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Automated Arabic Graphology
3/19/2016
1
Faculty of Computers and Information , Menoufiya University
Presented
by
Buthainah Hamdy
Agenda
Introduction
Applications
Handwriting analysis on-line vs. Off-line.
Features for Arabic vs. English writings
Research Plan
References
3/19/2016 2
3/19/2016 3
Introduction
Brain writing
3/19/2016 4
Introduction(cont.)
Brain writing
Conscious Mind
Control-WHAT we write
SUB-Conscious Mind
Controls-HOW we write
Governs our Moods ,feelings ,
behaviors and
A significant part of our personality.
Act of writing involves Conscious and Sub-conscious mind,
Nerves, Muscles and Fingers
The strokes we make while
writing , slant , loops , spacing ,
margins , pressure and many
other are takes care of by the
subconscious mind.
 Handwriting occurs through
the interactions of many
structures and circuits in the
brain.
 When one portion of the brain
is damaged, handwriting is
affected in a way that reflects
the function of that structure
or circuit.
3/19/2016 5
Introduction(cont.)
Brain writing
Graphology is a word originated from Greek language.
The first person that carried out systematic observations on the manner of
handwriting was Camillo Baldi in 1622 AD.
3/19/2016 6
2 Greek words
Graphein
(writing)
Logos
(science)
Introduction(cont.)
• Graphology is a scientific method of identifying, evaluating and
understanding personality through the strokes and patterns
revealed by handwriting.
• It is a study of any graphic movements, such as
hand writing, drawings, scribbling and doodles.
• Professional handwriting examiners called graphologist.
 Graphology reveals insights into the mental, physical of the
writer.
3/19/2016 7
Introduction(cont.)
Habits , Likes and Dislikes
Relationship patterns
Intelligence
Your handwriting develops right from childhood,
adolescence and adulthood.
Emotions ,Feelings and
Temperament
Intuition and Instincts
Creativity and Talents
Common Features of Graphology
3/19/2016 8
Introduction(cont.)
Size Baseline Pressure
Introduction(cont.)
3/19/2016 9
Slant Zones
Speed in writing
And Margins
Spacing between
letters ,words and
line
Common Features of Graphology
Introduction(cont.)
3/19/201610
personality Arabic English
‫/التهكم‬
Sarcasm
‫الذات‬ ‫تقدير‬ ‫/عدم‬
Low self-
esteem
‫للذات‬ ‫عالي‬ ‫/احترام‬
High self -
esteem
Personality analysis in Arabic and English
3/19/2016 11
personality Arabic English
‫/اصرار‬
Persistence
‫/عدوانية‬
Aggressive
‫فكر‬ ‫/سيولة‬
Fluidity of
thoughts
Introduction(cont.)
Personality analysis in Arabic and English
3/19/2016 12
personality Arabic English
‫مسحوب‬‫عاطفيا‬ /
Emotionally
withdrawn
‫الشخصية‬ ‫/مزدوج‬
Dual
personality
‫/دبلوماسي‬
diplomacy
Introduction(cont.)
Personality analysis in Arabic and English
3/19/2016 13
personality Arabic English
‫/مجادل‬
argumentative
‫وسيطرة‬ ‫/هيمنة‬
dominant
‫عالي‬ ‫/تركيز‬
concentration
Introduction(cont.)
Personality analysis in Arabic and English
3/19/2016 14
personality Arabic English
‫/غامض‬
secretive
‫/الكذب‬
laying
‫المشاعر‬ ‫/اتزان‬
ambivert
Introduction(cont.)
Personality analysis in Arabic and English
Agenda
Introduction
Applications
Handwriting analysis on-line vs. Off-line.
Features for Arabic vs. English writings
Research Plan
References
3/19/2016 15
Applications
3/19/2016 16
Graphology
Personality
prediction
Forensic
Diseases
diagnosis
1-Human behavior
(Extraversion)
2-Marital compatibility
3-Business
compatibility
4-RECRUITMENT
(Employment profiling)
5-Education
6-Lie detector
1-Writer identification
2-Investigations
3-Age,gender , nationality
and handedness
4-Forged Signatures
1-Mental diseases
Suicide, Alzheimer,
Schizophrenia and
Depression analysis
2-physical diseases
Heart, cancer ,
Hypothyroidism
(graves’ diseases) and
Parkinson's Disease
Agenda
Introduction
Applications
Handwriting analysis on-line vs. Off-line.
Features for Arabic vs. English writings
Research Plan
References
3/19/2016 17
Handwriting analysis on-line vs. Off-line.
On-line Off-line
 Low noise
 High recognition
 (Automatic conversion of text)
 Written on a special digitizer or
PDA.
Elements
 digital pen or stylus .
 Touch sensitive surface.
 Software application.
 High noise
 Low recognition
 (scanned image)
 Written on papers
Elements
 Fountain pen
 A4 paper
 Scanner or Digital camera
3/19/2016 18
Agenda
Introduction
Applications
Handwriting analysis on-line vs. Off-line.
Features for Arabic vs. English writings
Research Plan
References
3/19/2016 19
3/19/2016 20
Personality
Prediction
Human
behavior
Extraversio
n
detection
Employment
profiling
Human behavior
Database Features Classifiers Accuracy
Multiple samples Baseline
pen pressure
Height of the T-bar
ANN(Artificial
Neural Network).
100 writers (70-80 words)
most of them are cursive
, few of them are printed
Size of letters.
Slant of letters and words.
Baseline.
pen pressure.
Spacing between letters.
