Mapping tropical forest degradation with deep learning and Planet NICFI data

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Mapping tropical forest degradation with deep learning and Planet NICFI data. / Dalagnol, Ricardo; Wagner, Fabien Hubert; Galvão, Lênio Soares; Braga, Daniel; Osborn, Fiona; Sagang, Le Bienfaiteur; da Conceição Bispo, Polyanna; Payne, Matthew; Silva Junior, Celso; Favrichon, Samuel; Silgueiro, Vinicius; Anderson, Liana O.; Aragão, Luiz Eduardo Oliveira e.Cruz de; Fensholt, Rasmus; Brandt, Martin; Ciais, Philipe; Saatchi, Sassan.

I: Remote Sensing of Environment, Bind 298, 113798, 2023.

Publikation: Bidrag til tidsskriftTidsskriftartikelForskningfagfællebedømt

Harvard

Dalagnol, R, Wagner, FH, Galvão, LS, Braga, D, Osborn, F, Sagang, LB, da Conceição Bispo, P, Payne, M, Silva Junior, C, Favrichon, S, Silgueiro, V, Anderson, LO, Aragão, LEOECD, Fensholt, R, Brandt, M, Ciais, P & Saatchi, S 2023, 'Mapping tropical forest degradation with deep learning and Planet NICFI data', Remote Sensing of Environment, bind 298, 113798. https://doi.org/10.1016/j.rse.2023.113798

APA

Dalagnol, R., Wagner, F. H., Galvão, L. S., Braga, D., Osborn, F., Sagang, L. B., da Conceição Bispo, P., Payne, M., Silva Junior, C., Favrichon, S., Silgueiro, V., Anderson, L. O., Aragão, L. E. O. E. C. D., Fensholt, R., Brandt, M., Ciais, P., & Saatchi, S. (2023). Mapping tropical forest degradation with deep learning and Planet NICFI data. Remote Sensing of Environment, 298, [113798]. https://doi.org/10.1016/j.rse.2023.113798

Vancouver

Dalagnol R, Wagner FH, Galvão LS, Braga D, Osborn F, Sagang LB o.a. Mapping tropical forest degradation with deep learning and Planet NICFI data. Remote Sensing of Environment. 2023;298. 113798. https://doi.org/10.1016/j.rse.2023.113798

Author

Dalagnol, Ricardo ; Wagner, Fabien Hubert ; Galvão, Lênio Soares ; Braga, Daniel ; Osborn, Fiona ; Sagang, Le Bienfaiteur ; da Conceição Bispo, Polyanna ; Payne, Matthew ; Silva Junior, Celso ; Favrichon, Samuel ; Silgueiro, Vinicius ; Anderson, Liana O. ; Aragão, Luiz Eduardo Oliveira e.Cruz de ; Fensholt, Rasmus ; Brandt, Martin ; Ciais, Philipe ; Saatchi, Sassan. / Mapping tropical forest degradation with deep learning and Planet NICFI data. I: Remote Sensing of Environment. 2023 ; Bind 298.

