SlideShare a Scribd company logo
1 of 21
Handwriting Detection is a technique or ability of a Computer to receive
and interpret intelligible handwritten input
from source such as paper documents, touch screen, photo graphs etc.
Way to Recognize
Handwriting
Intelligent Word
Recognition
Optical Character
Recognition
Database
with samples of known
authorship
Identification
System
Writer 1
Writer n
On-line handwriting recognition involves the automatic conversion of text
as it is written on a special digitizer or PDA, where a sensor picks up the
pen-tip movements as well as pen-up/pen-down switching. That kind of
data is known as digital ink and can be regarded as a dynamic
representation of handwriting. The obtained signal is converted into letter
codes which are usable within computer and text-processing applications.
The elements of an on-line handwriting recognition interface typically
include:
1) a pen or stylus for the user to write with.
2) a touch sensitive surface, which may be integrated with, or adjacent to,
an output display.
3) a software application which interprets the movements of the stylus
across the writing surface, translating the resulting strokes into digital text.
Off-line handwriting recognition involves the automatic
conversion of text in an image into letter codes which are
usable within computer and text-processing applications.
The data obtained by this form is regarded as a static
representation of handwriting. Off-line handwriting
recognition is comparatively difficult, as different people
have different handwriting styles. And, as of today, OCR
engines are primarily focused on machine printed text and
ICR for hand "printed" (written in capital letters) text.
There is no OCR/ICR engine that supports handwriting
recognition as of today.
• Recognition strategies heavily depends on the nature
of the data to be recognized.
• In the cursive case, the problem is made complex by
the fact that the writing is fundamentally ambiguous
as the letters in the word are generally linked
together, poorly written and may even be missing.
• On the contrary, hand printed word recognition is
more related to printed word recognition, the
individual letters composing the word being usually
much easier to isolate and to identify.
Continue..
• Character Recognition techniques can be classified according
to two criteria:
– the way preprocessing is performed on the data
– the type of the decision algorithm
• Preprocessing techniques include :
– the use of global transforms (correlation, Fourier descriptors, etc.)
– local comparison (local density, intersections with straight lines,
variable masks, etc.)
– geometrical or topological characteristics (strokes, loops, openings,
diacritical marks, skeleton, etc.)
• Decision methods include:
– various statistical methods,
– neural networks, structural matching (on trees, chains, etc.)
– stochastic processing (Markov chains, etc.).
• Two main types of strategies have been applied to this
problem:
– the holistic approach - recognition is globally performed on
the whole representation of words and there is no attempt
to identify characters individually.
• The main advantage of holistic methods is that they avoid word
segmentation
– the analytical approach - deal with several levels of
representation corresponding to increasing levels of
abstraction (usually the feature level, the grapheme or
pseudo-letter level and the word level). Words are not
considered as a whole, but as sequences of smaller size
units which must be easily related to characters in order to
make recognition independent from a specific vocabulary
Feature extraction works in a similar fashion to neural network recognizers
however, programmers must manually determine the properties they feel
are important.
Some example properties might be:
Aspect Ratio
Percent of pixels above horizontal half point
Percent of pixels to right of vertical half point
Number of strokes
Average distance from image center
Is reflected y axis
Is reflected x axis
Different stages of handwriting segmentation.
(A) (B) (C)
Images of authentic handwriting sample.
IBM TransNote works based
on two Features…
1) Handwriting Speed
2) Handwriting Wrinkliness
Statistical Experiments
Wrinkliness calculation: a) handwriting
sample, b) edge-detected sample, c) portion of edgedetected
sample at 300 dpi, d) portion at 600 dpi.
A sample of the calculated measurements.
Filename 300dpi 600dpi Wrinkliness Speed
0101T1 14894 30583 1.03799867 0.11396973
0101T2 8786 18638 1.084968652 0.107457204
0101T3 9258 19764 1.094102493 0.118184103
0202T1 6453 13765 1.092962679 0.093275242
0202T2 6212 13319 1.100356033 0.094080635
0202T3 5824 12722 1.127243231 0.087968122
• Handwriting Recognition aims to design systems
which are able to recognize handwriting of natural
language
• Methods and recognition rates depend on the level
of constraints on handwriting.
• The constraints are mainly characterized by the:
– types of handwriting
– number of scriptors
– size of the vocabulary
– spatial layout.
Continue..
Segmentation problem
(can't read word until
it is segmented; can't
segment word until it is read)
– Different handwriting styles
– Use of dictionary to correct
for errors in reading
nr?
m?
Srnitb --> Smith
Outlines of word are traced and smoothed:
Handwriting slope is corrected for automatically:
• Goal: robustly cut letters into segments
• Match multiple segments to detect letters
• Easier than matching whole letter
ADVANTAGES:
The most important advantage of speech
over handwriting is the speed of data entry. This is because it is much easier to
dictate the
machine than to write
DISADVANTAGES:
Has also drawbacks, such as it is noisy to hear
someone sitting next to us and talking to his machine. Moreover, anyone who
wants to input
confidential data to his/her computer is not willing to do it in public places. Most
importantly, it
is not possible to speak to a machine in a natural way due to constraints such as
out of vocabulary
wards, background noise, cross-talk, accented speech and so on.
So after all these stuff…
We have a brief Idea about Automatic Handwriting
Detection..
1) online and offline detection is available
2)Online procedure is easier then Offline procedure(difficult
one)
3)Today’s business world need some computerized
authentication for security purpose
the (AHD) fulfill their need.
4)Handwriting recognition is important for genealogy...
...but it is hard
5)Current methods don't work very well...
...and they don't operate much like the human brain
Handwritten Character Recognition