Spacing between words.
SVM(support
vector machine)
30 writer of
Age between
(20-24) 100 words
size of letters
slant of letters and words
baseline
pen pressure
spacing between letters and
words
Breaks(connected&disconnecte
d)
Margins
Speed
AHWAS
(Automated
Handwriting
Analysis System)
calibrated with
manual analysis.
883 writers (404men ,479
women) age from 20 to 30
years
Size
Width of middle zone letters
Slant
Size of margins
The way of ending the verse
Angularity
Stability of pressure
SVM(Support
Vector machine)
3/19/2016 21
Human behavior
3/19/2016 22
Database Features Classifiers Accuracy
50 samples Margins - Baseline
Size - Zonal ratio
Slant - Space
Degree of connection
Myer Briggs
dichotomies
Based on
Keirsey’s
temperament sorter.
handwriting samples Slant - size
Pressure - word spacing
line spacing - Baseline
Least Squares Linear
Regression
100 data set for signature
and 156 type of 26
characters
Curved start - End Streak
Shell - middle streaks
Underline - Extreme margin
Dot structure - Separate
Streaks disconnected
Learning Vector
Quantization (LVQ) for
letters,
ANN and
multi-structure for
signature
10 signatures Curved start - End Streak
Shell - middle streaks
Underline - Extreme margin
Dot structure - Separate
Streaks disconnected
ANN and
multi-structure
Forensic
Writer
Identification
Age,
Nationality,
Gender and
Handedness
recognition
3/19/2016 23
Forensic
3/19/2016 24
Database Features Classifiers Accuracy
5,600 signatures
(genuine, random and
simulated forgeries).
Static features (caliber ,
proportion , spacing , alignment
to baseline)
Pseudo-dynamic features
(progression ,distribution of
pixels, Form , Slant)
HMM (hidden Markov
models).
Offline signature
1-QU online
signature
database
(194 persons)
2-ICDAR 2009 data
sets
Pressure
Distances
Angles
Speed
Angular speeds
Using multiple
classifiers
1-Random Forest
2-logistic regression
3-linear regression
4-MARS(Multivariate
Adaptive Regression
Spline)
5-Neural Network with
(2,5,10) hidden neuron.
online signature
verification for
both forgeries
and disguised
signatures
29 writers by 10
sample/writer, 34
image/sample (9860
images)
Enlarge to 70 users
2 auxiliary database
final vowel "a"
final vowel “o“
First group(writer and his/her
writing)
Skew ,Slant, Pressure
VowelinfoA,
VowelinfoO Second group
(written words and writer)
Correlation, Length
,Union of letters
,Thinning area
SVM
,
NN+MVA(Most Voted
Algorithm)
Brazilian forensic letter
database(BFL)
(315 writers) 945 images
Texture Features:
Caliber , Progression
Proportion , Pressure
Entry/Exit points , Slant
GLCM descriptors
SVM(support
Vector machine)
dissimilarity
representation
Forensic
3/19/2016 25
Database Features Classifiers Accuracy
(BFL) 315 writers
, IAM database 650 writers
texture descriptor
local binary patterns (LBP)
local phase quantization (LPQ)
SVM(support vector
machine)
Brazilian forensic letter
database(BFL) (20 writers)
Brazilian forensic letter
database(BFL) (200
writers)
Number of lines
Proportion of black pixels
Right margin position.
The lower left margin position.
Upper margin position
Bottom margin position
Height of the first word
Axial slant
SVM(support vector
machine)
lAM English handwriting
dataset(657 different
writers )
Directions
Curvatures
Tortuosity
Chain code
Edge based directional
Random forest
lAM English handwriting
dataset
Multi-scale Local Binary
Patterns Histogram texture
features
(MLBPH)
Edge-hinge distribution
Spectral regression(SR-
KDA) for dimensionality
reduction , K-nearest
neighbor classifier
(K-NN)
Diseases
diagnosis
3/19/2016 26
Graphologists have determined that certain breaks in writing, slight
interruptions in the upstroke and in the downstroke , especially in
letters with loops, can point to heart disease. (En) [19]
1-The “Heart Tick”
3/19/2016 27
[2008] Joel Engel , Early Cancer Detection through Graphology Analysis.
Variations of
normal handwriting
Down Strokes
Up Strokes
Earlier detecting cancer(cont.)
 Finding Cancer in Its Early Stages
 Samples of microphotographs of Mrs. B’s handwriting.
3/19/2016
28
Age 28
Age 33
Age 40
First Sample
Second Sample
Third Sample
Smooth, continuous
flow of movement
The writing spreads out
widely
clear interruptions
between descending
and ascending
strokes
Graves’ Disease(Manual analysis)
Objectives:
 Evaluate handwriting characteristics before and after therapy for
hyperthyroid Graves’ disease (GD).(En)[20]
3/19/2016 29
Database Features Classifier
22patients (15
women, 7 men) with
untreated GD
(median age: 44
years; range: 20–70
years)
write slandered text
before and 12
months after
euthyroid
 size of letters(mm)
 distance between letters
 width of letters
 distance between words
 extension of
letters(assessed in the
letters l, t, g, and p)
 angles(The presence of the
letters a, d, g, and q)
 groove depth
Stereoscopic
microscope
Magnifying glass.
Giampaolo Papi,1,2 Cristina Botti,3 Salvatore Maria Corsello,2 Anna Vittoria Ciardullo,1
Alfredo Pontecorvi,2 and Laszlo Hegedu¨s ( 2014) 'The Impact of Graves’ Disease and
Its Treatment on Handwriting Characteristics', Mary Ann Liebert,
Inc., 24,[Online].(Accessed: Number 8, 2014).
