SlideShare une entreprise Scribd logo
1  sur  19
Islamic University of Technology(IUT)
Department of Computer Science and Engineering(CSE)
Offline Signature Verification Using
Local Keypoint Features
Supervised By:
Dr. Hasanul kabir
Assistant professor, CSE dept.
Islamic university of technology(iut)
Presented By:
Ashikur Rahman (104401)
Golam Mostaeen (104404)
Contents
 Introduction
 Offline Signature Verification
 Research Challenges
 Thesis Objective
 Related Works
 Proposed Method
 Dataset & Implementation
 Future Works
 References
2
INTRODUCTION
A signature is a person's name written in a distinctive way as a form of identification in
authorizing a check or document or concluding a letter.
Signature forgery refers to the act of falsely replicating the signature of another person.
Signature forgery is done in order to-
 Commit frauds
 Deceive others
 Alter data etc.
One common example of signature forgery is cheque writing.
3
Offline Signature Verification
Those forgeries can be verified in two methods-
 Online Signature Verification
• Deals with dynamic features like
speed, pen pressure, directions,
stoke length and when the pen is
lifted from the paper
 Offline Signature Verification
• Uses features(static information)
from the image.
• Deals with shape only.
• Largely used for verifying bank
cheques
4
Research Challenges
 Differentiating different parts of signature
that varies with each signing-
 Signature orientation can be different-
 Input image may contain noise.
 Isolating the sector of interest from the
total input image-
Threshold value should be taken wisely so
that False accept and False Reject occur very
less.
 The nature and variety of the writing
pen
5
Thesis Objective
Our main objective of this thesis is to
develop a method that will calculate
features of a signature and verify it
comparing with sample prototype in
spite of having-
 Noise in the image
 Different orientation
 Various writing
Already we have implemented several
existing detection methods signature
verification and figured out the
limitations of the methods. Our goal is to
ensure better performance in robust
nature so that we can easily detect the
forged signature in different challenging
situations.
6
Overall Workflow of Signature Verification
All the methods of signature verification undergoes the following steps:
 Feature is extracted (Varies from methods to methods)
 Features are classified
 The system is trained
 Matching
7
Related Works
Existing methods so far we studied can be categorized by the following tree-
8
Related works(contd.)
Global & geometric Method(A. C.
Verma,D. Saha,H. Saikia,2013):
• Geometric data(aspect ratio, center of
gravity, baseline shift etc.) are
considered as feature
• Mean of each feature calculated from
the training data
• Variance is used to calculate the
Euclidian distance which is the basis
of comparison
The formula is-
Limitations:
• Cannot detect skilled forgery as the
geometric value get closer
• False accept occurs more often
Angular based model(Prashanth & Raja,
2012):
• Calculate average no. of rows and
columns for random forgery detection
• For skilled, split the image in two blocks
recursively until 128 blocks have found
on basis of geometric center
• Angle and distance for all the center
points of each block is calculated from
the point (1,1) for feature extraction.
Limitation:
• Depends on global value(angle and
distance)
9
Related works(contd.)
Grid Model(Madasu & Brian,2002):
• Image is partitioned into 8 partitions using
equal horizontal density approximation
method.
• Each Box portioned into 12 boxes (total 96
boxes)
• calculate the summation of the angles of
all points in each box taken with respect
to the bottom left corner and normalize
it for feature.
Limitations:
• Even a little change in the signature leads
to much change in the result.
Radon transform model(Kiani &
Pourreza,2011):
• Computes projection sum of the
image intensity along a radial line
oriented at a specific angle with the
formula-
Where the δ(r) is Dirac function.
• Computation of Radon Transform is its
projections across the image at arbitrary
orientations θ and offsets ρ which is
used as feature
Limitations:
• False reject rate is little high for this
method
10
Related works(contd.)
SURF model(Bay & Gool,2006):
• First, key point is detected using fast
Hessian Detector and Haar wavelet.
The formula of Hessian matrix is-
• Then SURF descriptor is extracted using
assignment orientation.
Limitations:
• The time needed to detect can be
beaten today
G-SURF model(Pal, Chanda &
Franke,2012):
• Uses Gabor filter along with SURF
algorithm