More Related Content

What's hot

Final Report on Optical Character Recognition
Final Report on Optical Character Recognition Final Report on Optical Character Recognition
Final Report on Optical Character Recognition Vidyut Singhania
 
Biometrics iris recognition
Biometrics iris recognitionBiometrics iris recognition
Biometrics iris recognitionsunjaysahu
 
OCR (Optical Character Recognition)
OCR (Optical Character Recognition) OCR (Optical Character Recognition)
OCR (Optical Character Recognition) IstiaqueBinIslam
 
Speech recognition
Speech recognitionSpeech recognition
Speech recognitionCharu Joshi
 
Sign Language Recognition based on Hands symbols Classification
Sign Language Recognition based on Hands symbols ClassificationSign Language Recognition based on Hands symbols Classification
Sign Language Recognition based on Hands symbols ClassificationTriloki Gupta
 
Optical Character Recognition( OCR )
Optical Character Recognition( OCR )Optical Character Recognition( OCR )
Optical Character Recognition( OCR )Karan Panjwani
 
Optical Character Recognition (OCR) based Retrieval
Optical Character Recognition (OCR) based RetrievalOptical Character Recognition (OCR) based Retrieval
Optical Character Recognition (OCR) based RetrievalBiniam Asnake
 
Object detection with deep learning
Object detection with deep learningObject detection with deep learning
Object detection with deep learningSushant Shrivastava
 
offline character recognition for handwritten gujarati text
offline character recognition for handwritten gujarati textoffline character recognition for handwritten gujarati text
offline character recognition for handwritten gujarati textBhumika Patel
 
fingerprint technology
fingerprint technologyfingerprint technology
fingerprint technologyVishwasJangra
 
Object detection presentation
Object detection presentationObject detection presentation
Object detection presentationAshwinBicholiya
 
Face detection presentation slide
Face detection  presentation slideFace detection  presentation slide
Face detection presentation slideSanjoy Dutta
 
human computer interface
human computer interfacehuman computer interface
human computer interfaceSantosh Kumar
 

What's hot (20)

Final Report on Optical Character Recognition
Final Report on Optical Character Recognition Final Report on Optical Character Recognition
Final Report on Optical Character Recognition
 
Biometrics iris recognition
Biometrics iris recognitionBiometrics iris recognition
Biometrics iris recognition
 
OCR (Optical Character Recognition)
OCR (Optical Character Recognition) OCR (Optical Character Recognition)
OCR (Optical Character Recognition)
 
Speech recognition
Speech recognitionSpeech recognition
Speech recognition
 
Face recognition
Face recognitionFace recognition
Face recognition
 
Sign Language Recognition based on Hands symbols Classification
Sign Language Recognition based on Hands symbols ClassificationSign Language Recognition based on Hands symbols Classification
Sign Language Recognition based on Hands symbols Classification
 
Optical Character Recognition( OCR )
Optical Character Recognition( OCR )Optical Character Recognition( OCR )
Optical Character Recognition( OCR )
 
PPT steganography
PPT steganographyPPT steganography
PPT steganography
 
Optical Character Recognition (OCR) based Retrieval
Optical Character Recognition (OCR) based RetrievalOptical Character Recognition (OCR) based Retrieval
Optical Character Recognition (OCR) based Retrieval
 
Biometric Authentication PPT
Biometric Authentication PPTBiometric Authentication PPT
Biometric Authentication PPT
 
Image recognition
Image recognitionImage recognition
Image recognition
 
Fingerprint recognition
Fingerprint recognitionFingerprint recognition
Fingerprint recognition
 
Object detection with deep learning
Object detection with deep learningObject detection with deep learning
Object detection with deep learning
 
offline character recognition for handwritten gujarati text
offline character recognition for handwritten gujarati textoffline character recognition for handwritten gujarati text
offline character recognition for handwritten gujarati text
 
