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Journal of
Imaging
Article
HandwrittenDevanagariCharacterRecognition
UsingLayer-WiseTrainingofDeepConvolutional
NeuralNetworksandAdaptiveGradientMethods
MaheshJangid1,*andSumitSrivastava2
1 DepartmentofComputerScienceandEngineering,SchoolofComputing&InformationTechnology,
ManipalUniversity Jaipur,Rajasthan303007, India
2 Departmentof InformationTechnology,SchoolofComputing&InformationTechnology,
ManipalUniversity Jaipur,Rajasthan303007, India; sumit.310879@gmail.com
* Correspondence:mahesh_seelak@yahoo.co.in;Tel.:+91-0141-3999279
Received: 6December2017;Accepted: 12February2018;Published: 13February2018
Abstract:Handwrittencharacter recognition iscurrentlygetting theattentionof researchersbecause
ofpossibleapplications inassisting technologyforblindandvisually impairedusers,human–robot
interaction,automaticdataentry forbusinessdocuments, etc. In thiswork,weproposea technique
torecognizehandwrittenDevanagari charactersusingdeepconvolutionalneuralnetworks (DCNN)
whichareoneof therecent techniquesadoptedfromthedeeplearningcommunity.Weexperimented
theISIDCHARdatabaseprovidedby(InformationSharingIndex) ISI,KolkataandV2DMDCHAR
databasewithsixdifferentarchitecturesofDCNNtoevaluate theperformanceandalso investigate
theuse of six recentlydeveloped adaptive gradientmethods. A layer-wise technique ofDCNN
hasbeen employed that helped to achieve thehighest recognition accuracy andalsoget a faster
convergencerate. Theresultsof layer-wise-trainedDCNNarefavorable incomparisonwith those
achievedbyashallowtechniqueofhandcraftedfeaturesandstandardDCNN.
Keywords:handwrittencharacter recognition;deep learning;Devanagari characters; convolutional
neuralnetwork;adaptivegradientmethods
1. Introduction
In the last fewyears,deeplearningapproaches[1]havebeensuccessfullyappliedtovariousareas
suchas imageclassification, speech recognition, cancer celldetection, video search, facedetection,
satellite imagery, recognizing trafficsignsandpedestriandetection,etc. Theoutcomeofdeep learning
approaches is alsoprominent, and in somecases the results are superior tohumanexperts [2,3] in
thepastyears.Mostof theproblemsarealsobeingre-experimentedwithdeeplearningapproaches
with theview toachieving improvements in the existingfindings. Different architectures ofdeep
learninghavebeen introduced in recent years, suchasdeep convolutional neural networks, deep
beliefnetworks, andrecurrentneuralnetworks. Theentire architecturehas showntheproficiency
in different areas. Character recognition is one of the areaswheremachine learning techniques
havebeenextensivelyexperimented. Thefirstdeep learningapproach,which isoneof the leading
machine learningtechniques,wasproposedforcharacter recognition in1998onMNISTdatabase [4].
Thedeep learning techniques are basically composedofmultiple hidden layers, andeachhidden
layerconsistsofmultipleneurons,whichcompute thesuitableweights for thedeepnetwork.Alotof
computingpower isneededtocompute theseweights, andapowerful systemwasneeded,which
wasnoteasilyavailableat that time. Since then, theresearchershavedrawntheirattentiontofinding
thetechniquewhichneeds lesspowerbyconvertingthe images into featurevectors. In the last few
decades,a lotof featureextractiontechniqueshavebeenproposedsuchasHOG(histogramoforiented
J. Imaging 2018,4, 41 87 www.mdpi.com/journal/jimaging
back to the
book Document Image Processing"
Document Image Processing
- Title
- Document Image Processing
- Authors
- Ergina Kavallieratou
- Laurence Likforman-Sulem
- Editor
- MDPI
- Location
- Basel
- Date
- 2018
- Language
- German
- License
- CC BY-NC-ND 4.0
- ISBN
- 978-3-03897-106-1
- Size
- 17.0 x 24.4 cm
- Pages
- 216
- Keywords
- document image processing, preprocessing, binarizationl, text-line segmentation, handwriting recognition, indic/arabic/asian script, OCR, Video OCR, word spotting, retrieval, document datasets, performance evaluation, document annotation tools
- Category
- Informatik