Use este identificador para citar ou linkar para este item: http://hdl.handle.net/1843/ESBF-B8VGA3
Tipo: Dissertação de Mestrado
Título: Boosted projections and low cost transfer learning applied to smart surveillance
Autor(es): Ricardo Barbosa Kloss
Primeiro Orientador: William Robson Schwartz
Primeiro membro da banca : Adriano Alonso Veloso
Segundo membro da banca: Silvio Jamil Ferzoli Guimarães
Resumo: Computer vision is an important area related to understanding the world through images. It can be used in biometrics, by verifying whether a given face is of a certain identity, used to look for crime perpetrators in an airport blacklist, used in human-machine interactions and other goals. Deep learning methods have become ubiquitous in computer vision achieving many breakthroughs, making possible for machines, for instance, to verify if two photos belong to the same person with human-level skill. This work tackles two computer vision problems applied to surveillance. First, we explore deep learning methods for computer vision in the task of face verification and second, we explore dimensionality reduction techniques for the task of detection.
Abstract: Computer vision is an important area related to understanding the world through images. It can be used in biometrics, by verifying whether a given face is of a certain identity, used to look for crime perpetrators in an airport blacklist, used in human-machine interactions and other goals. Deep learning methods have become ubiquitous in computer vision achieving many breakthroughs, making possible for machines, for instance, to verify if two photos belong to the same person with human-level skill. This work tackles two computer vision problems applied to surveillance. First, we explore deep learning methods for computer vision in the task of face verification and second, we explore dimensionality reduction techniques for the task of detection.
Assunto: Visão por Computador
Computação
Aprendizado do computador
Teoria da estimativa
Idioma: Inglês
Editor: Universidade Federal de Minas Gerais
Sigla da Instituição: UFMG
Tipo de Acesso: Acesso Aberto
URI: http://hdl.handle.net/1843/ESBF-B8VGA3
Data do documento: 23-Fev-2018
Aparece nas coleções:Dissertações de Mestrado

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