We present the results from evaluating various Convolutional Neural Network (CNN) models to compare their usefulness for forest type classification. Machine Learning based on CNNs is known to be suitable to identify relevant patterns in remote sensing imagery. With the availability of free data sets (e.g. the Copernicus Sentinel-2 data), Machine Learning can be utilized for forest monitoring, which provides useful and timely information helping to measure and counteract the effects of climate change. To this end, we performed a case study with publicly available data from the federal state of North Rhine-Westphalia in Germany. We created an automated pipeline to preprocess and filter this data and trained the CNN models UNet, PSPNet, SegNet...
This study compares the level of uncertainty of a Back-Propagation Perceptron Network and the Maximu...
Mountain forests are exposed to extreme conditions (e.g., strong winds and intense solar radiation) ...
Large-scale forest composition mapping and change monitoring are essential for regional and national...
We present the results from evaluating various Convolutional Neural Network (CNN) models to compare ...
Land cover mapping from satellite images has progressed from visual and statistical approaches to Ra...
The accurate classification of forest types is critical for sustainable forest management. In this s...
Efficient and accurate vegetation type extraction from remote sensing images can provide decision ma...
Forest detection in remote sensing data is essential for important applications such as detection of...
Woody vegetation is a common indicator for the health of biomes because they are an important factor...
In the remote sensing of forests, point cloud data from airborne laser scanning contains high-value ...
The classification of individual tree species (ITS) is beneficial to forest management and protectio...
This study has developed a CNN model applied to classify the eight classes of land cover through sat...
Forest is one of the most important natural resource that correlate to biodiversity, climate, geoche...
Abstract Background Classifying and mapping vegetation are crucial tasks in environmental science an...
In this study, we automate tree species classification and mapping using field-based training data, ...
This study compares the level of uncertainty of a Back-Propagation Perceptron Network and the Maximu...
Mountain forests are exposed to extreme conditions (e.g., strong winds and intense solar radiation) ...
Large-scale forest composition mapping and change monitoring are essential for regional and national...
We present the results from evaluating various Convolutional Neural Network (CNN) models to compare ...
Land cover mapping from satellite images has progressed from visual and statistical approaches to Ra...
The accurate classification of forest types is critical for sustainable forest management. In this s...
Efficient and accurate vegetation type extraction from remote sensing images can provide decision ma...
Forest detection in remote sensing data is essential for important applications such as detection of...
Woody vegetation is a common indicator for the health of biomes because they are an important factor...
In the remote sensing of forests, point cloud data from airborne laser scanning contains high-value ...
The classification of individual tree species (ITS) is beneficial to forest management and protectio...
This study has developed a CNN model applied to classify the eight classes of land cover through sat...
Forest is one of the most important natural resource that correlate to biodiversity, climate, geoche...
Abstract Background Classifying and mapping vegetation are crucial tasks in environmental science an...
In this study, we automate tree species classification and mapping using field-based training data, ...
This study compares the level of uncertainty of a Back-Propagation Perceptron Network and the Maximu...
Mountain forests are exposed to extreme conditions (e.g., strong winds and intense solar radiation) ...
Large-scale forest composition mapping and change monitoring are essential for regional and national...