Neuromorphic computing
Neuromorphic computingNeuromorphic computing
Neuromorphic computing
 
fingerprint technology
fingerprint technologyfingerprint technology
fingerprint technology
 
Object detection presentation
Object detection presentationObject detection presentation
Object detection presentation
 
Machine Learning
Machine LearningMachine Learning
Machine Learning
 
Face detection presentation slide
Face detection  presentation slideFace detection  presentation slide
Face detection presentation slide
 
human computer interface
human computer interfacehuman computer interface
human computer interface
 

Viewers also liked

Automatic handwriting recognition
Automatic handwriting recognitionAutomatic handwriting recognition
Automatic handwriting recognitionBIJIT GHOSH
 
Character Recognition using Artificial Neural Networks
Character Recognition using Artificial Neural NetworksCharacter Recognition using Artificial Neural Networks
Character Recognition using Artificial Neural NetworksJaison Sabu
 
Devanagari Character Recognition
Devanagari Character RecognitionDevanagari Character Recognition
Devanagari Character RecognitionPulkit Goyal
 
Artificial Neural Network / Hand written character Recognition
Artificial Neural Network / Hand written character RecognitionArtificial Neural Network / Hand written character Recognition
Artificial Neural Network / Hand written character RecognitionDr. Uday Saikia
 
Neural Networks in the Wild: Handwriting Recognition
Neural Networks in the Wild: Handwriting RecognitionNeural Networks in the Wild: Handwriting Recognition
Neural Networks in the Wild: Handwriting RecognitionJohn Liu
 
Artificial Neural Network For Recognition Of Handwritten Devanagari Character
Artificial Neural Network For Recognition Of Handwritten Devanagari CharacterArtificial Neural Network For Recognition Of Handwritten Devanagari Character
Artificial Neural Network For Recognition Of Handwritten Devanagari CharacterIOSR Journals
 
character recognition: Scope and challenges
 character recognition: Scope and challenges character recognition: Scope and challenges
character recognition: Scope and challengesVikas Dongre
 

Viewers also liked (7)

Automatic handwriting recognition
Automatic handwriting recognitionAutomatic handwriting recognition
Automatic handwriting recognition
 
Character Recognition using Artificial Neural Networks
Character Recognition using Artificial Neural NetworksCharacter Recognition using Artificial Neural Networks
Character Recognition using Artificial Neural Networks
 
Devanagari Character Recognition
Devanagari Character RecognitionDevanagari Character Recognition
Devanagari Character Recognition
 
Artificial Neural Network / Hand written character Recognition
Artificial Neural Network / Hand written character RecognitionArtificial Neural Network / Hand written character Recognition
Artificial Neural Network / Hand written character Recognition
 
Neural Networks in the Wild: Handwriting Recognition
Neural Networks in the Wild: Handwriting RecognitionNeural Networks in the Wild: Handwriting Recognition
Neural Networks in the Wild: Handwriting Recognition
 
Artificial Neural Network For Recognition Of Handwritten Devanagari Character
Artificial Neural Network For Recognition Of Handwritten Devanagari CharacterArtificial Neural Network For Recognition Of Handwritten Devanagari Character
Artificial Neural Network For Recognition Of Handwritten Devanagari Character
 
character recognition: Scope and challenges
 character recognition: Scope and challenges character recognition: Scope and challenges
character recognition: Scope and challenges
 

Similar to Handwritten Character Recognition

Online Hand Written Character Recognition
Online Hand Written Character RecognitionOnline Hand Written Character Recognition
Online Hand Written Character RecognitionIOSR Journals
 
Optical Character Recognition
Optical Character RecognitionOptical Character Recognition
Optical Character RecognitionRahul Mallik
 
A Deep Learning Approach to Recognize Cursive Handwriting
A Deep Learning Approach to Recognize Cursive HandwritingA Deep Learning Approach to Recognize Cursive Handwriting
A Deep Learning Approach to Recognize Cursive HandwritingIRJET Journal
 
Offline Signature Recognition and It’s Forgery Detection using Machine Learni...
Offline Signature Recognition and It’s Forgery Detection using Machine Learni...Offline Signature Recognition and It’s Forgery Detection using Machine Learni...
Offline Signature Recognition and It’s Forgery Detection using Machine Learni...AI Publications
 
A Review On Recognition Of Online Handwriting In Different Scripts
A Review On Recognition Of Online Handwriting In Different ScriptsA Review On Recognition Of Online Handwriting In Different Scripts
A Review On Recognition Of Online Handwriting In Different ScriptsKarla Adamson
 