Bibtex

@article{b390046f5d2544e2a346eac3c9f85b39,
title = "Mapping tropical forest degradation with deep learning and Planet NICFI data",
abstract = "Tropical rainforests from the Brazilian Amazon are frequently degraded by logging, fire, edge effects and minor unpaved roads. However, mapping the extent of degradation remains challenging because of the lack of frequent high-spatial resolution satellite observations, occlusion of understory disturbances, quick recovery of leafy vegetation, and limitations of conventional reflectance-based remote sensing techniques. Here, we introduce a new approach to map forest degradation caused by logging, fire, and road construction based on deep learning (DL), henceforth called DL-DEGRAD, using very high spatial (4.77 m) and bi-annual to monthly temporal resolution of the Planet NICFI imagery. We applied DL-DEGRAD model over forests of the state of Mato Grosso in Brazil to map forest degradation with attributions from 2016 to 2021 at six-month intervals. A total of 73,744 images (256 × 256 pixels in size) were visually interpreted and manually labeled with three semantic classes (logging, fire, and roads) to train/validate a U-Net model. We predicted the three classes over the study area for all dates, producing accumulated degradation maps biannually. Estimates of accuracy and areas of degradation were performed using a probability design-based stratified random sampling approach (n = 2678 samples) and compared it with existing operational data products at the state level. DL-DEGRAD performed significantly better than all other data products in mapping logging activities (F1-score = 68.9) and forest fire (F1-score = 75.6) when compared with the Brazil's national maps (SIMEX, DETER, MapBiomas Fire) and global products (UMD-GFC, TMF, FireCCI, FireGFL, GABAM, MCD64). Pixel-based spatial comparison of degradation areas showed the highest agreement with DETER and SIMEX as Brazil official data products derived from visual interpretation of Landsat imagery. The U-Net model applied to NICFI data performed as closely to a trained human delineation of logged and burned forests, suggesting the methodology can readily scale up the mapping and monitoring of degraded forests at national to regional scales. Over the state of Mato Grosso, the combined effects of logging and fire are degrading the remaining intact forests at an average rate of 8443 km2 year−1 from 2017 to 2021. In 2020, a record degradation area of 13,294 km2 was estimated from DL-DEGRAD, which was two times the areas of deforestation.",
keywords = "Amazon, Fire, Forest degradation, Logging, U-net",
author = "Ricardo Dalagnol and Wagner, {Fabien Hubert} and Galv{\~a}o, {L{\^e}nio Soares} and Daniel Braga and Fiona Osborn and Sagang, {Le Bienfaiteur} and {da Concei{\c c}{\~a}o Bispo}, Polyanna and Matthew Payne and {Silva Junior}, Celso and Samuel Favrichon and Vinicius Silgueiro and Anderson, {Liana O.} and Arag{\~a}o, {Luiz Eduardo Oliveira e.Cruz de} and Rasmus Fensholt and Martin Brandt and Philipe Ciais and Sassan Saatchi",
note = "Publisher Copyright: {\textcopyright} 2023 The Authors",
year = "2023",
doi = "10.1016/j.rse.2023.113798",
language = "English",
volume = "298",
journal = "Remote Sensing of Environment",
issn = "0034-4257",
publisher = "Elsevier",

}

RIS

TY - JOUR

T1 - Mapping tropical forest degradation with deep learning and Planet NICFI data

AU - Dalagnol, Ricardo

AU - Wagner, Fabien Hubert

AU - Galvão, Lênio Soares

AU - Braga, Daniel

AU - Osborn, Fiona

AU - Sagang, Le Bienfaiteur

AU - da Conceição Bispo, Polyanna

AU - Payne, Matthew

AU - Silva Junior, Celso

AU - Favrichon, Samuel

AU - Silgueiro, Vinicius

AU - Anderson, Liana O.

