Analysis and evaluation of deep learning based super-resolution algorithms to improve performance in low-resolution face recognition

Detalhes bibliográficos
Data de Publicação: 2019
Tipo de documento: Dissertação
Título da fonte: Portal de Dados Abertos da CAPES
Texto Completo: https://sucupira.capes.gov.br/sucupira/public/consultas/coleta/trabalhoConclusao/viewTrabalhoConclusao.jsf?popup=true&id_trabalho=7961644
id BRCRIS_76a2312699a0bf703d0697f5a8e1ded2
network_acronym_str CAPES
network_name_str Portal de Dados Abertos da CAPES
dc.title.pt-BR.fl_str_mv Analysis and evaluation of deep learning based super-resolution algorithms to improve performance in low-resolution face recognition
title Analysis and evaluation of deep learning based super-resolution algorithms to improve performance in low-resolution face recognition
spellingShingle Analysis and evaluation of deep learning based super-resolution algorithms to improve performance in low-resolution face recognition
Convolutional Neural Networks.
Redes Neurais Convolucionais.
title_short Analysis and evaluation of deep learning based super-resolution algorithms to improve performance in low-resolution face recognition
title_full Analysis and evaluation of deep learning based super-resolution algorithms to improve performance in low-resolution face recognition
title_fullStr Analysis and evaluation of deep learning based super-resolution algorithms to improve performance in low-resolution face recognition
Analysis and evaluation of deep learning based super-resolution algorithms to improve performance in low-resolution face recognition
title_full_unstemmed Analysis and evaluation of deep learning based super-resolution algorithms to improve performance in low-resolution face recognition
Analysis and evaluation of deep learning based super-resolution algorithms to improve performance in low-resolution face recognition
title_sort Analysis and evaluation of deep learning based super-resolution algorithms to improve performance in low-resolution face recognition
topic Convolutional Neural Networks.
Redes Neurais Convolucionais.
publishDate 2019
format masterThesis
url https://sucupira.capes.gov.br/sucupira/public/consultas/coleta/trabalhoConclusao/viewTrabalhoConclusao.jsf?popup=true&id_trabalho=7961644
author_role author
dc.publisher.none.fl_str_mv FUNDAÇÃO UNIVERSIDADE FEDERAL DE SERGIPE
publisher.none.fl_str_mv FUNDAÇÃO UNIVERSIDADE FEDERAL DE SERGIPE
instname_str FUNDAÇÃO UNIVERSIDADE FEDERAL DE SERGIPE
dc.publisher.program.fl_str_mv Ciência da Computação
dc.description.course.none.fl_txt_mv Ciência da Computação
reponame_str Portal de Dados Abertos da CAPES
collection Portal de Dados Abertos da CAPES
spelling CAPESPortal de Dados Abertos da CAPESAnalysis and evaluation of deep learning based super-resolution algorithms to improve performance in low-resolution face recognitionAnalysis and evaluation of deep learning based super-resolution algorithms to improve performance in low-resolution face recognitionAnalysis and evaluation of deep learning based super-resolution algorithms to improve performance in low-resolution face recognitionAnalysis and evaluation of deep learning based super-resolution algorithms to improve performance in low-resolution face recognitionAnalysis and evaluation of deep learning based super-resolution algorithms to improve performance in low-resolution face recognitionAnalysis and evaluation of deep learning based super-resolution algorithms to improve performance in low-resolution face recognitionAnalysis and evaluation of deep learning based super-resolution algorithms to improve performance in low-resolution face recognitionConvolutional Neural Networks.2019masterThesishttps://sucupira.capes.gov.br/sucupira/public/consultas/coleta/trabalhoConclusao/viewTrabalhoConclusao.jsf?popup=true&id_trabalho=7961644authorFUNDAÇÃO UNIVERSIDADE FEDERAL DE SERGIPEFUNDAÇÃO UNIVERSIDADE FEDERAL DE SERGIPEFUNDAÇÃO UNIVERSIDADE FEDERAL DE SERGIPECiência da ComputaçãoCiência da ComputaçãoPortal de Dados Abertos da CAPESPortal de Dados Abertos da CAPES
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