• A two dimensional Gabor Filter in
spatial domain can be defined as
follows-
Limitations:
• Though it overcomes the performance
of SIFT and SURF, still need to be
upgraded
11
Related works(contd.)
Harris Corner Detection:
• This method detects corner first
recognizing the points by looking the
intensity within the small window
• Shifting the window in any direction
should yield a large change in
appearance
• Different output can be gained by
setting a desirable threshold value
Feature descriptor:
• Describe a point assigning orientation
around it
• Divides the surrounding area into 16
blocks, each blocks have a histogram
of 8 bins each
• So, each point has a (16x8) 128 long
feature vector
12
Proposed Method
 Preprocessing
• Noise removal
• Isolating area of interest
• Assignment orientation for rotation invariance
 Keypoint detection using Harris Corner Detection
 Creating Feature descriptor
• Creating 16 blocks around the keypoint
• Calculate gradient magnitude and direction
• Weigh the magnitude with Gaussian filter
• Create 8 bin histogram
• Each point have 128(16x8) bin
 Classify the descriptors using KNN classifier
 Compare the prototype with the testing signature
13
Proposed Method(Contd.)
• Further checking for skilled Forgery
A high level of skilled forgery may pass the above
test but those can be further detected using the
following tests:
 Edge thickness will be calculated to detect
overwriting
 Straightness of the edges will be checked
 Sudden blobs in the signature need to be
detected
 End point will be checked to detect sharp
finish
If a Signature Passes all those tests we consider it
as a authentic signature.
14
Dataset & Implementation
 Dataset
 We have collected our dataset from different persons. Signature s was
taken in white paper and scanned for training our system.
 Similarly we took forged and genuine version of the signatures for
testing the performance of different verification method we
implemented.
Global & Geometric Method:
After implementing this
method we compared its
performance for varying
threshold of acceptance. The
graph at the right represents
its performance.
 As the threshold is
increased FAR increases but
FRR is decreases somewhat
proportionately.
15
Implementation(Cont.)
Implementation of the proposed method
For implementation of the proposed method we followed the following steps:
1. Pre-processing:
The pre-processing involves different steps. We performed the following steps
in sequences: Cropping the area of interest, noise removal and binarisation.
2. Key point extraction:
We used Harris Corner detection to find out the key point of the supplied
signature. The following right image shows the signature after key point has been
extracted from supplied left signature.
3. Feature descriptor
For each keypoint a feature vector of length 128 has been calculated. This
vector contain the histogram of orientation around the point.
16
Future Works
• So far we have figured out several problems of existing methods of signature
detection through implementation
• Still we did not implemented our proposed method but from the implementation
& analysis of existing method we can say that it will give us better performance
• So our future work is to implement the proposed method so that it can ensure-
 more robust with rotation invariance
 robustness in noise
 robust in variant ink
with minimum complexity
17
Thank you.
Any Question ?
18
References
• A. C. Verma,D. Saha, H. Saikia; ’FORGERY DETECTION IN OFFLINE HANDWRITTENSIGNATURE
USING GLOBAL AND GEOMETRIC FEATURES’, IJCER(Vol.2, Issue 2, April 2013)
• Prashanth C R, K B Raja, Venugopal K R, L M Patnaik,’ Intra-modal Score level Fusion for Off-
line Signature Verification’, IJITEE, ISSN: 2278-3075, Vol.1, Issue 2, July 2012
• Prashanth C. R. and K. B. Raja,’ Off-line Signature Verification Based on Angular Features’
IJMO, Vol. 2, No. 4, August 2012
• M.Radmehr, S.M.Anisheh, I.Yousefian,’ Offline Signature Recognition using Radon Transform’,
WASET, Vol:6 2012-02-28
• Bay H,Tinne t.,Gool l.,’ SURF: Speeded Up Robust Features’;
• Samaneh G., Mohsen E., i Moghaddam, “Off-line Persian Signature Identification and
Verification Based on Image Registration and Fusion,” Journal of Multimedia, Vol. 4, No.
3, pp.137-144, June 2009.
• Jesus F Vargas, Miguel A Ferrer, Carlos M Travieso, and Jesus B Alonso, “Off-line
Signature Verification Based on Psuedo-Cepstral Coefficients,” International Conference
on Document Analysis and Recognition, pp. 126-130, 2009
• V A Bharadi and H B Kekre, “Off-line Signature Recognition Systems,” International
Journal of Computer Applications, Vol. 1, No. 27, pp. 61-70, 2010
19