A STUDY ON OPTICAL CHARACTER RECOGNITION TECHNIQUES
A STUDY ON OPTICAL CHARACTER RECOGNITION TECHNIQUESA STUDY ON OPTICAL CHARACTER RECOGNITION TECHNIQUES
A STUDY ON OPTICAL CHARACTER RECOGNITION TECHNIQUESijcsitcejournal
 
Segmentation and recognition of handwritten gurmukhi script
Segmentation  and recognition of handwritten gurmukhi scriptSegmentation  and recognition of handwritten gurmukhi script
Segmentation and recognition of handwritten gurmukhi scriptRAJENDRA VERMA
 
spt vision objects
spt vision objectsspt vision objects
spt vision objectsPolo Dimeo
 
Design and Implementation Recognition System for Handwritten Hindi/Marathi Do...
Design and Implementation Recognition System for Handwritten Hindi/Marathi Do...Design and Implementation Recognition System for Handwritten Hindi/Marathi Do...
Design and Implementation Recognition System for Handwritten Hindi/Marathi Do...rahulmonikasharma
 
Online Handwriting Recognition using HMM
Online Handwriting Recognition using HMMOnline Handwriting Recognition using HMM
Online Handwriting Recognition using HMMrahulmonikasharma
 
Optical character recognition IEEE Paper Study
Optical character recognition IEEE Paper StudyOptical character recognition IEEE Paper Study
Optical character recognition IEEE Paper StudyEr. Ashish Pandey
 
Aps11 design interface
Aps11 design interfaceAps11 design interface
Aps11 design interfaceArif Rahman
 
Ary Mouse for Image Processing
Ary Mouse for Image ProcessingAry Mouse for Image Processing
Ary Mouse for Image ProcessingIJERA Editor
 
Ary Mouse for Image Processing
Ary Mouse for Image ProcessingAry Mouse for Image Processing
Ary Mouse for Image ProcessingIJERA Editor
 

Similar to Handwritten Character Recognition (20)

Online Hand Written Character Recognition
Online Hand Written Character RecognitionOnline Hand Written Character Recognition
Online Hand Written Character Recognition
 
C010221930
C010221930C010221930
C010221930
 
50120130406005
5012013040600550120130406005
50120130406005
 
O45018291
O45018291O45018291
O45018291
 
Optical Character Recognition
Optical Character RecognitionOptical Character Recognition
Optical Character Recognition
 
A Deep Learning Approach to Recognize Cursive Handwriting
A Deep Learning Approach to Recognize Cursive HandwritingA Deep Learning Approach to Recognize Cursive Handwriting
A Deep Learning Approach to Recognize Cursive Handwriting
 
Offline Signature Recognition and It’s Forgery Detection using Machine Learni...
Offline Signature Recognition and It’s Forgery Detection using Machine Learni...Offline Signature Recognition and It’s Forgery Detection using Machine Learni...
Offline Signature Recognition and It’s Forgery Detection using Machine Learni...
 
A Review On Recognition Of Online Handwriting In Different Scripts
A Review On Recognition Of Online Handwriting In Different ScriptsA Review On Recognition Of Online Handwriting In Different Scripts
A Review On Recognition Of Online Handwriting In Different Scripts
 
A STUDY ON OPTICAL CHARACTER RECOGNITION TECHNIQUES
A STUDY ON OPTICAL CHARACTER RECOGNITION TECHNIQUESA STUDY ON OPTICAL CHARACTER RECOGNITION TECHNIQUES
A STUDY ON OPTICAL CHARACTER RECOGNITION TECHNIQUES
 
Segmentation and recognition of handwritten gurmukhi script
Segmentation  and recognition of handwritten gurmukhi scriptSegmentation  and recognition of handwritten gurmukhi script
Segmentation and recognition of handwritten gurmukhi script
 
spt vision objects
spt vision objectsspt vision objects
spt vision objects
 
05a
05a05a
05a
 
Design and Implementation Recognition System for Handwritten Hindi/Marathi Do...
Design and Implementation Recognition System for Handwritten Hindi/Marathi Do...Design and Implementation Recognition System for Handwritten Hindi/Marathi Do...
Design and Implementation Recognition System for Handwritten Hindi/Marathi Do...
 
