Optical-based near-real time deforestation alert systems in the Brazilian Amazon are ineffective in the rainy season. This study identify clear-cut deforested areas through Neural Network (NN) algorithm based on C-band, VV- and VH-polarized, Sentinel-1 images. Statistical parameters of backscatter coefficients (mean, standard deviation, and the difference between maximum and minimum values - MMD) were computed from 30 Sentinel-1 images, from 2019, used as input parameters of the NN classifier. The samples were manually selected, including forested and deforested areas. After deforestation, mean backscatter signals decreased on the average of 2 dB for VV and 2.3 dB for VH from May to September-October. A Multi-Layer Perceptron (MLP) network was used for detecting near-real time forest disturbances larger than 2 ha. Case studies were performed for both polarizations considered the following input sets to the MLP: mean; mean and standard deviation; mean and MMD; and mean, standard deviation, and MMD. For the 2019 dataset, the latter showed the best performance of the NN algorithm with accuracy and F1 score of 99%. Automatic extraction using 2018 Sentinel-1 images reached accuracy and F1 score of 89% with the MapBiomas reference data and accuracy of 81% and F1 score of 79% with the PRODES reference data.

Silva, C.a., Guerrisi, G., Del Frate, F., Sano, E.e. (2022). Near-real time deforestation detection in the Brazilian Amazon with Sentinel-1 and neural networks. EUROPEAN JOURNAL OF REMOTE SENSING, 55(1), 129-149 [10.1080/22797254.2021.2025154].

Near-real time deforestation detection in the Brazilian Amazon with Sentinel-1 and neural networks

Guerrisi G.;Del Frate F.;
2022-01-01

Abstract

Optical-based near-real time deforestation alert systems in the Brazilian Amazon are ineffective in the rainy season. This study identify clear-cut deforested areas through Neural Network (NN) algorithm based on C-band, VV- and VH-polarized, Sentinel-1 images. Statistical parameters of backscatter coefficients (mean, standard deviation, and the difference between maximum and minimum values - MMD) were computed from 30 Sentinel-1 images, from 2019, used as input parameters of the NN classifier. The samples were manually selected, including forested and deforested areas. After deforestation, mean backscatter signals decreased on the average of 2 dB for VV and 2.3 dB for VH from May to September-October. A Multi-Layer Perceptron (MLP) network was used for detecting near-real time forest disturbances larger than 2 ha. Case studies were performed for both polarizations considered the following input sets to the MLP: mean; mean and standard deviation; mean and MMD; and mean, standard deviation, and MMD. For the 2019 dataset, the latter showed the best performance of the NN algorithm with accuracy and F1 score of 99%. Automatic extraction using 2018 Sentinel-1 images reached accuracy and F1 score of 89% with the MapBiomas reference data and accuracy of 81% and F1 score of 79% with the PRODES reference data.
2022
Pubblicato
Rilevanza internazionale
Articolo
Esperti anonimi
Settore ING-INF/02
English
Amazon forest
neural network
MLP
multi-layer perceptron
time series analysis
change detection
near-real time deforestation detection
Silva, C.a., Guerrisi, G., Del Frate, F., Sano, E.e. (2022). Near-real time deforestation detection in the Brazilian Amazon with Sentinel-1 and neural networks. EUROPEAN JOURNAL OF REMOTE SENSING, 55(1), 129-149 [10.1080/22797254.2021.2025154].
Silva, Ca; Guerrisi, G; Del Frate, F; Sano, Ee
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2108/371626
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