Hyperspectral and multispectral imaging technologies for remote sensing have been enjoying an enormous deal of fame in the modern technology era, owing to the advantage of holding rich geographical information, in comparison with RGB or greyscale imagining technologies. The remotely sensed data have been employed in various tasks, such as monitoring Earth’s surface, environmental risk analysis, and forest monitoring and modeling, etc. However, collecting, processing, and utilizing this data for predictive modeling remains an arduous task in modern-day machine learning due to the factors such as the complex and imbalanced nature of HSI, variable nature of spectral and spatial features, and abundant noise in spectral channels. In the AIR...
The classification of tree species can significantly benefit from high spatial and spectral informat...
Very high resolution remote sensing data of forests, where individual tree crowns are separable, con...
This study analyzed highly correlated, feature-rich datasets from hyperspectral remote sensing data ...
With three-quarters of the land surface area is covered by forests, Finland is the most heavily-fore...
Abstract Background Remote sensing techniques and data are becoming increasingly popular in forest m...
In this study, we automate tree species classification and mapping using field-based training data, ...
Forests affect the environment and ecosystems in multiple ways. Hence, understanding the forest proc...
For several years, FORAN Remote Sensing in Linköping has been using pulseintense laser scannings tog...
The spectral and spatial resolutions of modern optical Earth observation data are continuously incre...
Digital Publication of the training data polygons and hyperspectral imagery used in the manuscript "...
The prediction of forest biophysical parameters is an important task in remote sensing for understan...
The classification of individual tree species (ITS) is beneficial to forest management and protectio...
High-spatial resolution measurements of vegetation structure are needed for improving understanding ...
The use of light detection and ranging (LiDAR) techniques for recording and analyzing tree and fores...
Interest in drone solutions in forestry applications is growing. Using drones, datasets can be captu...
The classification of tree species can significantly benefit from high spatial and spectral informat...
Very high resolution remote sensing data of forests, where individual tree crowns are separable, con...
This study analyzed highly correlated, feature-rich datasets from hyperspectral remote sensing data ...
With three-quarters of the land surface area is covered by forests, Finland is the most heavily-fore...
Abstract Background Remote sensing techniques and data are becoming increasingly popular in forest m...
In this study, we automate tree species classification and mapping using field-based training data, ...
Forests affect the environment and ecosystems in multiple ways. Hence, understanding the forest proc...
For several years, FORAN Remote Sensing in Linköping has been using pulseintense laser scannings tog...
The spectral and spatial resolutions of modern optical Earth observation data are continuously incre...
Digital Publication of the training data polygons and hyperspectral imagery used in the manuscript "...
The prediction of forest biophysical parameters is an important task in remote sensing for understan...
The classification of individual tree species (ITS) is beneficial to forest management and protectio...
High-spatial resolution measurements of vegetation structure are needed for improving understanding ...
The use of light detection and ranging (LiDAR) techniques for recording and analyzing tree and fores...
Interest in drone solutions in forestry applications is growing. Using drones, datasets can be captu...
The classification of tree species can significantly benefit from high spatial and spectral informat...
Very high resolution remote sensing data of forests, where individual tree crowns are separable, con...
This study analyzed highly correlated, feature-rich datasets from hyperspectral remote sensing data ...