TY - JOUR
T1 - A Comparative Assessment of Machine-Learning Techniques for Forest Degradation Caused by Selective Logging in an Amazon Region Using Multitemporal X-Band SAR Images
AU - Kuck, Tahisa Neitzel
AU - Sano, Edson Eyji
AU - Bispo, Polyanna da Conceição
AU - Shiguemori, Elcio Hideiti
AU - Filho, Paulo Fernando Ferreira Silva
AU - Matricardi, Eraldo Aparecido Trondoli
N1 - Funding Information:
The authors would like to thank Jos? Humberto Chaves, from the Brazilian Forest Service, for the data cession. The authors also thank Ricardo Dal?Agnol da Silva, from National Institute for Spatial Research (INPE), for his important contributions to the review of this article.
Publisher Copyright:
© 2021 by the authors. Licensee MDPI, Basel, Switzerland.
PY - 2021/8/24
Y1 - 2021/8/24
N2 - The near-real-time detection of selective logging in tropical forests is essential to support actions for reducing CO
2 emissions and for monitoring timber extraction from forest concessions in tropical regions. Current operating systems rely on optical data that are constrained by persistent cloud-cover conditions in tropical regions. Synthetic aperture radar data represent an alternative to this technical constraint. This study aimed to evaluate the performance of three machine learning algorithms applied to multitemporal pairs of COSMO-SkyMed images to detect timber exploitation in a forest concession located in the Jamari National Forest, Rondônia State, Brazilian Amazon. The studied algorithms included random forest (RF), AdaBoost (AB), and multilayer perceptron artificial neural network (MLP-ANN). The geographical coordinates (latitude and longitude) of logged trees and the LiDAR point clouds before and after selective logging were used as ground truths. The best results were obtained when the MLP-ANN was applied with 50 neurons in the hidden layer, using the ReLu activation function and SGD weight optimizer, presenting 88% accuracy both for the pair of images used for training (images acquired in June and October) of the network and in the generalization test, applied on a second dataset (images acquired in January and June). This study showed that X-band SAR images processed by applying machine learning techniques can be accurately used for detecting selective logging activities in the Brazilian Amazon.
AB - The near-real-time detection of selective logging in tropical forests is essential to support actions for reducing CO
2 emissions and for monitoring timber extraction from forest concessions in tropical regions. Current operating systems rely on optical data that are constrained by persistent cloud-cover conditions in tropical regions. Synthetic aperture radar data represent an alternative to this technical constraint. This study aimed to evaluate the performance of three machine learning algorithms applied to multitemporal pairs of COSMO-SkyMed images to detect timber exploitation in a forest concession located in the Jamari National Forest, Rondônia State, Brazilian Amazon. The studied algorithms included random forest (RF), AdaBoost (AB), and multilayer perceptron artificial neural network (MLP-ANN). The geographical coordinates (latitude and longitude) of logged trees and the LiDAR point clouds before and after selective logging were used as ground truths. The best results were obtained when the MLP-ANN was applied with 50 neurons in the hidden layer, using the ReLu activation function and SGD weight optimizer, presenting 88% accuracy both for the pair of images used for training (images acquired in June and October) of the network and in the generalization test, applied on a second dataset (images acquired in January and June). This study showed that X-band SAR images processed by applying machine learning techniques can be accurately used for detecting selective logging activities in the Brazilian Amazon.
KW - AdaBoost
KW - Machine learning
KW - Multilayer perceptron
KW - Random forest
KW - Synthetic aperture radar
UR - https://doi.org/10.3390/rs13173341
U2 - 10.3390/rs13173341
DO - 10.3390/rs13173341
M3 - Article
SN - 2072-4292
VL - 13
JO - Remote Sensing
JF - Remote Sensing
IS - 17
M1 - 3341
ER -