Mapping Key Indicators of Forest Restoration in the Amazon Using a Low-Cost Drone and Artificial Intelligence

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Mapping Key Indicators of Forest Restoration in the Amazon Using a Low-Cost Drone and Artificial Intelligence. / Albuquerque, Rafael Walter; Vieira, Daniel Luis Mascia; Ferreira, Manuel Eduardo; Soares, Lucas Pedrosa; Olsen, Søren Ingvor; Araujo, Luciana Spinelli; Vicente, Luiz Eduardo; Tymus, Julio Ricardo Caetano; Balieiro, Cintia Palheta; Matsumoto, Marcelo Hiromiti; Grohmann, Carlos Henrique.

I: Remote Sensing, Bind 14, Nr. 4, 830, 2022, s. 1-28.

Publikation: Bidrag til tidsskriftTidsskriftartikelForskningfagfællebedømt

Harvard

Albuquerque, RW, Vieira, DLM, Ferreira, ME, Soares, LP, Olsen, SI, Araujo, LS, Vicente, LE, Tymus, JRC, Balieiro, CP, Matsumoto, MH & Grohmann, CH 2022, 'Mapping Key Indicators of Forest Restoration in the Amazon Using a Low-Cost Drone and Artificial Intelligence', Remote Sensing, bind 14, nr. 4, 830, s. 1-28. https://doi.org/10.3390/rs14040830

APA

Albuquerque, R. W., Vieira, D. L. M., Ferreira, M. E., Soares, L. P., Olsen, S. I., Araujo, L. S., Vicente, L. E., Tymus, J. R. C., Balieiro, C. P., Matsumoto, M. H., & Grohmann, C. H. (2022). Mapping Key Indicators of Forest Restoration in the Amazon Using a Low-Cost Drone and Artificial Intelligence. Remote Sensing, 14(4), 1-28. [830]. https://doi.org/10.3390/rs14040830

Vancouver

Albuquerque RW, Vieira DLM, Ferreira ME, Soares LP, Olsen SI, Araujo LS o.a. Mapping Key Indicators of Forest Restoration in the Amazon Using a Low-Cost Drone and Artificial Intelligence. Remote Sensing. 2022;14(4):1-28. 830. https://doi.org/10.3390/rs14040830

Author

Albuquerque, Rafael Walter ; Vieira, Daniel Luis Mascia ; Ferreira, Manuel Eduardo ; Soares, Lucas Pedrosa ; Olsen, Søren Ingvor ; Araujo, Luciana Spinelli ; Vicente, Luiz Eduardo ; Tymus, Julio Ricardo Caetano ; Balieiro, Cintia Palheta ; Matsumoto, Marcelo Hiromiti ; Grohmann, Carlos Henrique. / Mapping Key Indicators of Forest Restoration in the Amazon Using a Low-Cost Drone and Artificial Intelligence. I: Remote Sensing. 2022 ; Bind 14, Nr. 4. s. 1-28.

Bibtex

@article{58feab1cc7d34f3180e4739d9150490e,
title = "Mapping Key Indicators of Forest Restoration in the Amazon Using a Low-Cost Drone and Artificial Intelligence",
abstract = "Monitoring the vegetation structure and species composition of forest restoration (FR) in the Brazilian Amazon is critical to ensuring its long-term benefits. Since remotely piloted aircrafts (RPAs) associated with deep learning (DL) are becoming powerful tools for vegetation monitoring, this study aims to use DL to automatically map individual crowns of Vismia (low resilience recovery indicator), Cecropia (fast recovery indicator), and trees in general (this study refers to individual crowns of all trees regardless of species as All Trees). Since All Trees can be accurately mapped, this study also aims to propose a tree crown heterogeneity index (TCHI), which estimates species diversity based on: the heterogeneity attributes/parameters of the RPA image inside the All Trees results; and the Shannon index measured by traditional fieldwork. Regarding the DL methods, this work evaluated the accuracy of the detection of individual objects, the quality of the delineation outlines and the area distribution. Except for Vismia delineation (IoU = 0.2), DL results presented accurate values in general, as F1 and IoU were always greater than 0.7 and 0.55, respectively, while Cecropia presented the most accurate results: F1 = 0.85 and IoU = 0.77. Since All Trees results were accurate, the TCHI was obtained through regression analysis between the canopy height model (CHM) heterogeneity attributes and the field plot data. Although TCHI presented robust parameters, such as p-value < 0.05, its results are considered preliminary because more data are needed to include different FR situations. Thus, the results of this work show that low-cost RPA has great potential for monitoring FR quality in the Amazon, because Vismia, Cecropia, and All Trees can be automatically mapped. Moreover, the TCHI preliminary results showed high potential in estimating species diversity. Future studies must assess domain adaptation methods for the DL results and different FR situations to improve the TCHI range of action.",
keywords = "Cecropia, Deep learning, Drones, Photogrammetry, Remotely piloted aircraft, RGB, Species diversity, Tree crown heterogeneity index, Tree species, Vismia",
author = "Albuquerque, {Rafael Walter} and Vieira, {Daniel Luis Mascia} and Ferreira, {Manuel Eduardo} and Soares, {Lucas Pedrosa} and Olsen, {S{\o}ren Ingvor} and Araujo, {Luciana Spinelli} and Vicente, {Luiz Eduardo} and Tymus, {Julio Ricardo Caetano} and Balieiro, {Cintia Palheta} and Matsumoto, {Marcelo Hiromiti} and Grohmann, {Carlos Henrique}",
note = "Publisher Copyright: {\textcopyright} 2022 by the authors. Licensee MDPI, Basel, Switzerland.",
year = "2022",
doi = "10.3390/rs14040830",
language = "English",
volume = "14",
pages = "1--28",
journal = "Remote Sensing",
issn = "2072-4292",
publisher = "M D P I AG",
number = "4",