Graves’ Disease(cont.)
3/19/2016 30
(A) During
hyperthyroidism ‫الغدة‬ ‫نشاط‬ ‫فرط‬
‫,الدرقية‬
handwriting is hypertrophic
and contracted with several
angles.
(B) Post treatment, in the
euthyroid State ‫العادية‬ ‫الحالة‬ ‫,ف‬
the handwriting is
characterized by an
increased fluidity.
Standard text written by Seventy-year-old female with Graves’ disease
Graves’ Disease(cont.)
3/19/2016 31
In the euthyroid state (B) the size
of the letters (dotted line)
increases compared to the
hyperthyroid state (A).
whereas extensions of letters
(white and gray arrows)
and angles (black arrows)
are reduced
Graves’ Disease(cont.)
3/19/2016 32
Thirty-six-year-old female with Graves’
disease. Following recovery from
hyperthyroidism
the distance between the
words (black dotted line)
and the distance between
the letters (gray line) are
reduced,
whereas the width of the
letters (arrow) increased.
Arabic
handwriting
3/19/2016 33
Arabic Handwriting analysis
3/19/2016 34
Database Features Classifiers Accuracy
Printed text
20 different characters
fonts(320 text images
printed)Handwritten text
22 persons (132
handwriting )
Texture features using (16 Gabor
filters)
WED(weighted Euclidian
Distance)
10 writers , 20 Arabic
images
multi-scale edge-hinge features
grapheme features
K-NN
AHDB Dataset
100 writer
(32,000 Arabic word)
Edge-direction distribution
Moment invariants
Word measurements
(Area , Height,
length from baseline to upper
edge,
length from baseline to the
lower edge )
K-NN
QUWI database that
contains both Arabic and
English handwritings
($commercially)
1017 WRITERS
Directions‫اتجاه‬
Curvatures‫تقوس‬
Tortuosity ‫تعرج‬
chain codes
edge-based directional
K-NN
Arabic Handwriting analysis
3/19/2016 35
Database Features Classifiers Accuracy
QUWI (Arabic and English
handwritings
($commercially)
Directions‫اتجاه‬
curvatures‫تقوس‬
Tortuosity‫تعرج‬
chain codes
edge-based directional
Random forest
,Kernel discriminant
analysis using spectral
regression
120 Farsi handwriting
samples
Left and right margins
Word expansion
Letter size
Line and word spacing
Line skew
The ratio of vertical to horizontal
elongation of words
Slant
SVM
Summary
# English Arabic
Common
Features
size of letters
slant of letters and
words
baseline
pen pressure
spacing between letters
and words
Breaks(connected
disconnected)
Margins
Speed
Edge-direction
distribution
Moment invariants
Word measurements
Directions‫اتجاه‬
curvatures‫تقوس‬
Tortuosity‫تعرج‬
chain codes
Classifier
s
SVM(7) K-NN(3),Random
forest
Database IAM,BFL AHDB(100 WRITERS)3/19/2016 36
Agenda
Introduction
Applications
Handwriting analysis on-line vs. Off-line.
Features for Arabic vs. English writings
Research Plan
References
3/19/2016 37
Research Plan
3/19/2016 38
Building Android Application For Online Arabic Graphology .
We will work on available Database Arabic and English for
writer identification with an improved set of features and
classification methods.
After that we will work on forgery signatures with real
Arabic dataset.
We aspires to work on Diseases diagnoses in Early Stages with
Arabic dataset ,It will required building a database of real
patients .
Goal
First
Second
Future
work
References(English)
1. Champa H N,Dr. K R AnandaKumar (2010) 'Artificial Neural Network for Human
Behavior Prediction through Handwriting Analysis', International Journal of
Computer Applications(0975 – 8887), 2(2), pp. 36-41 ,(Accessed: May 2010).
2. Shitala Prasad,Vivek Kumar Singh,Akshay Sapre (2010) Handwriting Analysis
based on Segmentation Method for Prediction of Human Personality using
Support Vector Machine, International Journal of Computer Applications (0975 –
8887), pp. 25-29 ,8(12), (Accessed: October 2010).
3. Vikram Kamath, Nikhil Ramaswamy, P. Navin Karanth, Vijay Desai and S. M.
Kulkarni (2011) 'DEVELOPMENT OF AN AUTOMATED HANDWRITING
ANALYSIS SYSTEM', ARPN Journal of Engineering and Applied Sciences , 6(9),
pp. 135-140 [Online]. Available at: www.arpnjournals.com (Accessed:
SEPTEMBER 2011).
4. UZANNA GÓRSKA,ARTUR JANICKI (2012) 'RECOGNITION OF
EXTRAVERSION LEVEL BASED ON HANDWRITING AND SUPPORT VECTOR
MACHINES1',Perceptual and Motor Skills 114, 3, 857-869, pp. 858-869 [Online].
Available at:(Accessed: May 31, 2012.).
5. Rashi Kacker and Hima Bindu Maringanti, (2012) 'Personality Analysis Through
Handwriting', GSTF Journal on Computing (JoC), 2(1), pp. 858-869 [Online].
(Accessed: April 2012).
6. Abdul Rahiman M,Diana Varghese,Manoj Kumar G (2013) 'HABIT: Handwritten
Analysis Based Individualistic Traits Prediction', International Journal of Image
Processing (IJIP), 7(2), pp. 209-218 [Online]. Available at: (Accessed: 2013).
