Classificação de fitofisionomias de Cerrado a partir de fusão de imagens de sensoriamento remoto

Resumo

On-site monitoring of the Cerrado vegetation cover becomes impracticable due large coverage. The objective of this work was to perform the image fusion of the CBERS-4 satellite and to analyze the performance of the use of the fusion in the process of vegetation classification and soil occupation in the RPDS - Legado Verdes do Cerrado. The MUX sensors were selected to form the RGB false-color image and the PAN5m, followed by the substitution fusion process, using the IHS method. The results revealed that the fusion of images generated a gain of visual and spatial quality, improving the information used as a basis for classification. The thematic map had an overall performance of 84.83% and average confusion of 15.17% when using fusion, and 77.66% and 22.34% when using only image with RGB composition. On-site sampling contributed to the acquisition of the sample polygons and the correct definition of the classes, but the confounding values still considered high.

Descrição

Citação

RIOS, Jovan Martins et al. Classificação de fitofisionomias de Cerrado a partir de fusão de imagens de sensoriamento remoto. TreeDimensional, Goiânia, v. 4, n. 7, p. 12-20, 2019. DOI: 10.18677/TreeDimensional_2019A2. Disponível em: https://treedimensional.org/archives/9. Acesso em: 1 jul. 2025.