Please use this identifier to cite or link to this item: http://www.alice.cnptia.embrapa.br/alice/handle/doc/1150165
Title: Fusing multi-season UAS images with convolutional neural networks to map tree species in Amazonian forests.
Authors: VERAS, H. F. P.
FERREIRA, M. P.
CUNHA NETO, E. M. da
FIGUEIREDO, E. O.
DALLA CORTE, A. P.
SANQUETTA, C. R.
Affiliation: HUDSON FRANKLIN PESSOA VERAS, UNIVERSIDADE FEDERAL DO PARANÁ; MATHEUS PINHEIRO FERREIRA, INSTITUTO MILITAR DE ENGENHARIA; ERNANDES MACEDO DA CUNHA NETO, UNIVERSIDADE FEDERAL DO PARANÁ; EVANDRO ORFANO FIGUEIREDO, CPAF-AC; ANA PAULA DALLA CORTE, UNIVERSIDADE FEDERAL DO PARANÁ; CARLOS ROBERTO SANQUETTA, UNIVERSIDADE FEDERAL DO PARANÁ.
Date Issued: 2022
Citation: Ecological Informatics, v. 71, 101815, 2022.
Description: Remote sensing images obtained by unoccupied aircraft systems (UAS) across different seasons enabled capturing of species-specific phenological patterns of tropical trees. The application of UAS multi-season images to classify tropical tree species is still poorly understood. In this study, we used RGB images from different seasons obtained by a low-cost UAS and convolutional neural networks (CNNs) to map tree species in an Amazonian forest. Individual tree crowns (ITC) were outlined in the UAS images and identified to the species level using forest inventory data. The CNN model was trained with images obtained in February, May, August, and November. The classification accuracy in the rainy season (November and February) was higher than in the dry season (May and August). Fusing images from multiple seasons improved the average accuracy of tree species classification by up to 21.1 percentage points, reaching 90.5%. The CNN model can learn species-specific phenological characteristics that impact the classification accuracy, such as leaf fall in the dry season, which highlights its potential to discriminate species in various conditions. We produced high-quality individual tree crown maps of the species using a post-processing procedure. The combination of multi-season UAS images and CNNs has the potential to map tree species in the Amazon, providing valuable insights for forest management and conservation initiatives.
Thesagro: Sensoriamento Remoto
Fenologia
Campo Experimental
Espécie Nativa
Floresta Tropical
Identificação
NAL Thesaurus: Remote sensing
Experimental forests
Tropical forests
Species identification
Phenology
Keywords: Amazonia Occidental
Fusão de imagens
Imagem RGB
Modelo CNN
Mapeamento de espécies
Imagem multitemporada
Teledetección
Bosques tropicales
Identificación de especies
Bosques experimentales
Embrapa Acre
Rio Branco (AC)
Acre
Amazônia Ocidental
Western Amazon
ISSN: 1574-9541
DOI: https://doi.org/10.1016/j.ecoinf.2022.101815
Type of Material: Artigo de periódico
Access: openAccess
Appears in Collections:Artigo em periódico indexado (CPAF-AC)

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