3/19/2016
39
6-Abdul Rahiman M,Diana Varghese,Manoj Kumar G (2013) 'HABIT: Handwritten
Analysis Based Individualistic Traits Prediction', International Journal of Image
Processing (IJIP), 7(2), pp. 209-218 [Online]. Available at: (Accessed: 2013).
7-Esmeralda C Djamal, Sheldy Nur Ramdlan, Jeri Saputra (2013) 'Recognition of
Handwriting Based on Signature and Digit of Character Using Multiple of Artificial
Neural Networks in Personality Identification , Information Systems International
Conference (ISICO), 2(4), pp. 411-415 [Online]. (Accessed: December 2013).
8-Sandeep Dang,Prof. Mahesh Kumar, Mahesh (2014) 'Handwriting Analysis of
Human Behaviour Based on Neural Network', International Journal of Advanced
Research in Computer Science and Software Engineering, 4(9), pp. 227-232 [Online].
Available at:www.ijarcsse.com (Accessed: September 2014).
9-Luiz S. OLIVEIRA a , Edson JUSTINO a , Cinthia FREITAS a and Robert
SABOURINb (2005) 'The Graphology Applied to Signature Verification', ,(Retrieved
on:10 December2015).
10-Abdelâali Hassaïne,Somaya Al-ma'adeed (2012) 'An Online Signature Verification
System for Forgery and Disguise Detection', [Online]. : (Accessed: NOVEMBER
2012). Retrieved on: 07 October 2015
11-Omar Santana, Carlos M. Travieso, Jesus B. Alonso, Miguel A. Ferrer (2010) 'Writer
Identification Based on Graphology Techniques', IEEE A&E SYSTEMS MAGAZINE,,(),
pp. [Online]. Available at: (Accessed: JUNE 2010).
12-R. K. Hanusiak · L. S. Oliveira · E. Justino · R. Sabourin (2011) 'Writer verification
using texture-based features', Springer, (), pp. 214 -226,[Online]. (Accessed: 24 May
2011). 3/19/2016 40
References(English)
13-D. Bertolini a, L.S. Oliveira a,⇑, E. Justino b, R. Sabourin c ( 2012) 'Texture-based
descriptors for writer identification and verification ', Elsevier Ltd, 40(6), pp. 2069–2080
[Online]. Available at: 18 October 2012 (Accessed: May 2013).
14-A. M. M. M. Amaral, C. O. A. Freitas, F. Bortolozzi. “The Graphometry applied to
writer identification”. In Proceedings of the 2012 International Conference on Image
Processing, Computer Vision, and Pattern Recognition, Las Vegas, USA, vol.1, pp.10-
16, 2012.
15-Aline Maria M. M. Amaral1,2, Cinthia O. A. Freitas2, and Flavio Bortolozzi1.
“2013)Multiple Graphometric Features for Writer Identification as part of Forensic
Handwriting Analysis”. In Proceedings of the 2013 International Conference on Image
Processing, Computer Vision, and Pattern Recognition, Las Vegas, USA, vol.1, pp.10-
16, 2013.
16-A. Hassa¨ıne, S. Al-Maadeed, and A. Bouridane, “A set of geometrical features for
writer identification,” Neural Information Process. Berlin Heidelberg: Springer,, vol. 45,
pp. 584–591,2012.
17-E Khalifa S Al-Maadeed2, M A Tahir3, F Khelifil and A Bouridane1 ( 2013) 'OFF-
LINE WRI TER I DENTIF ICATI ON U S ING MULTI- SCALE LOCAL BINARY
PATTERNS AND SR-KDA', IEEE, [Online].
18-Shweta Hegade1, Gargee Hiray2, Prajkta Mali3, Prof. Punam Raskar4 (2015)
'FODEX: Forensic Document Examiner –Using Graphology Science', IJETST, 2(3), pp.
2042-2045 [Online]. Available at: (Accessed: March 2015).
19-[2008] Joel Engel , Early Cancer Detection through Graphology Analysis.
20-Giampaolo Papi,1,2 Cristina Botti,3 Salvatore Maria Corsello,2 Anna Vittoria
Ciardullo,1 Alfredo Pontecorvi,2 and Laszlo Hegedu¨s ( 2014) 'The Impact of Graves’
Disease and Its Treatment on Handwriting Characteristics', Mary Ann Liebert,3/19/2016 41
References(English)
21-FEDDAOUI Nadia, HAMROUNI Kamel (2006) 'Personal identifi'cation
based on texture analysis of Arabic handwriting text', IEEE, (), pp. 1302-1307
[Online].
22-Somaya Al-Ma’adeed, Amat-AlAleem Al-Kurbi, Amal Al-Muslih, Reem Al-
Qahtani, Haend Al Kubisi (2008) 'Writer Identification of Arabic Handwriting
Documents Using Grapheme Features', IEEE, (), pp. 923-924 [Online].
23-Somaya Al-Ma’adeed, Eman Mohammed, Dori Al Kassis, Fatma Al-Muslih,
(2008) 'Writer Identification using Edge-based Directional Probability
Distribution Features for Arabic Words', IEEE, (), pp. 582-590 [Online].
24-Somaya Al-Maadeed (2012) 'Text-DependentWriter Identification for Arabic
Handwriting', Journal of Electrical and Computer Engineering, 2012(), pp. 8
[Online].