AU - Aragão, Luiz Eduardo Oliveira e.Cruz de

AU - Fensholt, Rasmus

AU - Brandt, Martin

AU - Ciais, Philipe

AU - Saatchi, Sassan

N1 - Publisher Copyright: © 2023 The Authors

PY - 2023

Y1 - 2023

N2 - Tropical rainforests from the Brazilian Amazon are frequently degraded by logging, fire, edge effects and minor unpaved roads. However, mapping the extent of degradation remains challenging because of the lack of frequent high-spatial resolution satellite observations, occlusion of understory disturbances, quick recovery of leafy vegetation, and limitations of conventional reflectance-based remote sensing techniques. Here, we introduce a new approach to map forest degradation caused by logging, fire, and road construction based on deep learning (DL), henceforth called DL-DEGRAD, using very high spatial (4.77 m) and bi-annual to monthly temporal resolution of the Planet NICFI imagery. We applied DL-DEGRAD model over forests of the state of Mato Grosso in Brazil to map forest degradation with attributions from 2016 to 2021 at six-month intervals. A total of 73,744 images (256 × 256 pixels in size) were visually interpreted and manually labeled with three semantic classes (logging, fire, and roads) to train/validate a U-Net model. We predicted the three classes over the study area for all dates, producing accumulated degradation maps biannually. Estimates of accuracy and areas of degradation were performed using a probability design-based stratified random sampling approach (n = 2678 samples) and compared it with existing operational data products at the state level. DL-DEGRAD performed significantly better than all other data products in mapping logging activities (F1-score = 68.9) and forest fire (F1-score = 75.6) when compared with the Brazil's national maps (SIMEX, DETER, MapBiomas Fire) and global products (UMD-GFC, TMF, FireCCI, FireGFL, GABAM, MCD64). Pixel-based spatial comparison of degradation areas showed the highest agreement with DETER and SIMEX as Brazil official data products derived from visual interpretation of Landsat imagery. The U-Net model applied to NICFI data performed as closely to a trained human delineation of logged and burned forests, suggesting the methodology can readily scale up the mapping and monitoring of degraded forests at national to regional scales. Over the state of Mato Grosso, the combined effects of logging and fire are degrading the remaining intact forests at an average rate of 8443 km2 year−1 from 2017 to 2021. In 2020, a record degradation area of 13,294 km2 was estimated from DL-DEGRAD, which was two times the areas of deforestation.

AB - Tropical rainforests from the Brazilian Amazon are frequently degraded by logging, fire, edge effects and minor unpaved roads. However, mapping the extent of degradation remains challenging because of the lack of frequent high-spatial resolution satellite observations, occlusion of understory disturbances, quick recovery of leafy vegetation, and limitations of conventional reflectance-based remote sensing techniques. Here, we introduce a new approach to map forest degradation caused by logging, fire, and road construction based on deep learning (DL), henceforth called DL-DEGRAD, using very high spatial (4.77 m) and bi-annual to monthly temporal resolution of the Planet NICFI imagery. We applied DL-DEGRAD model over forests of the state of Mato Grosso in Brazil to map forest degradation with attributions from 2016 to 2021 at six-month intervals. A total of 73,744 images (256 × 256 pixels in size) were visually interpreted and manually labeled with three semantic classes (logging, fire, and roads) to train/validate a U-Net model. We predicted the three classes over the study area for all dates, producing accumulated degradation maps biannually. Estimates of accuracy and areas of degradation were performed using a probability design-based stratified random sampling approach (n = 2678 samples) and compared it with existing operational data products at the state level. DL-DEGRAD performed significantly better than all other data products in mapping logging activities (F1-score = 68.9) and forest fire (F1-score = 75.6) when compared with the Brazil's national maps (SIMEX, DETER, MapBiomas Fire) and global products (UMD-GFC, TMF, FireCCI, FireGFL, GABAM, MCD64). Pixel-based spatial comparison of degradation areas showed the highest agreement with DETER and SIMEX as Brazil official data products derived from visual interpretation of Landsat imagery. The U-Net model applied to NICFI data performed as closely to a trained human delineation of logged and burned forests, suggesting the methodology can readily scale up the mapping and monitoring of degraded forests at national to regional scales. Over the state of Mato Grosso, the combined effects of logging and fire are degrading the remaining intact forests at an average rate of 8443 km2 year−1 from 2017 to 2021. In 2020, a record degradation area of 13,294 km2 was estimated from DL-DEGRAD, which was two times the areas of deforestation.

KW - Amazon

KW - Fire

KW - Forest degradation

KW - Logging

KW - U-net

U2 - 10.1016/j.rse.2023.113798

DO - 10.1016/j.rse.2023.113798

M3 - Journal article

AN - SCOPUS:85171444696

VL - 298

JO - Remote Sensing of Environment

JF - Remote Sensing of Environment

SN - 0034-4257

M1 - 113798

ER -

ID: 389900867