Contenu connexe

Tendances

Tendances (20)

Speech emotion recognition
Speech emotion recognitionSpeech emotion recognition
Speech emotion recognition
 
Handwritten Character Recognition
Handwritten Character RecognitionHandwritten Character Recognition
Handwritten Character Recognition
 
SPEECH BASED EMOTION RECOGNITION USING VOICE
SPEECH BASED  EMOTION RECOGNITION USING VOICESPEECH BASED  EMOTION RECOGNITION USING VOICE
SPEECH BASED EMOTION RECOGNITION USING VOICE
 
An offline signature recognition and verification system based on neural network
An offline signature recognition and verification system based on neural networkAn offline signature recognition and verification system based on neural network
An offline signature recognition and verification system based on neural network
 
Lect 06
Lect 06 Lect 06
Lect 06
 
5. gray level transformation
5. gray level transformation5. gray level transformation
5. gray level transformation
 
Signature verification Using SIFT Features
Signature verification Using SIFT FeaturesSignature verification Using SIFT Features
Signature verification Using SIFT Features
 
face recognition
face recognitionface recognition
face recognition
 
Pattern recognition voice biometrics
Pattern recognition voice biometricsPattern recognition voice biometrics
Pattern recognition voice biometrics
 
Handwritten Digit Recognition(Convolutional Neural Network) PPT
Handwritten Digit Recognition(Convolutional Neural Network) PPTHandwritten Digit Recognition(Convolutional Neural Network) PPT
Handwritten Digit Recognition(Convolutional Neural Network) PPT
 
Edge detection
Edge detectionEdge detection
Edge detection
 
Introduction to image processing and pattern recognition
Introduction to image processing and pattern recognitionIntroduction to image processing and pattern recognition
Introduction to image processing and pattern recognition
 
Image recognition
Image recognitionImage recognition
Image recognition
 
Chapter 1 and 2 gonzalez and woods
Chapter 1 and 2 gonzalez and woodsChapter 1 and 2 gonzalez and woods
Chapter 1 and 2 gonzalez and woods
 
Homomorphic filtering
Homomorphic filteringHomomorphic filtering
Homomorphic filtering
 
Image Restoration
Image RestorationImage Restoration
Image Restoration
 
Hand Gesture Recognition Applications
Hand Gesture Recognition ApplicationsHand Gesture Recognition Applications
Hand Gesture Recognition Applications
 
Keystroke dynamics
Keystroke dynamicsKeystroke dynamics
Keystroke dynamics
 
Criminal Record Management System in the Perspective of Somalia
Criminal Record Management System in the Perspective of Somalia  Criminal Record Management System in the Perspective of Somalia
Criminal Record Management System in the Perspective of Somalia
 
Computer Vision
Computer VisionComputer Vision
Computer Vision
 

En vedette

Online signature recognition
Online signature recognitionOnline signature recognition
Online signature recognition
Piyush Mittal
 
Matching with Invariant Features
Matching with Invariant FeaturesMatching with Invariant Features
Matching with Invariant Features
zukun
 
Modern features-part-1-detectors
Modern features-part-1-detectorsModern features-part-1-detectors
Modern features-part-1-detectors
zukun
 
Offline Handwritten Signature Identification and Verification using Multi-Res...
Offline Handwritten Signature Identification and Verification using Multi-Res...Offline Handwritten Signature Identification and Verification using Multi-Res...
Offline Handwritten Signature Identification and Verification using Multi-Res...
CSCJournals
 
Authentication using Biometrics
Authentication using BiometricsAuthentication using Biometrics
Authentication using Biometrics
isha ranjan
 
Modern features-part-2-descriptors
Modern features-part-2-descriptorsModern features-part-2-descriptors
Modern features-part-2-descriptors
zukun
 
AAAI08 tutorial: visual object recognition
AAAI08 tutorial: visual object recognitionAAAI08 tutorial: visual object recognition
AAAI08 tutorial: visual object recognition
zukun
 
CSI Handwriting Analysis
CSI Handwriting AnalysisCSI Handwriting Analysis
CSI Handwriting Analysis
Mrs. Henley
 
SIFT vs other Feature Descriptor
SIFT vs other Feature DescriptorSIFT vs other Feature Descriptor
SIFT vs other Feature Descriptor
Nisar Ahmed Rana
 
Hand Written Character Recognition Using Neural Networks
Hand Written Character Recognition Using Neural Networks Hand Written Character Recognition Using Neural Networks
Hand Written Character Recognition Using Neural Networks
Chiranjeevi Adi
 

En vedette (20)

Online signature recognition
Online signature recognitionOnline signature recognition
Online signature recognition
 
Signature verification in biometrics
Signature verification in biometricsSignature verification in biometrics
Signature verification in biometrics
 
Global Context Descriptors for SURF and MSER Feature Descriptors
Global Context Descriptors for SURF and MSER Feature DescriptorsGlobal Context Descriptors for SURF and MSER Feature Descriptors
Global Context Descriptors for SURF and MSER Feature Descriptors
 
Local feature descriptors for visual recognition
Local feature descriptors for visual recognitionLocal feature descriptors for visual recognition
Local feature descriptors for visual recognition
 
Matching with Invariant Features
Matching with Invariant FeaturesMatching with Invariant Features
Matching with Invariant Features
 
Modern features-part-1-detectors
Modern features-part-1-detectorsModern features-part-1-detectors
Modern features-part-1-detectors
 
Offline Handwritten Signature Identification and Verification using Multi-Res...
Offline Handwritten Signature Identification and Verification using Multi-Res...Offline Handwritten Signature Identification and Verification using Multi-Res...
Offline Handwritten Signature Identification and Verification using Multi-Res...
 