25-Somaya Al Maadeed, Wael Ayouby, Abdelˆaali Hassa¨ıne, Jihad Mohamad
Aljaam (2012) 'QUWI: An Arabic and English Handwriting Dataset for Offline
Writer Identification', IEEE, (), pp. 746-751 [Online].
26-Somaya Al–Maadeed, Fethi Ferjani, Samir Elloumi, Abdelaali Hassaine
and Ali Jaoua (2013) 'Automatic Handedness Detection from Off-Line
Handwriting', IEEE, (), pp. 119-124 [Online].
27-Al Maadeed and Hassaine: Automatic prediction of age, gender, and
nationality in offline handwriting. EURASIP Journal on Image and Video
Processing 2014 2014:10.
28-Somayeh Hashemi1, Behrouz Vaseghi2, Fatemeh Torgheh3 (2015)
'Graphology for Farsi Handwriting Using Image Processing Techniques', IOSR
Journal of Electronics and Communication Engineering (IOSR-JECE), 10(3),
pp. 01-07 [Online]. Available at:(Accessed: May - Jun.2015).3/19/2016 42
References(Arabic)
Thank
you
3/19/2016 43

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Graphology .

  • 1. Automated Arabic Graphology 3/19/2016 1 Faculty of Computers and Information , Menoufiya University Presented by Buthainah Hamdy
  • 2. Agenda Introduction Applications Handwriting analysis on-line vs. Off-line. Features for Arabic vs. English writings Research Plan References 3/19/2016 2
  • 4. 3/19/2016 4 Introduction(cont.) Brain writing Conscious Mind Control-WHAT we write SUB-Conscious Mind Controls-HOW we write Governs our Moods ,feelings , behaviors and A significant part of our personality. Act of writing involves Conscious and Sub-conscious mind, Nerves, Muscles and Fingers The strokes we make while writing , slant , loops , spacing , margins , pressure and many other are takes care of by the subconscious mind.
  • 5.  Handwriting occurs through the interactions of many structures and circuits in the brain.  When one portion of the brain is damaged, handwriting is affected in a way that reflects the function of that structure or circuit. 3/19/2016 5 Introduction(cont.) Brain writing
  • 6. Graphology is a word originated from Greek language. The first person that carried out systematic observations on the manner of handwriting was Camillo Baldi in 1622 AD. 3/19/2016 6 2 Greek words Graphein (writing) Logos (science) Introduction(cont.) • Graphology is a scientific method of identifying, evaluating and understanding personality through the strokes and patterns revealed by handwriting. • It is a study of any graphic movements, such as hand writing, drawings, scribbling and doodles. • Professional handwriting examiners called graphologist.
  • 7.  Graphology reveals insights into the mental, physical of the writer. 3/19/2016 7 Introduction(cont.) Habits , Likes and Dislikes Relationship patterns Intelligence Your handwriting develops right from childhood, adolescence and adulthood. Emotions ,Feelings and Temperament Intuition and Instincts Creativity and Talents
  • 8. Common Features of Graphology 3/19/2016 8 Introduction(cont.) Size Baseline Pressure
  • 9. Introduction(cont.) 3/19/2016 9 Slant Zones Speed in writing And Margins Spacing between letters ,words and line Common Features of Graphology
  • 10. Introduction(cont.) 3/19/201610 personality Arabic English ‫/التهكم‬ Sarcasm ‫الذات‬ ‫تقدير‬ ‫/عدم‬ Low self- esteem ‫للذات‬ ‫عالي‬ ‫/احترام‬ High self - esteem Personality analysis in Arabic and English
  • 11. 3/19/2016 11 personality Arabic English ‫/اصرار‬ Persistence ‫/عدوانية‬ Aggressive ‫فكر‬ ‫/سيولة‬ Fluidity of thoughts Introduction(cont.) Personality analysis in Arabic and English
  • 12. 3/19/2016 12 personality Arabic English ‫مسحوب‬‫عاطفيا‬ / Emotionally withdrawn ‫الشخصية‬ ‫/مزدوج‬ Dual personality ‫/دبلوماسي‬ diplomacy Introduction(cont.) Personality analysis in Arabic and English
  • 13. 3/19/2016 13 personality Arabic English ‫/مجادل‬ argumentative ‫وسيطرة‬ ‫/هيمنة‬ dominant ‫عالي‬ ‫/تركيز‬ concentration Introduction(cont.) Personality analysis in Arabic and English
  • 14. 3/19/2016 14 personality Arabic English ‫/غامض‬ secretive ‫/الكذب‬ laying ‫المشاعر‬ ‫/اتزان‬ ambivert Introduction(cont.) Personality analysis in Arabic and English
  • 15. Agenda Introduction Applications Handwriting analysis on-line vs. Off-line. Features for Arabic vs. English writings Research Plan References 3/19/2016 15
  • 16. Applications 3/19/2016 16 Graphology Personality prediction Forensic Diseases diagnosis 1-Human behavior (Extraversion) 2-Marital compatibility 3-Business compatibility 4-RECRUITMENT (Employment profiling) 5-Education 6-Lie detector 1-Writer identification 2-Investigations 3-Age,gender , nationality and handedness 4-Forged Signatures 1-Mental diseases Suicide, Alzheimer, Schizophrenia and Depression analysis 2-physical diseases Heart, cancer , Hypothyroidism (graves’ diseases) and Parkinson's Disease
  • 17. Agenda Introduction Applications Handwriting analysis on-line vs. Off-line. Features for Arabic vs. English writings Research Plan References 3/19/2016 17
  • 18. Handwriting analysis on-line vs. Off-line. On-line Off-line  Low noise  High recognition  (Automatic conversion of text)  Written on a special digitizer or PDA. Elements  digital pen or stylus .  Touch sensitive surface.  Software application.  High noise  Low recognition  (scanned image)  Written on papers Elements  Fountain pen  A4 paper  Scanner or Digital camera 3/19/2016 18
  • 19. Agenda Introduction Applications Handwriting analysis on-line vs. Off-line. Features for Arabic vs. English writings Research Plan References 3/19/2016 19