Online Handwriting Recognition using HMM
Online Handwriting Recognition using HMMOnline Handwriting Recognition using HMM
Online Handwriting Recognition using HMM
 
Optical character recognition IEEE Paper Study
Optical character recognition IEEE Paper StudyOptical character recognition IEEE Paper Study
Optical character recognition IEEE Paper Study
 
Aps11 design interface
Aps11 design interfaceAps11 design interface
Aps11 design interface
 
Input output device
Input output deviceInput output device
Input output device
 
Ary Mouse for Image Processing
Ary Mouse for Image ProcessingAry Mouse for Image Processing
Ary Mouse for Image Processing
 
Ary Mouse for Image Processing
Ary Mouse for Image ProcessingAry Mouse for Image Processing
Ary Mouse for Image Processing
 
En31919926
En31919926En31919926
En31919926
 

Recently uploaded

Introduction to Multiple Access Protocol.pptx
Introduction to Multiple Access Protocol.pptxIntroduction to Multiple Access Protocol.pptx
Introduction to Multiple Access Protocol.pptxupamatechverse
 
Software Development Life Cycle By Team Orange (Dept. of Pharmacy)
Software Development Life Cycle By  Team Orange (Dept. of Pharmacy)Software Development Life Cycle By  Team Orange (Dept. of Pharmacy)
Software Development Life Cycle By Team Orange (Dept. of Pharmacy)Suman Mia
 
result management system report for college project
result management system report for college projectresult management system report for college project
result management system report for college projectTonystark477637
 
VIP Call Girls Service Kondapur Hyderabad Call +91-8250192130
VIP Call Girls Service Kondapur Hyderabad Call +91-8250192130VIP Call Girls Service Kondapur Hyderabad Call +91-8250192130
VIP Call Girls Service Kondapur Hyderabad Call +91-8250192130Suhani Kapoor
 
High Profile Call Girls Nagpur Isha Call 7001035870 Meet With Nagpur Escorts
High Profile Call Girls Nagpur Isha Call 7001035870 Meet With Nagpur EscortsHigh Profile Call Girls Nagpur Isha Call 7001035870 Meet With Nagpur Escorts
High Profile Call Girls Nagpur Isha Call 7001035870 Meet With Nagpur Escortsranjana rawat
 
Structural Analysis and Design of Foundations: A Comprehensive Handbook for S...
Structural Analysis and Design of Foundations: A Comprehensive Handbook for S...Structural Analysis and Design of Foundations: A Comprehensive Handbook for S...
Structural Analysis and Design of Foundations: A Comprehensive Handbook for S...Dr.Costas Sachpazis
 
High Profile Call Girls Nagpur Meera Call 7001035870 Meet With Nagpur Escorts
High Profile Call Girls Nagpur Meera Call 7001035870 Meet With Nagpur EscortsHigh Profile Call Girls Nagpur Meera Call 7001035870 Meet With Nagpur Escorts
High Profile Call Girls Nagpur Meera Call 7001035870 Meet With Nagpur EscortsCall Girls in Nagpur High Profile
 
OSVC_Meta-Data based Simulation Automation to overcome Verification Challenge...
OSVC_Meta-Data based Simulation Automation to overcome Verification Challenge...OSVC_Meta-Data based Simulation Automation to overcome Verification Challenge...
OSVC_Meta-Data based Simulation Automation to overcome Verification Challenge...Soham Mondal
 
HARDNESS, FRACTURE TOUGHNESS AND STRENGTH OF CERAMICS
HARDNESS, FRACTURE TOUGHNESS AND STRENGTH OF CERAMICSHARDNESS, FRACTURE TOUGHNESS AND STRENGTH OF CERAMICS
HARDNESS, FRACTURE TOUGHNESS AND STRENGTH OF CERAMICSRajkumarAkumalla
 
Coefficient of Thermal Expansion and their Importance.pptx
Coefficient of Thermal Expansion and their Importance.pptxCoefficient of Thermal Expansion and their Importance.pptx
Coefficient of Thermal Expansion and their Importance.pptxAsutosh Ranjan
 
Sheet Pile Wall Design and Construction: A Practical Guide for Civil Engineer...
Sheet Pile Wall Design and Construction: A Practical Guide for Civil Engineer...Sheet Pile Wall Design and Construction: A Practical Guide for Civil Engineer...
Sheet Pile Wall Design and Construction: A Practical Guide for Civil Engineer...Dr.Costas Sachpazis
 
(ANVI) Koregaon Park Call Girls Just Call 7001035870 [ Cash on Delivery ] Pun...
(ANVI) Koregaon Park Call Girls Just Call 7001035870 [ Cash on Delivery ] Pun...(ANVI) Koregaon Park Call Girls Just Call 7001035870 [ Cash on Delivery ] Pun...
(ANVI) Koregaon Park Call Girls Just Call 7001035870 [ Cash on Delivery ] Pun...ranjana rawat
 
(SHREYA) Chakan Call Girls Just Call 7001035870 [ Cash on Delivery ] Pune Esc...
(SHREYA) Chakan Call Girls Just Call 7001035870 [ Cash on Delivery ] Pune Esc...(SHREYA) Chakan Call Girls Just Call 7001035870 [ Cash on Delivery ] Pune Esc...
(SHREYA) Chakan Call Girls Just Call 7001035870 [ Cash on Delivery ] Pune Esc...ranjana rawat
 