}

RIS

TY - JOUR

T1 - Mapping Key Indicators of Forest Restoration in the Amazon Using a Low-Cost Drone and Artificial Intelligence

AU - Albuquerque, Rafael Walter

AU - Vieira, Daniel Luis Mascia

AU - Ferreira, Manuel Eduardo

AU - Soares, Lucas Pedrosa

AU - Olsen, Søren Ingvor

AU - Araujo, Luciana Spinelli

AU - Vicente, Luiz Eduardo

AU - Tymus, Julio Ricardo Caetano

AU - Balieiro, Cintia Palheta

AU - Matsumoto, Marcelo Hiromiti

AU - Grohmann, Carlos Henrique

N1 - Publisher Copyright: © 2022 by the authors. Licensee MDPI, Basel, Switzerland.

PY - 2022

Y1 - 2022

N2 - Monitoring the vegetation structure and species composition of forest restoration (FR) in the Brazilian Amazon is critical to ensuring its long-term benefits. Since remotely piloted aircrafts (RPAs) associated with deep learning (DL) are becoming powerful tools for vegetation monitoring, this study aims to use DL to automatically map individual crowns of Vismia (low resilience recovery indicator), Cecropia (fast recovery indicator), and trees in general (this study refers to individual crowns of all trees regardless of species as All Trees). Since All Trees can be accurately mapped, this study also aims to propose a tree crown heterogeneity index (TCHI), which estimates species diversity based on: the heterogeneity attributes/parameters of the RPA image inside the All Trees results; and the Shannon index measured by traditional fieldwork. Regarding the DL methods, this work evaluated the accuracy of the detection of individual objects, the quality of the delineation outlines and the area distribution. Except for Vismia delineation (IoU = 0.2), DL results presented accurate values in general, as F1 and IoU were always greater than 0.7 and 0.55, respectively, while Cecropia presented the most accurate results: F1 = 0.85 and IoU = 0.77. Since All Trees results were accurate, the TCHI was obtained through regression analysis between the canopy height model (CHM) heterogeneity attributes and the field plot data. Although TCHI presented robust parameters, such as p-value < 0.05, its results are considered preliminary because more data are needed to include different FR situations. Thus, the results of this work show that low-cost RPA has great potential for monitoring FR quality in the Amazon, because Vismia, Cecropia, and All Trees can be automatically mapped. Moreover, the TCHI preliminary results showed high potential in estimating species diversity. Future studies must assess domain adaptation methods for the DL results and different FR situations to improve the TCHI range of action.

AB - Monitoring the vegetation structure and species composition of forest restoration (FR) in the Brazilian Amazon is critical to ensuring its long-term benefits. Since remotely piloted aircrafts (RPAs) associated with deep learning (DL) are becoming powerful tools for vegetation monitoring, this study aims to use DL to automatically map individual crowns of Vismia (low resilience recovery indicator), Cecropia (fast recovery indicator), and trees in general (this study refers to individual crowns of all trees regardless of species as All Trees). Since All Trees can be accurately mapped, this study also aims to propose a tree crown heterogeneity index (TCHI), which estimates species diversity based on: the heterogeneity attributes/parameters of the RPA image inside the All Trees results; and the Shannon index measured by traditional fieldwork. Regarding the DL methods, this work evaluated the accuracy of the detection of individual objects, the quality of the delineation outlines and the area distribution. Except for Vismia delineation (IoU = 0.2), DL results presented accurate values in general, as F1 and IoU were always greater than 0.7 and 0.55, respectively, while Cecropia presented the most accurate results: F1 = 0.85 and IoU = 0.77. Since All Trees results were accurate, the TCHI was obtained through regression analysis between the canopy height model (CHM) heterogeneity attributes and the field plot data. Although TCHI presented robust parameters, such as p-value < 0.05, its results are considered preliminary because more data are needed to include different FR situations. Thus, the results of this work show that low-cost RPA has great potential for monitoring FR quality in the Amazon, because Vismia, Cecropia, and All Trees can be automatically mapped. Moreover, the TCHI preliminary results showed high potential in estimating species diversity. Future studies must assess domain adaptation methods for the DL results and different FR situations to improve the TCHI range of action.

KW - Cecropia

KW - Deep learning

KW - Drones

KW - Photogrammetry

KW - Remotely piloted aircraft

KW - RGB

KW - Species diversity

KW - Tree crown heterogeneity index

KW - Tree species

KW - Vismia

UR - http://www.scopus.com/inward/record.url?scp=85124697026&partnerID=8YFLogxK

U2 - 10.3390/rs14040830

DO - 10.3390/rs14040830

M3 - Journal article

AN - SCOPUS:85124697026

VL - 14

SP - 1

EP - 28

JO - Remote Sensing

JF - Remote Sensing

SN - 2072-4292

IS - 4

M1 - 830

ER -

ID: 307746941