  • 21. Human behavior Database Features Classifiers Accuracy Multiple samples Baseline pen pressure Height of the T-bar ANN(Artificial Neural Network). 100 writers (70-80 words) most of them are cursive , few of them are printed Size of letters. Slant of letters and words. Baseline. pen pressure. Spacing between letters. Spacing between words. SVM(support vector machine) 30 writer of Age between (20-24) 100 words size of letters slant of letters and words baseline pen pressure spacing between letters and words Breaks(connected&disconnecte d) Margins Speed AHWAS (Automated Handwriting Analysis System) calibrated with manual analysis. 883 writers (404men ,479 women) age from 20 to 30 years Size Width of middle zone letters Slant Size of margins The way of ending the verse Angularity Stability of pressure SVM(Support Vector machine) 3/19/2016 21
  • 22. Human behavior 3/19/2016 22 Database Features Classifiers Accuracy 50 samples Margins - Baseline Size - Zonal ratio Slant - Space Degree of connection Myer Briggs dichotomies Based on Keirsey’s temperament sorter. handwriting samples Slant - size Pressure - word spacing line spacing - Baseline Least Squares Linear Regression 100 data set for signature and 156 type of 26 characters Curved start - End Streak Shell - middle streaks Underline - Extreme margin Dot structure - Separate Streaks disconnected Learning Vector Quantization (LVQ) for letters, ANN and multi-structure for signature 10 signatures Curved start - End Streak Shell - middle streaks Underline - Extreme margin Dot structure - Separate Streaks disconnected ANN and multi-structure
  • 24. Forensic 3/19/2016 24 Database Features Classifiers Accuracy 5,600 signatures (genuine, random and simulated forgeries). Static features (caliber , proportion , spacing , alignment to baseline) Pseudo-dynamic features (progression ,distribution of pixels, Form , Slant) HMM (hidden Markov models). Offline signature 1-QU online signature database (194 persons) 2-ICDAR 2009 data sets Pressure Distances Angles Speed Angular speeds Using multiple classifiers 1-Random Forest 2-logistic regression 3-linear regression 4-MARS(Multivariate Adaptive Regression Spline) 5-Neural Network with (2,5,10) hidden neuron. online signature verification for both forgeries and disguised signatures 29 writers by 10 sample/writer, 34 image/sample (9860 images) Enlarge to 70 users 2 auxiliary database final vowel "a" final vowel “o“ First group(writer and his/her writing) Skew ,Slant, Pressure VowelinfoA, VowelinfoO Second group (written words and writer) Correlation, Length ,Union of letters ,Thinning area SVM , NN+MVA(Most Voted Algorithm) Brazilian forensic letter database(BFL) (315 writers) 945 images Texture Features: Caliber , Progression Proportion , Pressure Entry/Exit points , Slant GLCM descriptors SVM(support Vector machine) dissimilarity representation
  • 25. Forensic 3/19/2016 25 Database Features Classifiers Accuracy (BFL) 315 writers , IAM database 650 writers texture descriptor local binary patterns (LBP) local phase quantization (LPQ) SVM(support vector machine) Brazilian forensic letter database(BFL) (20 writers) Brazilian forensic letter database(BFL) (200 writers) Number of lines Proportion of black pixels Right margin position. The lower left margin position. Upper margin position Bottom margin position Height of the first word Axial slant SVM(support vector machine) lAM English handwriting dataset(657 different writers ) Directions Curvatures Tortuosity Chain code Edge based directional Random forest lAM English handwriting dataset Multi-scale Local Binary Patterns Histogram texture features (MLBPH) Edge-hinge distribution Spectral regression(SR- KDA) for dimensionality reduction , K-nearest neighbor classifier (K-NN)
  • 27. Graphologists have determined that certain breaks in writing, slight interruptions in the upstroke and in the downstroke , especially in letters with loops, can point to heart disease. (En) [19] 1-The “Heart Tick” 3/19/2016 27 [2008] Joel Engel , Early Cancer Detection through Graphology Analysis. Variations of normal handwriting Down Strokes Up Strokes
  • 28. Earlier detecting cancer(cont.)  Finding Cancer in Its Early Stages  Samples of microphotographs of Mrs. B’s handwriting. 3/19/2016 28 Age 28 Age 33 Age 40 First Sample Second Sample Third Sample Smooth, continuous flow of movement The writing spreads out widely clear interruptions between descending and ascending strokes
  • 29. Graves’ Disease(Manual analysis) Objectives:  Evaluate handwriting characteristics before and after therapy for hyperthyroid Graves’ disease (GD).(En)[20] 3/19/2016 29 Database Features Classifier 22patients (15 women, 7 men) with untreated GD (median age: 44 years; range: 20–70 years) write slandered text before and 12 months after euthyroid  size of letters(mm)  distance between letters  width of letters  distance between words  extension of letters(assessed in the letters l, t, g, and p)  angles(The presence of the letters a, d, g, and q)  groove depth Stereoscopic microscope Magnifying glass. Giampaolo Papi,1,2 Cristina Botti,3 Salvatore Maria Corsello,2 Anna Vittoria Ciardullo,1 Alfredo Pontecorvi,2 and Laszlo Hegedu¨s ( 2014) 'The Impact of Graves’ Disease and Its Treatment on Handwriting Characteristics', Mary Ann Liebert, Inc., 24,[Online].(Accessed: Number 8, 2014).