Authentication using Biometrics
Authentication using BiometricsAuthentication using Biometrics
Authentication using Biometrics
 
SURF
SURFSURF
SURF
 
A Novel Automated Approach for Offline Signature Verification Based on Shape ...
A Novel Automated Approach for Offline Signature Verification Based on Shape ...A Novel Automated Approach for Offline Signature Verification Based on Shape ...
A Novel Automated Approach for Offline Signature Verification Based on Shape ...
 
Modern features-part-2-descriptors
Modern features-part-2-descriptorsModern features-part-2-descriptors
Modern features-part-2-descriptors
 
AAAI08 tutorial: visual object recognition
AAAI08 tutorial: visual object recognitionAAAI08 tutorial: visual object recognition
AAAI08 tutorial: visual object recognition
 
CSI Handwriting Analysis
CSI Handwriting AnalysisCSI Handwriting Analysis
CSI Handwriting Analysis
 
PPT 7.4.2015
PPT 7.4.2015PPT 7.4.2015
PPT 7.4.2015
 
Electronic banking presentation
Electronic banking presentationElectronic banking presentation
Electronic banking presentation
 
Internet Banking
Internet BankingInternet Banking
Internet Banking
 
E banking
E bankingE banking
E banking
 
SIFT vs other Feature Descriptor
SIFT vs other Feature DescriptorSIFT vs other Feature Descriptor
SIFT vs other Feature Descriptor
 
Internet banking
Internet bankingInternet banking
Internet banking
 
Hand Written Character Recognition Using Neural Networks
Hand Written Character Recognition Using Neural Networks Hand Written Character Recognition Using Neural Networks
Hand Written Character Recognition Using Neural Networks
 

Similaire à Off-line Signature Verification

Data quality evaluation & orbit identification from scatterometer
Data quality evaluation & orbit identification from scatterometerData quality evaluation & orbit identification from scatterometer
Data quality evaluation & orbit identification from scatterometer
Mudit Dholakia
 
NEAL-2016 ARL Symposium Poster
NEAL-2016 ARL Symposium PosterNEAL-2016 ARL Symposium Poster
NEAL-2016 ARL Symposium Poster
Barbara Jean Neal
 
Review of three categories of fingerprint recognition 2
Review of three categories of fingerprint recognition 2Review of three categories of fingerprint recognition 2
Review of three categories of fingerprint recognition 2
prjpublications
 
Review of three categories of fingerprint recognition
Review of three categories of fingerprint recognitionReview of three categories of fingerprint recognition
Review of three categories of fingerprint recognition
prjpublications
 
Review of three categories of fingerprint recognition 2
Review of three categories of fingerprint recognition 2Review of three categories of fingerprint recognition 2
Review of three categories of fingerprint recognition 2
prj_publication
 
Highly Secured Bio-Metric Authentication Model with Palm Print Identification
Highly Secured Bio-Metric Authentication Model with Palm Print IdentificationHighly Secured Bio-Metric Authentication Model with Palm Print Identification
Highly Secured Bio-Metric Authentication Model with Palm Print Identification
IJERA Editor
 

Similaire à Off-line Signature Verification (20)

Biometric identification with improved efficiency using sift algorithm
Biometric identification with improved efficiency using sift algorithmBiometric identification with improved efficiency using sift algorithm
Biometric identification with improved efficiency using sift algorithm
 
Offline signature identification using high intensity variations and cross ov...
Offline signature identification using high intensity variations and cross ov...Offline signature identification using high intensity variations and cross ov...
Offline signature identification using high intensity variations and cross ov...
 
Automatic signature verification with chain code using weighted distance and ...
Automatic signature verification with chain code using weighted distance and ...Automatic signature verification with chain code using weighted distance and ...
Automatic signature verification with chain code using weighted distance and ...
 
Offline Signature Verification Using Local Radon Transform and Support Vector...
Offline Signature Verification Using Local Radon Transform and Support Vector...Offline Signature Verification Using Local Radon Transform and Support Vector...
Offline Signature Verification Using Local Radon Transform and Support Vector...
 
