatics Engineering, an International Journal (IEIJ) ,Vol.2, No.1, March 2014 5 compared with the results of LM [13]. Experiments have been carried out in three steps according to order of moment. In the first step, order n is in interval [1,6], in the second step, order n is in interval [6,8] and for third step, order n is in interval [9,10] (Table 2). In this paper, N is set 10 (N=10) and j varies from 1 to 9. The misclassification rate of all geometric moments (LM and ZM) is presented in Table 3. The misclassification rate reported in the table are computed as = . . (15) Table 3 shows misclassification rates of LM and ZM. Comparison between geometric moments in Table 3 proves that higher order moments of the ZM have most information for face recognition while low-order moments have no significant effect on the system error. According to the table, LM achieves high misclassification rate on recognition of twins because the rotation of face in an image has bad effect on the performance of LM. As Table 3 shows, the misclassification rate of ZM is lower than the LM because ZM is rotation and scale invariant. Table 1. Feature vector elements based on the ZM j value jFV feature elements ( kmZM ) Number of feature elementK M 4 4 0,2,4 30 5 1,3,5 6 0,2,4,6 7 1,3,5,7 8 0,2,4,6,8 9 1,3,5,7,9 10 0,2,4,6,8,10 6 6 0,2,4,6 24 7 1,3,5,7 8 0,2,4,6,8 9 1,3,5,7,9 10 0,2,4,6,8,10 9 9 1,3,5,7,9 11 10 0,2,4,6,8,10
  • 6. Informatics Engineering, an International Journal (IEIJ) ,Vol.2, No.1, March 2014 6 Table 2. Feature vector elements produced by geometric moments in each experiment. Cat. LM feature elements ZM feature elements 1 n=1, m=1 n=2, m=0,2 n=3, m=1,3 n=4, m=0,2,4 n=5, m=1,3,5 n=6, m=0,2,4,6 n=1, m=1 n=2, m=0,2 n=3, m=1,3 n=4, m=0,2,4 n=5, m=1,3,5 n=6, m=0,2,4,6 2 n=6, m=0,2,4,6 n=7, m=1,3,5,7 n=8, m=0,2,4,6,8 n=6, m=0,2,4,6 n=7, m=1,3,5,7 n=8, m=0,2,4,6,8 3 n=9, m=1,3,5,7,9 n=10, m=0,2,4,6,8,10 n=9, m=1,3,5,7,9 n=10, m=,0,2,4,6,8,10 Visual results of ZM on pair of identical twins are illustrated in Figure 2which refers to Twins Days Festival [2] and Iranian Twin Society [1] datasets, respectively. According to numerical and visual results, ZM is able to create informative feature vector inside the subimages of pair of identical twins which is necessary for recognition of identical twins. The results prove that ZM is scale and rotation invariant. Figure 1. Creating of subimage based on the ellipse formation. Table 4 shows the second phase of testing where the two geometric moments are compared on finding a pair of a person as the twin ink-nearest persons. In the other words for a test image, his (her) pair is found in k-nearest persons. In Table 4, the above comparison is done in several ranks (k), k=3, 5, 7 and 9. Also, visual results of ZM on the second phase of testing are demonstrated in Figure 3.The results reported in Table 4 are the percentage of identical twins that the pair ofa person cannot be found in k-nearest persons (16). According to the results of ZM in Table 4and Figure 3, pair of input image as the identical twin is detected in 3-nearest persons with the Table 3. Error rate of each geometric moment in different categories. The bold values means the best values Cat. LM ZM No. of Feature Elements No. of Misclassificati on Error rate No. of Feature Elements No. of Misclassificati on Error rate n=1,2,…, 6 15 20 10% 15 17 8.5% n=6,7,8 13 18 9.1% 13 13 6.5% n=9,10 11 12 6.1% 11 8 4%
  • 7. Informatics Engineering, an International Journal (IEIJ) ,Vol.2, No.1, March 2014 7 probability of 95.1% (100%-4.9%) while with LM, the obtained value is with the probability of 91.3% (100%-8.7%). For the other ranks, the ZM approach takes the best error rates. As a result of Table 4, the detected person as the identical twin using the proposed feature extractor is in k- nearest persons with high probability. = . . (16) 5. CONCLUSIONS This paper is focused on the improving of face recognition systems for distinguishing of a pair of identical twins. The proposed method is based on the Zernike Moment (ZM) as a feature extractor to recognize a pair of (identical or non-identical) twins. Also, the location of the face in an image is detected using the AdaBoost method and then the ZM method is utilized to construct feature vector elements. Experimental results on two datasets show that the proposed method is superior to the other geometric moment such as Legendre Moment (LM) and also is robust to rotation and scaling and changing illumination. Figure 2. Samples of testing identical twins which were correctly classified by ZM. The first row refers to the results of ZM on the Twins Days Festival dataset [2] and the second row is the results of ZM on the Iranian Twin Society dataset [1].