  • 30. Graves’ Disease(cont.) 3/19/2016 30 (A) During hyperthyroidism ‫الغدة‬ ‫نشاط‬ ‫فرط‬ ‫,الدرقية‬ handwriting is hypertrophic and contracted with several angles. (B) Post treatment, in the euthyroid State ‫العادية‬ ‫الحالة‬ ‫,ف‬ the handwriting is characterized by an increased fluidity. Standard text written by Seventy-year-old female with Graves’ disease
  • 31. Graves’ Disease(cont.) 3/19/2016 31 In the euthyroid state (B) the size of the letters (dotted line) increases compared to the hyperthyroid state (A). whereas extensions of letters (white and gray arrows) and angles (black arrows) are reduced
  • 32. Graves’ Disease(cont.) 3/19/2016 32 Thirty-six-year-old female with Graves’ disease. Following recovery from hyperthyroidism the distance between the words (black dotted line) and the distance between the letters (gray line) are reduced, whereas the width of the letters (arrow) increased.
  • 34. Arabic Handwriting analysis 3/19/2016 34 Database Features Classifiers Accuracy Printed text 20 different characters fonts(320 text images printed)Handwritten text 22 persons (132 handwriting ) Texture features using (16 Gabor filters) WED(weighted Euclidian Distance) 10 writers , 20 Arabic images multi-scale edge-hinge features grapheme features K-NN AHDB Dataset 100 writer (32,000 Arabic word) Edge-direction distribution Moment invariants Word measurements (Area , Height, length from baseline to upper edge, length from baseline to the lower edge ) K-NN QUWI database that contains both Arabic and English handwritings ($commercially) 1017 WRITERS Directions‫اتجاه‬ Curvatures‫تقوس‬ Tortuosity ‫تعرج‬ chain codes edge-based directional K-NN
  • 35. Arabic Handwriting analysis 3/19/2016 35 Database Features Classifiers Accuracy QUWI (Arabic and English handwritings ($commercially) Directions‫اتجاه‬ curvatures‫تقوس‬ Tortuosity‫تعرج‬ chain codes edge-based directional Random forest ,Kernel discriminant analysis using spectral regression 120 Farsi handwriting samples Left and right margins Word expansion Letter size Line and word spacing Line skew The ratio of vertical to horizontal elongation of words Slant SVM
  • 36. Summary # English Arabic Common Features size of letters slant of letters and words baseline pen pressure spacing between letters and words Breaks(connected disconnected) Margins Speed Edge-direction distribution Moment invariants Word measurements Directions‫اتجاه‬ curvatures‫تقوس‬ Tortuosity‫تعرج‬ chain codes Classifier s SVM(7) K-NN(3),Random forest Database IAM,BFL AHDB(100 WRITERS)3/19/2016 36
  • 37. Agenda Introduction Applications Handwriting analysis on-line vs. Off-line. Features for Arabic vs. English writings Research Plan References 3/19/2016 37
  • 38. Research Plan 3/19/2016 38 Building Android Application For Online Arabic Graphology . We will work on available Database Arabic and English for writer identification with an improved set of features and classification methods. After that we will work on forgery signatures with real Arabic dataset. We aspires to work on Diseases diagnoses in Early Stages with Arabic dataset ,It will required building a database of real patients . Goal First Second Future work
  • 39. References(English) 1. Champa H N,Dr. K R AnandaKumar (2010) 'Artificial Neural Network for Human Behavior Prediction through Handwriting Analysis', International Journal of Computer Applications(0975 – 8887), 2(2), pp. 36-41 ,(Accessed: May 2010). 2. Shitala Prasad,Vivek Kumar Singh,Akshay Sapre (2010) Handwriting Analysis based on Segmentation Method for Prediction of Human Personality using Support Vector Machine, International Journal of Computer Applications (0975 – 8887), pp. 25-29 ,8(12), (Accessed: October 2010). 3. Vikram Kamath, Nikhil Ramaswamy, P. Navin Karanth, Vijay Desai and S. M. Kulkarni (2011) 'DEVELOPMENT OF AN AUTOMATED HANDWRITING ANALYSIS SYSTEM', ARPN Journal of Engineering and Applied Sciences , 6(9), pp. 135-140 [Online]. Available at: www.arpnjournals.com (Accessed: SEPTEMBER 2011). 4. UZANNA GÓRSKA,ARTUR JANICKI (2012) 'RECOGNITION OF EXTRAVERSION LEVEL BASED ON HANDWRITING AND SUPPORT VECTOR MACHINES1',Perceptual and Motor Skills 114, 3, 857-869, pp. 858-869 [Online]. Available at:(Accessed: May 31, 2012.). 5. Rashi Kacker and Hima Bindu Maringanti, (2012) 'Personality Analysis Through Handwriting', GSTF Journal on Computing (JoC), 2(1), pp. 858-869 [Online]. (Accessed: April 2012). 6. Abdul Rahiman M,Diana Varghese,Manoj Kumar G (2013) 'HABIT: Handwritten Analysis Based Individualistic Traits Prediction', International Journal of Image Processing (IJIP), 7(2), pp. 209-218 [Online]. Available at: (Accessed: 2013). 3/19/2016 39
