Climate change can increase the number of uprooted trees. Although there have been an increasing number of machine learning applications for satellite image analysis, the estimation of deracinated tree area by satellite image is not well developed. Therefore, we estimated the deracinated tree area of forests via machine-learning classification using Landsat 8 satellite images. We employed support vector machines (SVMs), random forests (RF), and convolutional neural networks (CNNs) as potential machine learning methods, and tested their performance in estimating the deracinated tree area. We collected satellite images of upright trees, deracinated trees, soil, and others (e.g., waterbodies and cities), and trained them with the training data...
Mountain forests are exposed to extreme conditions (e.g., strong winds and intense solar radiation) ...
Natural forest ecosystems are vital environmental resources that provide multiple benefits to societ...
Remote Sensing plays a critical role in forest tree species identification. Regarding the current de...
Sustainable Development Goals (SDGs) are a set of priorities the United Nations and World Bank have ...
This study has developed a CNN model applied to classify the eight classes of land cover through sat...
Forest covers about a third of terrestrial land surface, with tropical and subtropical zones being a...
The classification of individual tree species (ITS) is beneficial to forest management and protectio...
This research investigated three machine learning approaches - decision trees, random forest, and su...
Forest detection in remote sensing data is essential for important applications such as detection of...
Accurate maps of the spatial distribution of tropical tree species provide valuable insights for eco...
Deep learning (DL) has shown promising performances in various remote sensing applications as a powe...
Knowing vegetation type in an area is crucial for several applications, including ecology, land-use ...
Estimation of forest parameters using remote sensing information could streamline the forest industr...
The use of light detection and ranging (LiDAR) techniques for recording and analyzing tree and fores...
Présentation orale, juillet 2018Satellite imagery, often freely available can be used for research p...
Mountain forests are exposed to extreme conditions (e.g., strong winds and intense solar radiation) ...
Natural forest ecosystems are vital environmental resources that provide multiple benefits to societ...
Remote Sensing plays a critical role in forest tree species identification. Regarding the current de...
Sustainable Development Goals (SDGs) are a set of priorities the United Nations and World Bank have ...
This study has developed a CNN model applied to classify the eight classes of land cover through sat...
Forest covers about a third of terrestrial land surface, with tropical and subtropical zones being a...
The classification of individual tree species (ITS) is beneficial to forest management and protectio...
This research investigated three machine learning approaches - decision trees, random forest, and su...
Forest detection in remote sensing data is essential for important applications such as detection of...
Accurate maps of the spatial distribution of tropical tree species provide valuable insights for eco...
Deep learning (DL) has shown promising performances in various remote sensing applications as a powe...
Knowing vegetation type in an area is crucial for several applications, including ecology, land-use ...
Estimation of forest parameters using remote sensing information could streamline the forest industr...
The use of light detection and ranging (LiDAR) techniques for recording and analyzing tree and fores...
Présentation orale, juillet 2018Satellite imagery, often freely available can be used for research p...
Mountain forests are exposed to extreme conditions (e.g., strong winds and intense solar radiation) ...
Natural forest ecosystems are vital environmental resources that provide multiple benefits to societ...
Remote Sensing plays a critical role in forest tree species identification. Regarding the current de...