Restoring Palmprint Biometrics: A GAN based Hybrid Framework for inpainting and deblurring

Palmprint recognition is a reliable biometric identification technique and restoration is valuable technique for restoring and enhancing images which have been highly distorted either by some missing part or by addition of some noise to the image or the blur images. The conventional denoising algori...

Full description

Saved in:
Bibliographic Details
Published inJournal of information systems engineering & management Vol. 10; no. 43s; pp. 34 - 44
Main Author Shweta Sinha
Format Journal Article
LanguageEnglish
Published 07.05.2025
Online AccessGet full text

Cover

Loading…
Abstract Palmprint recognition is a reliable biometric identification technique and restoration is valuable technique for restoring and enhancing images which have been highly distorted either by some missing part or by addition of some noise to the image or the blur images. The conventional denoising algorithms struggle to handle noise whereas Generative Adversarial Networks, GAN are proved to be the efficient generative models that produces promising result and shows remarkable performance in this field. The GAN-based model is effective for denoising low-resolution palmprint images due to its ability to handle noise and retain more orientation information. Several researches are made on the restoration and various GAN models are explored but the challenge was found to be that mostly all the models focus on only single type of restoration, there is still a scope to design a GAN model that works on all types of noises with the comparatively increased efficiency. An intelligent framework/architecture is needed to generalize this complex phenomenon. This research proposes a GAN model that focuses on restoration of image damaged by several noises/factors. This study introduces a novel hybrid GAN-based model that addresses inpainting and deblurring for palmprint repair. It makes use of Transformer blocks, a PatchGAN discriminator, and a U-Net Based generator. The model learns global context and long-range dependence, downsamples, and extracts hierarchical features. The discriminator establishes if the created or real image is authentic or not. 312 subjects' 5,502 palmprint images from the CASIA palmprint library were used to train the model. Various deblurring and painting models are analysed and the proposed model is found to generate better performance. The approach can be used in real-world scenarios because it is end-to-end and doesn't require further noise localization information. Additionally, the model's scalability and processing efficiency are assessed in the article.
AbstractList Palmprint recognition is a reliable biometric identification technique and restoration is valuable technique for restoring and enhancing images which have been highly distorted either by some missing part or by addition of some noise to the image or the blur images. The conventional denoising algorithms struggle to handle noise whereas Generative Adversarial Networks, GAN are proved to be the efficient generative models that produces promising result and shows remarkable performance in this field. The GAN-based model is effective for denoising low-resolution palmprint images due to its ability to handle noise and retain more orientation information. Several researches are made on the restoration and various GAN models are explored but the challenge was found to be that mostly all the models focus on only single type of restoration, there is still a scope to design a GAN model that works on all types of noises with the comparatively increased efficiency. An intelligent framework/architecture is needed to generalize this complex phenomenon. This research proposes a GAN model that focuses on restoration of image damaged by several noises/factors. This study introduces a novel hybrid GAN-based model that addresses inpainting and deblurring for palmprint repair. It makes use of Transformer blocks, a PatchGAN discriminator, and a U-Net Based generator. The model learns global context and long-range dependence, downsamples, and extracts hierarchical features. The discriminator establishes if the created or real image is authentic or not. 312 subjects' 5,502 palmprint images from the CASIA palmprint library were used to train the model. Various deblurring and painting models are analysed and the proposed model is found to generate better performance. The approach can be used in real-world scenarios because it is end-to-end and doesn't require further noise localization information. Additionally, the model's scalability and processing efficiency are assessed in the article.