CCS335 _ Neural Networks and Deep Learning Laboratory_Lab Complete Record
CCS335 _ Neural Networks and Deep Learning Laboratory_Lab Complete RecordCCS335 _ Neural Networks and Deep Learning Laboratory_Lab Complete Record
CCS335 _ Neural Networks and Deep Learning Laboratory_Lab Complete RecordAsst.prof M.Gokilavani
 
KubeKraft presentation @CloudNativeHooghly
KubeKraft presentation @CloudNativeHooghlyKubeKraft presentation @CloudNativeHooghly
KubeKraft presentation @CloudNativeHooghlysanyuktamishra911
 
APPLICATIONS-AC/DC DRIVES-OPERATING CHARACTERISTICS
APPLICATIONS-AC/DC DRIVES-OPERATING CHARACTERISTICSAPPLICATIONS-AC/DC DRIVES-OPERATING CHARACTERISTICS
APPLICATIONS-AC/DC DRIVES-OPERATING CHARACTERISTICSKurinjimalarL3
 
Call for Papers - African Journal of Biological Sciences, E-ISSN: 2663-2187, ...
Call for Papers - African Journal of Biological Sciences, E-ISSN: 2663-2187, ...Call for Papers - African Journal of Biological Sciences, E-ISSN: 2663-2187, ...
Call for Papers - African Journal of Biological Sciences, E-ISSN: 2663-2187, ...Christo Ananth
 
Introduction and different types of Ethernet.pptx
Introduction and different types of Ethernet.pptxIntroduction and different types of Ethernet.pptx
Introduction and different types of Ethernet.pptxupamatechverse
 

Recently uploaded (20)

★ CALL US 9953330565 ( HOT Young Call Girls In Badarpur delhi NCR
★ CALL US 9953330565 ( HOT Young Call Girls In Badarpur delhi NCR★ CALL US 9953330565 ( HOT Young Call Girls In Badarpur delhi NCR
★ CALL US 9953330565 ( HOT Young Call Girls In Badarpur delhi NCR
 
Introduction to Multiple Access Protocol.pptx
Introduction to Multiple Access Protocol.pptxIntroduction to Multiple Access Protocol.pptx
Introduction to Multiple Access Protocol.pptx
 
Software Development Life Cycle By Team Orange (Dept. of Pharmacy)
Software Development Life Cycle By  Team Orange (Dept. of Pharmacy)Software Development Life Cycle By  Team Orange (Dept. of Pharmacy)
Software Development Life Cycle By Team Orange (Dept. of Pharmacy)
 
result management system report for college project
result management system report for college projectresult management system report for college project
result management system report for college project
 
VIP Call Girls Service Kondapur Hyderabad Call +91-8250192130
VIP Call Girls Service Kondapur Hyderabad Call +91-8250192130VIP Call Girls Service Kondapur Hyderabad Call +91-8250192130
VIP Call Girls Service Kondapur Hyderabad Call +91-8250192130
 
High Profile Call Girls Nagpur Isha Call 7001035870 Meet With Nagpur Escorts
High Profile Call Girls Nagpur Isha Call 7001035870 Meet With Nagpur EscortsHigh Profile Call Girls Nagpur Isha Call 7001035870 Meet With Nagpur Escorts
High Profile Call Girls Nagpur Isha Call 7001035870 Meet With Nagpur Escorts
 
Structural Analysis and Design of Foundations: A Comprehensive Handbook for S...
Structural Analysis and Design of Foundations: A Comprehensive Handbook for S...Structural Analysis and Design of Foundations: A Comprehensive Handbook for S...
Structural Analysis and Design of Foundations: A Comprehensive Handbook for S...
 
High Profile Call Girls Nagpur Meera Call 7001035870 Meet With Nagpur Escorts
High Profile Call Girls Nagpur Meera Call 7001035870 Meet With Nagpur EscortsHigh Profile Call Girls Nagpur Meera Call 7001035870 Meet With Nagpur Escorts
High Profile Call Girls Nagpur Meera Call 7001035870 Meet With Nagpur Escorts
 
OSVC_Meta-Data based Simulation Automation to overcome Verification Challenge...
OSVC_Meta-Data based Simulation Automation to overcome Verification Challenge...OSVC_Meta-Data based Simulation Automation to overcome Verification Challenge...
OSVC_Meta-Data based Simulation Automation to overcome Verification Challenge...
 