E017443136
E017443136E017443136
E017443136
 
International Journal of Computational Engineering Research(IJCER)
International Journal of Computational Engineering Research(IJCER)International Journal of Computational Engineering Research(IJCER)
International Journal of Computational Engineering Research(IJCER)
 
Data quality evaluation & orbit identification from scatterometer
Data quality evaluation & orbit identification from scatterometerData quality evaluation & orbit identification from scatterometer
Data quality evaluation & orbit identification from scatterometer
 
Long-term Face Tracking in the Wild using Deep Learning
Long-term Face Tracking in the Wild using Deep LearningLong-term Face Tracking in the Wild using Deep Learning
Long-term Face Tracking in the Wild using Deep Learning
 
23-02-03[1]
23-02-03[1]23-02-03[1]
23-02-03[1]
 
An Assimilated Face Recognition System with effective Gender Recognition Rate
An Assimilated Face Recognition System with effective Gender Recognition RateAn Assimilated Face Recognition System with effective Gender Recognition Rate
An Assimilated Face Recognition System with effective Gender Recognition Rate
 
E41033336
E41033336E41033336
E41033336
 
Scale Saliency: Applications in Visual Matching,Tracking and View-Based Objec...
Scale Saliency: Applications in Visual Matching,Tracking and View-Based Objec...Scale Saliency: Applications in Visual Matching,Tracking and View-Based Objec...
Scale Saliency: Applications in Visual Matching,Tracking and View-Based Objec...
 
Artificial Intelligence Based Bank Cheque Signature Verification System
Artificial Intelligence Based Bank Cheque Signature Verification SystemArtificial Intelligence Based Bank Cheque Signature Verification System
Artificial Intelligence Based Bank Cheque Signature Verification System
 
NEAL-2016 ARL Symposium Poster
NEAL-2016 ARL Symposium PosterNEAL-2016 ARL Symposium Poster
NEAL-2016 ARL Symposium Poster
 
OFFLINE SIGNATURE VERIFICATION SYSTEM FOR BANK CHEQUES USING ZERNIKE MOMENTS,...
OFFLINE SIGNATURE VERIFICATION SYSTEM FOR BANK CHEQUES USING ZERNIKE MOMENTS,...OFFLINE SIGNATURE VERIFICATION SYSTEM FOR BANK CHEQUES USING ZERNIKE MOMENTS,...
OFFLINE SIGNATURE VERIFICATION SYSTEM FOR BANK CHEQUES USING ZERNIKE MOMENTS,...
 
Review of three categories of fingerprint recognition 2
Review of three categories of fingerprint recognition 2Review of three categories of fingerprint recognition 2
Review of three categories of fingerprint recognition 2
 
Review of three categories of fingerprint recognition
Review of three categories of fingerprint recognitionReview of three categories of fingerprint recognition
Review of three categories of fingerprint recognition
 
Review of three categories of fingerprint recognition 2
Review of three categories of fingerprint recognition 2Review of three categories of fingerprint recognition 2
Review of three categories of fingerprint recognition 2
 
Highly Secured Bio-Metric Authentication Model with Palm Print Identification
Highly Secured Bio-Metric Authentication Model with Palm Print IdentificationHighly Secured Bio-Metric Authentication Model with Palm Print Identification
Highly Secured Bio-Metric Authentication Model with Palm Print Identification
 
Automated Laser Scanning System For Reverse Engineering And Inspection
Automated Laser Scanning System For Reverse Engineering And InspectionAutomated Laser Scanning System For Reverse Engineering And Inspection
Automated Laser Scanning System For Reverse Engineering And Inspection
 

Dernier

AI Mastery 201: Elevating Your Workflow with Advanced LLM Techniques
AI Mastery 201: Elevating Your Workflow with Advanced LLM TechniquesAI Mastery 201: Elevating Your Workflow with Advanced LLM Techniques
AI Mastery 201: Elevating Your Workflow with Advanced LLM Techniques
VictorSzoltysek
 
TECUNIQUE: Success Stories: IT Service provider
TECUNIQUE: Success Stories: IT Service providerTECUNIQUE: Success Stories: IT Service provider
TECUNIQUE: Success Stories: IT Service provider
mohitmore19
 
CHEAP Call Girls in Pushp Vihar (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICE
CHEAP Call Girls in Pushp Vihar (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICECHEAP Call Girls in Pushp Vihar (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICE
CHEAP Call Girls in Pushp Vihar (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICE
9953056974 Low Rate Call Girls In Saket, Delhi NCR
 
introduction-to-automotive Andoid os-csimmonds-ndctechtown-2021.pdf
introduction-to-automotive Andoid os-csimmonds-ndctechtown-2021.pdfintroduction-to-automotive Andoid os-csimmonds-ndctechtown-2021.pdf
introduction-to-automotive Andoid os-csimmonds-ndctechtown-2021.pdf
VishalKumarJha10
 

Dernier (20)

Define the academic and professional writing..pdf
Define the academic and professional writing..pdfDefine the academic and professional writing..pdf
Define the academic and professional writing..pdf
 