Author Shweta Sinha
Author_xml – sequence: 1
  surname: Shweta Sinha
  fullname: Shweta Sinha
BookMark eNpNkM1OwkAUhScGExF5AjfzAsX563TqDomACVFjWLlpbqd3zCBtyUzV8Pa2yMLVOZvzJee7JqOmbZCQW85mqciMvNv5iPXsmzOvZJwZycQFGQulTaJkpkf_-hWZxrhjjAmuWKrEmLy_Yeza4JsP-gr7-tC3jj74tsYueBvv6Zyu5s-0hIgVXR_L4Cu6DFDjTxs-qWsD9c0B-tFAgKaiFZb7rzAAb8ilg33E6TknZLt83C7WyeZl9bSYbxJrcpEoU3IDOQcnnJNaayWs48bkkmFlAbXLJOeiSgFT1KXOLBhn0QjGIReQywmRf1gb2hgDuqI_UUM4FpwVJ0HFSVBxFlQMguQv6X1eVg
ContentType Journal Article
DBID AAYXX
CITATION
DOI 10.52783/jisem.v10i43s.8302
DatabaseName CrossRef
DatabaseTitle CrossRef
DatabaseTitleList CrossRef
DeliveryMethod fulltext_linktorsrc
Discipline Engineering
EISSN 2468-4376
EndPage 44
ExternalDocumentID 10_52783_jisem_v10i43s_8302
GroupedDBID AAYXX
ALMA_UNASSIGNED_HOLDINGS
CITATION
M~E
OK1
ID FETCH-LOGICAL-c892-48b18a91af2ff366642cf188930edcae6f73112d5ae5e6b67ca8fce8201a92a93
ISSN 2468-4376
IngestDate Tue Jul 01 04:47:35 EDT 2025
IsDoiOpenAccess false
IsOpenAccess true
IsPeerReviewed false
IsScholarly true
Issue 43s
Language English
LinkModel OpenURL
MergedId FETCHMERGED-LOGICAL-c892-48b18a91af2ff366642cf188930edcae6f73112d5ae5e6b67ca8fce8201a92a93
OpenAccessLink https://jisem-journal.com/index.php/journal/article/download/8302/3769
PageCount 11
ParticipantIDs crossref_primary_10_52783_jisem_v10i43s_8302
ProviderPackageCode CITATION
AAYXX
PublicationCentury 2000
PublicationDate 2025-05-07
PublicationDateYYYYMMDD 2025-05-07
PublicationDate_xml – month: 05
  year: 2025
  text: 2025-05-07
  day: 07
PublicationDecade 2020
PublicationTitle Journal of information systems engineering & management
PublicationYear 2025
SSID ssj0002140542
Score 2.2912574
Snippet Palmprint recognition is a reliable biometric identification technique and restoration is valuable technique for restoring and enhancing images which have been...
SourceID crossref
SourceType Index Database
StartPage 34
Title Restoring Palmprint Biometrics: A GAN based Hybrid Framework for inpainting and deblurring
Volume 10
hasFullText 1
inHoldings 1
isFullTextHit
isPrint
link http://utb.summon.serialssolutions.com/2.0.0/link/0/eLvHCXMwnV3NS9xAFB-qvdSD2FqxfjGH3tas-ZhkEm-LaBdBD3UF8RImkxkMuFG60VIP_dv73kw2E1wR7SWEYXns7u-X95X3Qch3ITNRMq084ErkMe0zT6i48MA0ZYHmPuMSG5zPzpPxJTu9iq9cQt90lzTFUD692FfyP6jCGeCKXbLvQLYTCgdwD_jCFRCG65sw_mnWwmCwj2tQMEXX4HLJKW7JkjPbdP5jdD5AU1UOxn-wOwtdVVuOZSoMq_peVHZbBKbQS1XcYlKwtWeLXms7aNWwxk6Bng2Um2lomDRdKKm5uPmtGjG4qOob0c8zhLGp6uNOHYXYo8Ui3g6ufuFsrk_9Hm9YNOupxzZvaQ2tnfv4XIXHuPoDdXg1U9PhY-BXIGKIU8qcxZq_pX9myLryQghsjJjcCMlbITkKWSIfQwgocNfF2V-XjQshzozNpqXuJ9kRVUbOweKX6bkxPX9kskZWW0joyLLiM_mg6i9kpTdecp1cd_ygHT-o48chHVFgBzXsoJYdtGMHBZypYwcFdlDHjq9kcnI8ORp77S4NT6ZZ6LG0CFKRBUKHWkcQsrJQ6iAFZ9VXpRQq0TwCz7uM4UFVSZFwKVItFbqHIgtFFm2Q5fquVpuEJsKPUiaTKJGaac6FUkmsuZbcl37B-TeyP_9n8ns7MSV_BZCt9318m3xy5Nwhy82vB7ULbmFT7BlE_wE4kGeo
linkProvider ISSN International Centre
openUrl ctx_ver=Z39.88-2004&ctx_enc=info%3Aofi%2Fenc%3AUTF-8&rfr_id=info%3Asid%2Fsummon.serialssolutions.com&rft_val_fmt=info%3Aofi%2Ffmt%3Akev%3Amtx%3Ajournal&rft.genre=article&rft.atitle=Restoring+Palmprint+Biometrics%3A+A+GAN+based+Hybrid+Framework+for+inpainting+and+deblurring&rft.jtitle=Journal+of+information+systems+engineering+%26+management&rft.au=Shweta+Sinha&rft.date=2025-05-07&rft.issn=2468-4376&rft.eissn=2468-4376&rft.volume=10&rft.issue=43s&rft.spage=34&rft.epage=44&rft_id=info:doi/10.52783%2Fjisem.v10i43s.8302&rft.externalDBID=n%2Fa&rft.externalDocID=10_52783_jisem_v10i43s_8302
thumbnail_l http://covers-cdn.summon.serialssolutions.com/index.aspx?isbn=/lc.gif&issn=2468-4376&client=summon
thumbnail_m http://covers-cdn.summon.serialssolutions.com/index.aspx?isbn=/mc.gif&issn=2468-4376&client=summon
thumbnail_s http://covers-cdn.summon.serialssolutions.com/index.aspx?isbn=/sc.gif&issn=2468-4376&client=summon