HARDNESS, FRACTURE TOUGHNESS AND STRENGTH OF CERAMICS
HARDNESS, FRACTURE TOUGHNESS AND STRENGTH OF CERAMICSHARDNESS, FRACTURE TOUGHNESS AND STRENGTH OF CERAMICS
HARDNESS, FRACTURE TOUGHNESS AND STRENGTH OF CERAMICS
 
Coefficient of Thermal Expansion and their Importance.pptx
Coefficient of Thermal Expansion and their Importance.pptxCoefficient of Thermal Expansion and their Importance.pptx
Coefficient of Thermal Expansion and their Importance.pptx
 
Sheet Pile Wall Design and Construction: A Practical Guide for Civil Engineer...
Sheet Pile Wall Design and Construction: A Practical Guide for Civil Engineer...Sheet Pile Wall Design and Construction: A Practical Guide for Civil Engineer...
Sheet Pile Wall Design and Construction: A Practical Guide for Civil Engineer...
 
(ANVI) Koregaon Park Call Girls Just Call 7001035870 [ Cash on Delivery ] Pun...
(ANVI) Koregaon Park Call Girls Just Call 7001035870 [ Cash on Delivery ] Pun...(ANVI) Koregaon Park Call Girls Just Call 7001035870 [ Cash on Delivery ] Pun...
(ANVI) Koregaon Park Call Girls Just Call 7001035870 [ Cash on Delivery ] Pun...
 
(SHREYA) Chakan Call Girls Just Call 7001035870 [ Cash on Delivery ] Pune Esc...
(SHREYA) Chakan Call Girls Just Call 7001035870 [ Cash on Delivery ] Pune Esc...(SHREYA) Chakan Call Girls Just Call 7001035870 [ Cash on Delivery ] Pune Esc...
(SHREYA) Chakan Call Girls Just Call 7001035870 [ Cash on Delivery ] Pune Esc...
 
CCS335 _ Neural Networks and Deep Learning Laboratory_Lab Complete Record
CCS335 _ Neural Networks and Deep Learning Laboratory_Lab Complete RecordCCS335 _ Neural Networks and Deep Learning Laboratory_Lab Complete Record
CCS335 _ Neural Networks and Deep Learning Laboratory_Lab Complete Record
 
KubeKraft presentation @CloudNativeHooghly
KubeKraft presentation @CloudNativeHooghlyKubeKraft presentation @CloudNativeHooghly
KubeKraft presentation @CloudNativeHooghly
 
APPLICATIONS-AC/DC DRIVES-OPERATING CHARACTERISTICS
APPLICATIONS-AC/DC DRIVES-OPERATING CHARACTERISTICSAPPLICATIONS-AC/DC DRIVES-OPERATING CHARACTERISTICS
APPLICATIONS-AC/DC DRIVES-OPERATING CHARACTERISTICS
 
DJARUM4D - SLOT GACOR ONLINE | SLOT DEMO ONLINE
DJARUM4D - SLOT GACOR ONLINE | SLOT DEMO ONLINEDJARUM4D - SLOT GACOR ONLINE | SLOT DEMO ONLINE
DJARUM4D - SLOT GACOR ONLINE | SLOT DEMO ONLINE
 
Call for Papers - African Journal of Biological Sciences, E-ISSN: 2663-2187, ...
Call for Papers - African Journal of Biological Sciences, E-ISSN: 2663-2187, ...Call for Papers - African Journal of Biological Sciences, E-ISSN: 2663-2187, ...
Call for Papers - African Journal of Biological Sciences, E-ISSN: 2663-2187, ...
 
Introduction and different types of Ethernet.pptx
Introduction and different types of Ethernet.pptxIntroduction and different types of Ethernet.pptx
Introduction and different types of Ethernet.pptx
 