8257 interfacing 2 in microprocessor for btech students
8257 interfacing 2 in microprocessor for btech students8257 interfacing 2 in microprocessor for btech students
8257 interfacing 2 in microprocessor for btech students
 
5 Signs You Need a Fashion PLM Software.pdf
5 Signs You Need a Fashion PLM Software.pdf5 Signs You Need a Fashion PLM Software.pdf
5 Signs You Need a Fashion PLM Software.pdf
 
How To Use Server-Side Rendering with Nuxt.js
How To Use Server-Side Rendering with Nuxt.jsHow To Use Server-Side Rendering with Nuxt.js
How To Use Server-Side Rendering with Nuxt.js
 
Reassessing the Bedrock of Clinical Function Models: An Examination of Large ...
Reassessing the Bedrock of Clinical Function Models: An Examination of Large ...Reassessing the Bedrock of Clinical Function Models: An Examination of Large ...
Reassessing the Bedrock of Clinical Function Models: An Examination of Large ...
 
AI Mastery 201: Elevating Your Workflow with Advanced LLM Techniques
AI Mastery 201: Elevating Your Workflow with Advanced LLM TechniquesAI Mastery 201: Elevating Your Workflow with Advanced LLM Techniques
AI Mastery 201: Elevating Your Workflow with Advanced LLM Techniques
 
Shapes for Sharing between Graph Data Spaces - and Epistemic Querying of RDF-...
Shapes for Sharing between Graph Data Spaces - and Epistemic Querying of RDF-...Shapes for Sharing between Graph Data Spaces - and Epistemic Querying of RDF-...
Shapes for Sharing between Graph Data Spaces - and Epistemic Querying of RDF-...
 
Azure_Native_Qumulo_High_Performance_Compute_Benchmarks.pdf
Azure_Native_Qumulo_High_Performance_Compute_Benchmarks.pdfAzure_Native_Qumulo_High_Performance_Compute_Benchmarks.pdf
Azure_Native_Qumulo_High_Performance_Compute_Benchmarks.pdf
 
Microsoft AI Transformation Partner Playbook.pdf
Microsoft AI Transformation Partner Playbook.pdfMicrosoft AI Transformation Partner Playbook.pdf
Microsoft AI Transformation Partner Playbook.pdf
 
TECUNIQUE: Success Stories: IT Service provider
TECUNIQUE: Success Stories: IT Service providerTECUNIQUE: Success Stories: IT Service provider
TECUNIQUE: Success Stories: IT Service provider
 
The Ultimate Test Automation Guide_ Best Practices and Tips.pdf
The Ultimate Test Automation Guide_ Best Practices and Tips.pdfThe Ultimate Test Automation Guide_ Best Practices and Tips.pdf
The Ultimate Test Automation Guide_ Best Practices and Tips.pdf
 
The Guide to Integrating Generative AI into Unified Continuous Testing Platfo...
The Guide to Integrating Generative AI into Unified Continuous Testing Platfo...The Guide to Integrating Generative AI into Unified Continuous Testing Platfo...
The Guide to Integrating Generative AI into Unified Continuous Testing Platfo...
 
CHEAP Call Girls in Pushp Vihar (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICE
CHEAP Call Girls in Pushp Vihar (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICECHEAP Call Girls in Pushp Vihar (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICE
CHEAP Call Girls in Pushp Vihar (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICE
 
Diamond Application Development Crafting Solutions with Precision
Diamond Application Development Crafting Solutions with PrecisionDiamond Application Development Crafting Solutions with Precision
Diamond Application Development Crafting Solutions with Precision
 
call girls in Vaishali (Ghaziabad) 🔝 >༒8448380779 🔝 genuine Escort Service 🔝✔️✔️
call girls in Vaishali (Ghaziabad) 🔝 >༒8448380779 🔝 genuine Escort Service 🔝✔️✔️call girls in Vaishali (Ghaziabad) 🔝 >༒8448380779 🔝 genuine Escort Service 🔝✔️✔️
call girls in Vaishali (Ghaziabad) 🔝 >༒8448380779 🔝 genuine Escort Service 🔝✔️✔️
 
introduction-to-automotive Andoid os-csimmonds-ndctechtown-2021.pdf
introduction-to-automotive Andoid os-csimmonds-ndctechtown-2021.pdfintroduction-to-automotive Andoid os-csimmonds-ndctechtown-2021.pdf
introduction-to-automotive Andoid os-csimmonds-ndctechtown-2021.pdf
 
Unveiling the Tech Salsa of LAMs with Janus in Real-Time Applications
Unveiling the Tech Salsa of LAMs with Janus in Real-Time ApplicationsUnveiling the Tech Salsa of LAMs with Janus in Real-Time Applications
Unveiling the Tech Salsa of LAMs with Janus in Real-Time Applications
 