  • 8. Informatics Engineering, an International Journal (IEIJ) ,Vol.2, No.1, March 2014 8 Figure 3. Visual results of ZM on the second phase of testing with rank=3. Table 4. Results of geometric moments on the second phase of testing with rank=3. Bold values refer to the best scores. Rank Feature extractor LM ZM 3 8.7% 4.9% 5 5.3% 1.2% 7 3.2% 0% 9 0.9% 0% REFERENCES [1] Iranian twin society. http://www.irtwins.com/. [2] Twins days festival. http://www.twinsdays.org. [3] Arias, E., MacDorman, M.F., Strobino, D.M.& Guyer, B. (2003)“Annual summary of vitalstatistics2002”,Pediatrics,Vol. 112, No. 6, pp. 1215-1230. [4] Bailey, R.R. (1993)“Automatic recognition of handwritten numerals via orthogonal momentsusing statistical and neural network classifiers”, Ph.D. thesis, Dallas, TX, USA (1993),aAI9331109. [5] Belhumeur, P., Hespanha, J.& Kriegman, D. (1997)“Eigenfaces vs. fisherfaces recognition using classspecific linear projection”, IEEETransactions on Pattern Analysis and Machine Intelligence,Vol. 19, No. 7, pp. 711-720. [6] Belkasim, S., Shridhar, M.& Ahmadi, M. (1991)“Pattern recognition with moment invariants:A comparative study and new results”,Pattern Recognition,Vol. 24, No.12, pp. 1117- 1138,http://www.sciencedirect.com/science/article/pii/003132039190140Z. [7] Bichsel, M.& Pentland, A. (1994)“Human face recognition and the face image sets topology” CVGIP Image Understanding,Vol. 59, No. 2, pp. 254-261. [8] Haddadnia, J., Ahmadi, M.& Faez, K. (2002)“An efficient method for recognition of human facesusing higher orders pseudo Zernike moment invariant”,In: Proceedings. Fifth IEEE International Conference on Automatic Face and Gesture Recognition 2002, pp. 330-335. [9] Haddadnia, J., Faez, K.& Moallem, P. (2001)“Neural network based face recognition with moment invariants”,In Proceedings of Int. Conference on Image Processing 2001, Vol. 1, pp. 1018-1021. [10] Haddadnia, J., Ahmadi, M.& Faez, K. (2003)“An efficient feature extraction method withpseudo- Zernike moment in RBF neural network-based human face recognition system”, EURASIP Journal of Appl. Signal Process,pp. 890-901, http://dx.doi.org/10. 1155/S1110865703305128.
  • 9. Informatics Engineering, an International Journal (IEIJ) ,Vol.2, No.1, March 2014 9 [11] Hjelms, E.& Low, B.K. (2001)“Face detection: A survey”,Computer Vision and Image Understanding, Vol. 83, No. 3, PP. 236-274. [12] Klare, B.& Jain, A. (2010)“On a taxonomy of facial features”,In Fourth IEEE International Conference on Biometrics, Theory Applications and Systems (BTAS), pp. 18. [13] Liao, S.& Pawlak, M. (1996)“On image analysis by moments”,IEEE Transactions on Pattern Analysis and Machine Intelligence, Vol. 18, No. 3, pp. 254-266. [14] Park, U., Jillela, R., Ross, A.& Jain, A. (2011)“Periocular biometrics in the visible spectrum”, IEEE Transactions on Information Forensics and Security, Vol. 6 No. 1, pp. 96-106. [15] Srinivas, N., Aggarwal, G., Flynn, P.& Vorder Bruegge, R. (2012)“Analysis of facial marks todistinguish between identical twins”,IEEE Transactions on Information Forensics and Security, Vol. 7, No. 5, pp. 1536-1550. [16] Sun, Z., Paulino, A.A., Feng, J., Chai, Z., Tan, T.& Jain, A.K.(2010) “A study of multibiometrictraits of identical twins”,http://dx.doi.org/10.1117/12.851369. [17] Teh, C.H.& Chin, R.(1988) “On image analysis by the methods of moments”. IEEE Transactions on Pattern Analysis and Machine Intelligence, Vol. 10, No. 4, pp. 496-513. [18] Viola, P.& Jones, M. (2001)“Rapid object detection using a boosted cascade of simple features”, In Proceedings of the IEEE Computer Society Conference on Computer Vision and Pattern Recognition 2001 (CVPR’01),Vol. 1, pp. I-511-I-518. [19] Yang, M.H., Kriegman, D., Ahuja, N.(2002) “Detecting faces in images: a survey”,IEEE Transactions on Pattern Analysis and Machine Intelligence, Vol. 24, No. 1, pp. 34-58. [20] Zernike, v.F.(1934),“Beugungstheorie des schneidenver-fahrens und seiner verbesserten form,der phasenkontrastmethode”,Physica,Vol. 1, No. 7, pp. 689-704.