Handwritten Character Recognition

  • 1.
  • 2. Handwriting Detection is a technique or ability of a Computer to receive and interpret intelligible handwritten input from source such as paper documents, touch screen, photo graphs etc. Way to Recognize Handwriting Intelligent Word Recognition Optical Character Recognition
  • 3.
  • 4. Database with samples of known authorship Identification System Writer 1 Writer n
  • 5.
  • 6. On-line handwriting recognition involves the automatic conversion of text as it is written on a special digitizer or PDA, where a sensor picks up the pen-tip movements as well as pen-up/pen-down switching. That kind of data is known as digital ink and can be regarded as a dynamic representation of handwriting. The obtained signal is converted into letter codes which are usable within computer and text-processing applications. The elements of an on-line handwriting recognition interface typically include: 1) a pen or stylus for the user to write with. 2) a touch sensitive surface, which may be integrated with, or adjacent to, an output display. 3) a software application which interprets the movements of the stylus across the writing surface, translating the resulting strokes into digital text.
  • 7. Off-line handwriting recognition involves the automatic conversion of text in an image into letter codes which are usable within computer and text-processing applications. The data obtained by this form is regarded as a static representation of handwriting. Off-line handwriting recognition is comparatively difficult, as different people have different handwriting styles. And, as of today, OCR engines are primarily focused on machine printed text and ICR for hand "printed" (written in capital letters) text. There is no OCR/ICR engine that supports handwriting recognition as of today.
  • 8. • Recognition strategies heavily depends on the nature of the data to be recognized. • In the cursive case, the problem is made complex by the fact that the writing is fundamentally ambiguous as the letters in the word are generally linked together, poorly written and may even be missing. • On the contrary, hand printed word recognition is more related to printed word recognition, the individual letters composing the word being usually much easier to isolate and to identify. Continue..
  • 9. • Character Recognition techniques can be classified according to two criteria: – the way preprocessing is performed on the data – the type of the decision algorithm • Preprocessing techniques include : – the use of global transforms (correlation, Fourier descriptors, etc.) – local comparison (local density, intersections with straight lines, variable masks, etc.) – geometrical or topological characteristics (strokes, loops, openings, diacritical marks, skeleton, etc.) • Decision methods include: – various statistical methods, – neural networks, structural matching (on trees, chains, etc.) – stochastic processing (Markov chains, etc.).
  • 10. • Two main types of strategies have been applied to this problem: – the holistic approach - recognition is globally performed on the whole representation of words and there is no attempt to identify characters individually. • The main advantage of holistic methods is that they avoid word segmentation – the analytical approach - deal with several levels of representation corresponding to increasing levels of abstraction (usually the feature level, the grapheme or pseudo-letter level and the word level). Words are not considered as a whole, but as sequences of smaller size units which must be easily related to characters in order to make recognition independent from a specific vocabulary
  • 11. Feature extraction works in a similar fashion to neural network recognizers however, programmers must manually determine the properties they feel are important. Some example properties might be: Aspect Ratio Percent of pixels above horizontal half point Percent of pixels to right of vertical half point Number of strokes Average distance from image center Is reflected y axis Is reflected x axis
  • 12.
  • 13. Different stages of handwriting segmentation. (A) (B) (C) Images of authentic handwriting sample. IBM TransNote works based on two Features… 1) Handwriting Speed 2) Handwriting Wrinkliness
  • 14. Statistical Experiments Wrinkliness calculation: a) handwriting sample, b) edge-detected sample, c) portion of edgedetected sample at 300 dpi, d) portion at 600 dpi. A sample of the calculated measurements. Filename 300dpi 600dpi Wrinkliness Speed 0101T1 14894 30583 1.03799867 0.11396973 0101T2 8786 18638 1.084968652 0.107457204 0101T3 9258 19764 1.094102493 0.118184103 0202T1 6453 13765 1.092962679 0.093275242 0202T2 6212 13319 1.100356033 0.094080635 0202T3 5824 12722 1.127243231 0.087968122
  • 15. • Handwriting Recognition aims to design systems which are able to recognize handwriting of natural language • Methods and recognition rates depend on the level of constraints on handwriting. • The constraints are mainly characterized by the: – types of handwriting – number of scriptors – size of the vocabulary – spatial layout. Continue..
  • 16. Segmentation problem (can't read word until it is segmented; can't segment word until it is read) – Different handwriting styles – Use of dictionary to correct for errors in reading nr? m? Srnitb --> Smith
  • 17. Outlines of word are traced and smoothed: Handwriting slope is corrected for automatically:
  • 18. • Goal: robustly cut letters into segments • Match multiple segments to detect letters • Easier than matching whole letter
  • 19. ADVANTAGES: The most important advantage of speech over handwriting is the speed of data entry. This is because it is much easier to dictate the machine than to write DISADVANTAGES: Has also drawbacks, such as it is noisy to hear someone sitting next to us and talking to his machine. Moreover, anyone who wants to input confidential data to his/her computer is not willing to do it in public places. Most importantly, it is not possible to speak to a machine in a natural way due to constraints such as out of vocabulary wards, background noise, cross-talk, accented speech and so on.
  • 20. So after all these stuff… We have a brief Idea about Automatic Handwriting Detection.. 1) online and offline detection is available 2)Online procedure is easier then Offline procedure(difficult one) 3)Today’s business world need some computerized authentication for security purpose the (AHD) fulfill their need. 4)Handwriting recognition is important for genealogy... ...but it is hard 5)Current methods don't work very well... ...and they don't operate much like the human brain

Editor's Notes

  1. On-line recognizers:: CalliGrapher Apple-Newton Print Recognizer ThinkWrite Graffiti Off-line recognizers:: W. Senior CEDAR Penman