Vector datasets of small watercourses, such as rivulets, streams, and ditches, are important for many visualization and analysis use cases. Mapping small watercourses with traditional methods is laborious and costly. Convolutional neural networks (CNNs) are state-of-the-art computer vision methods that have been shown to be effective for extracting geospatial features, including small watercourses, from LiDAR point clouds, digital elevation models (DEMs), and aerial images. However, the cause of the false predictions by machine-learning models is often not thoroughly explored, and thus the impact of the results on the process of producing accurate datasets is not well understood. We digitized a highly accurate and complete dataset of small ...
Rivers are among the world’s most threatened ecosystems. Enabled by the rapid development of drone t...
Machine learning has been employed successfully as a tool virtually in every scientific and technolo...
The last decade has seen great advances within the field of artificial intelligence. One of the most...
Deep learning methods for semantic segmentation have shown great potential in automating mapping of ...
Identifying low-head dams (LHDs) and creating an inventory is a priority, as fatalities continue to ...
High-resolution (HR) digital elevation models (DEMs), such as those at resolutions of 1 and 3 meters...
High-Resolution Digital Elevation Models (HRDEMs) have been used to delineate fine-scale hydrographi...
Natural flood hazards resulted in more than 500,000 reported deaths during the last 20 years. This n...
Mapping of surficial geology is an important requirement for broadening the geoscience database of n...
Geomorphological maps provide information on the relief, genesis and shape of the earth's surface an...
Convolutional neural networks (CNNs) are becoming an increasingly popular approach for classificatio...
Development of the new methods of surface water observation is crucial in the perspective of increas...
Data-driven and machine learning models have recently received increasing interest to resolve the co...
This dataset contains: - The networks weights (weights.zip) that were obtained and used in our pap...
Mapping landslides using automated methods is a challenging task, which is still largely done using ...
Rivers are among the world’s most threatened ecosystems. Enabled by the rapid development of drone t...
Machine learning has been employed successfully as a tool virtually in every scientific and technolo...
The last decade has seen great advances within the field of artificial intelligence. One of the most...
Deep learning methods for semantic segmentation have shown great potential in automating mapping of ...
Identifying low-head dams (LHDs) and creating an inventory is a priority, as fatalities continue to ...
High-resolution (HR) digital elevation models (DEMs), such as those at resolutions of 1 and 3 meters...
High-Resolution Digital Elevation Models (HRDEMs) have been used to delineate fine-scale hydrographi...
Natural flood hazards resulted in more than 500,000 reported deaths during the last 20 years. This n...
Mapping of surficial geology is an important requirement for broadening the geoscience database of n...
Geomorphological maps provide information on the relief, genesis and shape of the earth's surface an...
Convolutional neural networks (CNNs) are becoming an increasingly popular approach for classificatio...
Development of the new methods of surface water observation is crucial in the perspective of increas...
Data-driven and machine learning models have recently received increasing interest to resolve the co...
This dataset contains: - The networks weights (weights.zip) that were obtained and used in our pap...
Mapping landslides using automated methods is a challenging task, which is still largely done using ...
Rivers are among the world’s most threatened ecosystems. Enabled by the rapid development of drone t...
Machine learning has been employed successfully as a tool virtually in every scientific and technolo...
The last decade has seen great advances within the field of artificial intelligence. One of the most...