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dc.contributor.authorHuang, Zheng-Jie
dc.contributor.authorLu, Wei-Hao
dc.contributor.authorPatel, Brijesh
dc.contributor.authorChiu, Po-Yan
dc.contributor.authorYang, Tz-Yu
dc.contributor.authorTong, Hao Jian
dc.contributor.authorBučinskas, Vytautas
dc.contributor.authorGreitans, Modris
dc.contributor.authorLin, Po Ting
dc.date.accessioned2023-09-18T16:34:58Z
dc.date.available2023-09-18T16:34:58Z
dc.date.issued2022
dc.identifier.other(SCOPUS_ID)85146837717
dc.identifier.urihttps://etalpykla.vilniustech.lt/handle/123456789/115192
dc.description.abstractIn this era of automation, image processing is an indispensable part of computer vision. Many computer vision approaches in the industry depend on a relatively bright environment. Under low light source conditions, the distribution of image information is too concentrated in specific intensity ranges due to the color factor of the subject itself, resulting in noise and contrast loss. Enhancing contrast is a crucial step in improving the quality of the image and showing visible details. This study proposes a method based on a convolutional neural network (CNN), using the pixel difference between paired images, called a motion matrix, as an annotation for low-contrast images. The image's motion vector is predicted after the neural network model has been trained to produce the low-contrast enhanced image. Then, the proposed model is compared with the Low-Light image Enhancement (LLNet), Multi-Scale Retinex Color Restoration (MSRCR), and Fuzzy Automatic Cluster Enhancement (FACE) approaches. The effectiveness of the proposed method was further evaluated by comparing several quality indicators, including peak signal-to-noise ratio, structural similarity, root-mean-square-error, root-mean-square-contrast and computation time efficiency.eng
dc.formatPDF
dc.format.extentp. 1-6
dc.format.mediumtekstas / txt
dc.language.isoeng
dc.relation.isreferencedbyScopus
dc.relation.isreferencedbyIEEE Xplore
dc.relation.isreferencedbyConference Proceedings Citation Index - Science (Web of Science)
dc.subject00 - Klasifikacija netaikoma / Classification does not apply
dc.titleConvolutional neural network-based image restoration (CNNIR)
dc.typeStraipsnis konferencijos darbų leidinyje Web of Science DB / Paper in conference publication in Web of Science DB
dcterms.references16
dc.type.pubtypeP1a - Straipsnis konferencijos darbų leidinyje Web of Science DB / Article in conference proceedings Web of Science DB
dc.contributor.institutionNational Taiwan University of Science and Technology
dc.contributor.institutionNational Taiwan University of Science and Technology Mats University
dc.contributor.institutionVilniaus Gedimino technikos universitetas
dc.contributor.institutionInstitute of Electronics and Computer Science
dc.contributor.facultyMechanikos fakultetas / Faculty of Mechanics
dc.subject.researchfieldT 009 - Mechanikos inžinerija / Mechanical enginering
dc.subject.vgtuprioritizedfieldsMC0101 - Mechatroninės gamybos sistemos Pramonė 4.0 platformoje / Mechatronic for Industry 4.0 Production System
dc.subject.ltspecializationsL104 - Nauji gamybos procesai, medžiagos ir technologijos / New production processes, materials and technologies
dc.subject.enartificial intelligence
dc.subject.enconvolutional neural network
dc.subject.endeep learning
dc.subject.enimage processing
dc.subject.enlow contrast
dcterms.sourcetitleMESA 2022 - 18th IEEE/ASME International Conference on Mechatronic and Embedded Systems and Applications, 28-30 November 2022, Taipei, Taiwan : proceedings
dc.publisher.nameIEEE
dc.identifier.doi2-s2.0-85146837717
dc.identifier.doi85146837717
dc.identifier.doi0
dc.identifier.doi144069381
dc.identifier.doi000926821500027
dc.identifier.doi10.1109/MESA55290.2022.10004461
dc.identifier.elaba154974817


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