  • 40. 6-Abdul Rahiman M,Diana Varghese,Manoj Kumar G (2013) 'HABIT: Handwritten Analysis Based Individualistic Traits Prediction', International Journal of Image Processing (IJIP), 7(2), pp. 209-218 [Online]. Available at: (Accessed: 2013). 7-Esmeralda C Djamal, Sheldy Nur Ramdlan, Jeri Saputra (2013) 'Recognition of Handwriting Based on Signature and Digit of Character Using Multiple of Artificial Neural Networks in Personality Identification , Information Systems International Conference (ISICO), 2(4), pp. 411-415 [Online]. (Accessed: December 2013). 8-Sandeep Dang,Prof. Mahesh Kumar, Mahesh (2014) 'Handwriting Analysis of Human Behaviour Based on Neural Network', International Journal of Advanced Research in Computer Science and Software Engineering, 4(9), pp. 227-232 [Online]. Available at:www.ijarcsse.com (Accessed: September 2014). 9-Luiz S. OLIVEIRA a , Edson JUSTINO a , Cinthia FREITAS a and Robert SABOURINb (2005) 'The Graphology Applied to Signature Verification', ,(Retrieved on:10 December2015). 10-Abdelâali Hassaïne,Somaya Al-ma'adeed (2012) 'An Online Signature Verification System for Forgery and Disguise Detection', [Online]. : (Accessed: NOVEMBER 2012). Retrieved on: 07 October 2015 11-Omar Santana, Carlos M. Travieso, Jesus B. Alonso, Miguel A. Ferrer (2010) 'Writer Identification Based on Graphology Techniques', IEEE A&E SYSTEMS MAGAZINE,,(), pp. [Online]. Available at: (Accessed: JUNE 2010). 12-R. K. Hanusiak · L. S. Oliveira · E. Justino · R. Sabourin (2011) 'Writer verification using texture-based features', Springer, (), pp. 214 -226,[Online]. (Accessed: 24 May 2011). 3/19/2016 40 References(English)
  • 41. 13-D. Bertolini a, L.S. Oliveira a,⇑, E. Justino b, R. Sabourin c ( 2012) 'Texture-based descriptors for writer identification and verification ', Elsevier Ltd, 40(6), pp. 2069–2080 [Online]. Available at: 18 October 2012 (Accessed: May 2013). 14-A. M. M. M. Amaral, C. O. A. Freitas, F. Bortolozzi. “The Graphometry applied to writer identification”. In Proceedings of the 2012 International Conference on Image Processing, Computer Vision, and Pattern Recognition, Las Vegas, USA, vol.1, pp.10- 16, 2012. 15-Aline Maria M. M. Amaral1,2, Cinthia O. A. Freitas2, and Flavio Bortolozzi1. “2013)Multiple Graphometric Features for Writer Identification as part of Forensic Handwriting Analysis”. In Proceedings of the 2013 International Conference on Image Processing, Computer Vision, and Pattern Recognition, Las Vegas, USA, vol.1, pp.10- 16, 2013. 16-A. Hassa¨ıne, S. Al-Maadeed, and A. Bouridane, “A set of geometrical features for writer identification,” Neural Information Process. Berlin Heidelberg: Springer,, vol. 45, pp. 584–591,2012. 17-E Khalifa S Al-Maadeed2, M A Tahir3, F Khelifil and A Bouridane1 ( 2013) 'OFF- LINE WRI TER I DENTIF ICATI ON U S ING MULTI- SCALE LOCAL BINARY PATTERNS AND SR-KDA', IEEE, [Online]. 18-Shweta Hegade1, Gargee Hiray2, Prajkta Mali3, Prof. Punam Raskar4 (2015) 'FODEX: Forensic Document Examiner –Using Graphology Science', IJETST, 2(3), pp. 2042-2045 [Online]. Available at: (Accessed: March 2015). 19-[2008] Joel Engel , Early Cancer Detection through Graphology Analysis. 20-Giampaolo Papi,1,2 Cristina Botti,3 Salvatore Maria Corsello,2 Anna Vittoria Ciardullo,1 Alfredo Pontecorvi,2 and Laszlo Hegedu¨s ( 2014) 'The Impact of Graves’ Disease and Its Treatment on Handwriting Characteristics', Mary Ann Liebert,3/19/2016 41 References(English)
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Editor's Notes

  1. When you write, your pen is under the control of the muscles of your fingers, hands and arm, All these body parts are under the control of your mind.
  2. Online modality (through WACOM Intous4 digitizing tablet ) Offline modality (scanned copies of signatures)
  3. Smooth, continuous flow of movement The strokes have an oval shape, the turns from descending to ascending strokes are narrow, curved, and show continuity of movement throughout. A regular pattern of heavier (wider and darker) descending strokes and lighter ascending strokes prevails throughout the sample. Heavier descending strokes and lighter ascending strokes is still preserved The narrow turns have disappeared. The writing spreads out widely The strokes are much weaker and highly unstable غير مستقر Clear interruptions between descending and ascending strokes are also visible. Breakdown of every phase of the writing process. The strokes are stiff or formless. The pressure is uneven, sometimes too heavy, and in other strokes too light. There are clear interruptions between descending and ascending strokes
  4. The study of Arabic handwriting identification is limited The recognition of Arabic characters is also important for certain non-Arabic-speaking languages, such as Farsi, Kurd, Persian, and Urdu.