A Secure and Reliable Document Management System is Essential.docx
A Secure and Reliable Document Management System is Essential.docxA Secure and Reliable Document Management System is Essential.docx
A Secure and Reliable Document Management System is Essential.docx
 
Vip Call Girls Noida ➡️ Delhi ➡️ 9999965857 No Advance 24HRS Live
Vip Call Girls Noida ➡️ Delhi ➡️ 9999965857 No Advance 24HRS LiveVip Call Girls Noida ➡️ Delhi ➡️ 9999965857 No Advance 24HRS Live
Vip Call Girls Noida ➡️ Delhi ➡️ 9999965857 No Advance 24HRS Live
 
call girls in Vaishali (Ghaziabad) 🔝 >༒8448380779 🔝 genuine Escort Service 🔝✔️✔️
call girls in Vaishali (Ghaziabad) 🔝 >༒8448380779 🔝 genuine Escort Service 🔝✔️✔️call girls in Vaishali (Ghaziabad) 🔝 >༒8448380779 🔝 genuine Escort Service 🔝✔️✔️
call girls in Vaishali (Ghaziabad) 🔝 >༒8448380779 🔝 genuine Escort Service 🔝✔️✔️
 

Off-line Signature Verification

  • 1. Islamic University of Technology(IUT) Department of Computer Science and Engineering(CSE) Offline Signature Verification Using Local Keypoint Features Supervised By: Dr. Hasanul kabir Assistant professor, CSE dept. Islamic university of technology(iut) Presented By: Ashikur Rahman (104401) Golam Mostaeen (104404)
  • 2. Contents  Introduction  Offline Signature Verification  Research Challenges  Thesis Objective  Related Works  Proposed Method  Dataset & Implementation  Future Works  References 2
  • 3. INTRODUCTION A signature is a person's name written in a distinctive way as a form of identification in authorizing a check or document or concluding a letter. Signature forgery refers to the act of falsely replicating the signature of another person. Signature forgery is done in order to-  Commit frauds  Deceive others  Alter data etc. One common example of signature forgery is cheque writing. 3
  • 4. Offline Signature Verification Those forgeries can be verified in two methods-  Online Signature Verification • Deals with dynamic features like speed, pen pressure, directions, stoke length and when the pen is lifted from the paper  Offline Signature Verification • Uses features(static information) from the image. • Deals with shape only. • Largely used for verifying bank cheques 4
  • 5. Research Challenges  Differentiating different parts of signature that varies with each signing-  Signature orientation can be different-  Input image may contain noise.  Isolating the sector of interest from the total input image- Threshold value should be taken wisely so that False accept and False Reject occur very less.  The nature and variety of the writing pen 5
  • 6. Thesis Objective Our main objective of this thesis is to develop a method that will calculate features of a signature and verify it comparing with sample prototype in spite of having-  Noise in the image  Different orientation  Various writing Already we have implemented several existing detection methods signature verification and figured out the limitations of the methods. Our goal is to ensure better performance in robust nature so that we can easily detect the forged signature in different challenging situations. 6
  • 7. Overall Workflow of Signature Verification All the methods of signature verification undergoes the following steps:  Feature is extracted (Varies from methods to methods)  Features are classified  The system is trained  Matching 7
  • 8. Related Works Existing methods so far we studied can be categorized by the following tree- 8
  • 9. Related works(contd.) Global & geometric Method(A. C. Verma,D. Saha,H. Saikia,2013): • Geometric data(aspect ratio, center of gravity, baseline shift etc.) are considered as feature • Mean of each feature calculated from the training data • Variance is used to calculate the Euclidian distance which is the basis of comparison The formula is- Limitations: • Cannot detect skilled forgery as the geometric value get closer • False accept occurs more often Angular based model(Prashanth & Raja, 2012): • Calculate average no. of rows and columns for random forgery detection • For skilled, split the image in two blocks recursively until 128 blocks have found on basis of geometric center • Angle and distance for all the center points of each block is calculated from the point (1,1) for feature extraction. Limitation: • Depends on global value(angle and distance) 9
  • 10. Related works(contd.) Grid Model(Madasu & Brian,2002): • Image is partitioned into 8 partitions using equal horizontal density approximation method. • Each Box portioned into 12 boxes (total 96 boxes) • calculate the summation of the angles of all points in each box taken with respect to the bottom left corner and normalize it for feature. Limitations: • Even a little change in the signature leads to much change in the result. Radon transform model(Kiani & Pourreza,2011): • Computes projection sum of the image intensity along a radial line oriented at a specific angle with the formula- Where the δ(r) is Dirac function. • Computation of Radon Transform is its projections across the image at arbitrary orientations θ and offsets ρ which is used as feature Limitations: • False reject rate is little high for this method 10
