Combinando descritores de forma e textura para classificação de bioimagens: um estudo de caso aplicado à base de imagens ImageCLEF
Nowadays, there is a large volume of digital data, including multimedia files (e.g. images) which are generated daily in several areas. The importance of this subject has led to a new paradigm known as eScience. In this scenario, the biological image domain emerges as an important research area give...
Autor principal: | Brilhador, Anderson |
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Formato: | Trabalho de Conclusão de Curso (Graduação) |
Idioma: | Português |
Publicado em: |
Universidade Tecnológica Federal do Paraná
2022
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Assuntos: | |
Acesso em linha: |
http://repositorio.utfpr.edu.br/jspui/handle/1/28315 |
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Resumo: |
Nowadays, there is a large volume of digital data, including multimedia files (e.g. images) which are generated daily in several areas. The importance of this subject has led to a new paradigm known as eScience. In this scenario, the biological image domain emerges as an important research area given the great impact that it can leads in real solutions and people's lives. On the other hand, to cope with this massive data it is necessary to integrate into the same environment not only several techniques involving image processing, description and classification, but also feature selection methods. Hence, in the present paper we propose a new framework capable to join these techniques in a single and efficient pipeline, in order to characterize biological images. Experiments, performed with the ImageCLEF dataset, have shown that the proposed framework presented notable results, reaching up to 89,7% of accuracy regarding the plant species classification, which is a highly relevant and non-trivial task. |
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