SOFTWARE FOR FOREST SPECIES RECOGNITION BASED ON DIGITAL IMAGES OF WOOD

Autores

  • Wellington de Oliveira Universidade Tecnológica Federal do Paraná - Campus Medianeira http://orcid.org/0000-0001-7547-9771
  • Pedro Luiz de Paula Filho Universidade Tecnológica Federal do Paraná - Campus Medianeira
  • Jefferson Gustavo Martins Universidade Tecnológica Federal do Paraná - Campus Toledo

DOI:

https://doi.org/10.5380/rf.v49i3.60075

Palavras-chave:

Digital Image Processing. Convolutional Neural Networks. Wood Anatomy. Computer Vision

Resumo

Classifying forest species is an essential process for the correct management of wood and forest control. After cutting off the trunk of the tree, many of the characteristics of the species are lost and identifying them becomes a much more difficult task. In this context, an anatomical analysis of the wood becomes necessary, needing to be done by specialists who know very well the cellular structures of each species. However, such methodology approaches few automated techniques, making it a delayed and error-prone activity. These factors undermine environmental control and decision-making. The use of computer vision is an alternative to automatic recognition, since it allows the development of intelligent systems, in which, from images, are able to detect features and perform a final classification. One of the techniques of Computer Vision is the use of Convolutional Neural Networks, technique that represents the state of the art in this area, it is the construction of models capable of interpreting patterns in images. This research addresses experiments using convolutional neural networks for recognizing forest species from digital images. Two original datasets were used, one including macroscopic images and the other including microscopic images, for which three models were created: scale recognition, species recognition from macroscopic images and species recognition from microscopic. The best models provide 100% recognition rates for the scale dataset, 98.73% for the macroscopic and 99.11% for the microscopic which made possible to develop a software as a final product, using these three models.

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Publicado

16-07-2019

Como Citar

Oliveira, W. de, Paula Filho, P. L. de, & Martins, J. G. (2019). SOFTWARE FOR FOREST SPECIES RECOGNITION BASED ON DIGITAL IMAGES OF WOOD. Floresta, 49(3), 543–552. https://doi.org/10.5380/rf.v49i3.60075

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