  • 11. Related works(contd.) SURF model(Bay & Gool,2006): • First, key point is detected using fast Hessian Detector and Haar wavelet. The formula of Hessian matrix is- • Then SURF descriptor is extracted using assignment orientation. Limitations: • The time needed to detect can be beaten today G-SURF model(Pal, Chanda & Franke,2012): • Uses Gabor filter along with SURF algorithm • A two dimensional Gabor Filter in spatial domain can be defined as follows- Limitations: • Though it overcomes the performance of SIFT and SURF, still need to be upgraded 11
  • 12. Related works(contd.) Harris Corner Detection: • This method detects corner first recognizing the points by looking the intensity within the small window • Shifting the window in any direction should yield a large change in appearance • Different output can be gained by setting a desirable threshold value Feature descriptor: • Describe a point assigning orientation around it • Divides the surrounding area into 16 blocks, each blocks have a histogram of 8 bins each • So, each point has a (16x8) 128 long feature vector 12
  • 13. Proposed Method  Preprocessing • Noise removal • Isolating area of interest • Assignment orientation for rotation invariance  Keypoint detection using Harris Corner Detection  Creating Feature descriptor • Creating 16 blocks around the keypoint • Calculate gradient magnitude and direction • Weigh the magnitude with Gaussian filter • Create 8 bin histogram • Each point have 128(16x8) bin  Classify the descriptors using KNN classifier  Compare the prototype with the testing signature 13
  • 14. Proposed Method(Contd.) • Further checking for skilled Forgery A high level of skilled forgery may pass the above test but those can be further detected using the following tests:  Edge thickness will be calculated to detect overwriting  Straightness of the edges will be checked  Sudden blobs in the signature need to be detected  End point will be checked to detect sharp finish If a Signature Passes all those tests we consider it as a authentic signature. 14
  • 15. Dataset & Implementation  Dataset  We have collected our dataset from different persons. Signature s was taken in white paper and scanned for training our system.  Similarly we took forged and genuine version of the signatures for testing the performance of different verification method we implemented. Global & Geometric Method: After implementing this method we compared its performance for varying threshold of acceptance. The graph at the right represents its performance.  As the threshold is increased FAR increases but FRR is decreases somewhat proportionately. 15
  • 16. Implementation(Cont.) Implementation of the proposed method For implementation of the proposed method we followed the following steps: 1. Pre-processing: The pre-processing involves different steps. We performed the following steps in sequences: Cropping the area of interest, noise removal and binarisation. 2. Key point extraction: We used Harris Corner detection to find out the key point of the supplied signature. The following right image shows the signature after key point has been extracted from supplied left signature. 3. Feature descriptor For each keypoint a feature vector of length 128 has been calculated. This vector contain the histogram of orientation around the point. 16
  • 17. Future Works • So far we have figured out several problems of existing methods of signature detection through implementation • Still we did not implemented our proposed method but from the implementation & analysis of existing method we can say that it will give us better performance • So our future work is to implement the proposed method so that it can ensure-  more robust with rotation invariance  robustness in noise  robust in variant ink with minimum complexity 17
  • 19. References • A. C. Verma,D. Saha, H. Saikia; ’FORGERY DETECTION IN OFFLINE HANDWRITTENSIGNATURE USING GLOBAL AND GEOMETRIC FEATURES’, IJCER(Vol.2, Issue 2, April 2013) • Prashanth C R, K B Raja, Venugopal K R, L M Patnaik,’ Intra-modal Score level Fusion for Off- line Signature Verification’, IJITEE, ISSN: 2278-3075, Vol.1, Issue 2, July 2012 • Prashanth C. R. and K. B. Raja,’ Off-line Signature Verification Based on Angular Features’ IJMO, Vol. 2, No. 4, August 2012 • M.Radmehr, S.M.Anisheh, I.Yousefian,’ Offline Signature Recognition using Radon Transform’, WASET, Vol:6 2012-02-28 • Bay H,Tinne t.,Gool l.,’ SURF: Speeded Up Robust Features’; • Samaneh G., Mohsen E., i Moghaddam, “Off-line Persian Signature Identification and Verification Based on Image Registration and Fusion,” Journal of Multimedia, Vol. 4, No. 3, pp.137-144, June 2009. • Jesus F Vargas, Miguel A Ferrer, Carlos M Travieso, and Jesus B Alonso, “Off-line Signature Verification Based on Psuedo-Cepstral Coefficients,” International Conference on Document Analysis and Recognition, pp. 126-130, 2009 • V A Bharadi and H B Kekre, “Off-line Signature Recognition Systems,” International Journal of Computer Applications, Vol. 1, No. 27, pp. 61-70, 2010 19