Rapid and accurate extraction of water bodies from high-spatial-resolution remote sensing images is of great value for water resource management, water quality monitoring and natural disaster emergency response. For traditional water body extraction methods, it is difficult to select image texture and features, the shadows of buildings and other ground objects are in the same spectrum as water bodies, the existing deep convolutional neural network is difficult to train, the consumption of computing resources is large, and the methods cannot meet real-time requirements. In this paper, a water body extraction method based on lightweight MobileNetV2 is proposed and applied to multisensor high-resolution remote sensing images, such as GF-2, Wor...
Water bodies on the Earth’s surface are an important part of the hydrological cycle. The water resou...
Automated water body detection from satellite imagery is a fundamental stage for urban hydrological ...
A Learning Vector Quantization (LVQ) neural network was used to extract water bodies from Landsat 4 ...
Obtaining water body images quickly and reliably is important to guide human production activities a...
This paper studies the use of the Fully Convolutional Networks (FCN) model in the extraction of wate...
This study evaluates the performance of convolutional neural networks for semantic segmentation of w...
Deep learning techniques became crucial in analyzing satellite images for various remote sensing app...
<p> Extracting water bodies from remotely sensed imagery is an important procedure for many water r...
The tidal flat is long and narrow area along rivers and coasts with high sediment content, so there ...
Accurate information on urban surface water is important for assessing the role it plays in urban ec...
Accurate information on urban surface water is important for assessing the role it plays in urban ec...
Monitoring water bodies from remote sensing data is certainly an essential task to supervise the ac...
Extracting water bodies is an important task in remote sensing imagery (RSI) interpretation. Deep co...
Surface water mapping is essential for monitoring climate change, water resources, ecosystem service...
Automated water body detection from satellite imagery is a fundamental stage for urban hydrological ...
Water bodies on the Earth’s surface are an important part of the hydrological cycle. The water resou...
Automated water body detection from satellite imagery is a fundamental stage for urban hydrological ...
A Learning Vector Quantization (LVQ) neural network was used to extract water bodies from Landsat 4 ...
Obtaining water body images quickly and reliably is important to guide human production activities a...
This paper studies the use of the Fully Convolutional Networks (FCN) model in the extraction of wate...
This study evaluates the performance of convolutional neural networks for semantic segmentation of w...
Deep learning techniques became crucial in analyzing satellite images for various remote sensing app...
<p> Extracting water bodies from remotely sensed imagery is an important procedure for many water r...
The tidal flat is long and narrow area along rivers and coasts with high sediment content, so there ...
Accurate information on urban surface water is important for assessing the role it plays in urban ec...
Accurate information on urban surface water is important for assessing the role it plays in urban ec...
Monitoring water bodies from remote sensing data is certainly an essential task to supervise the ac...
Extracting water bodies is an important task in remote sensing imagery (RSI) interpretation. Deep co...
Surface water mapping is essential for monitoring climate change, water resources, ecosystem service...
Automated water body detection from satellite imagery is a fundamental stage for urban hydrological ...
Water bodies on the Earth’s surface are an important part of the hydrological cycle. The water resou...
Automated water body detection from satellite imagery is a fundamental stage for urban hydrological ...
A Learning Vector Quantization (LVQ) neural network was used to extract water bodies from Landsat 4 ...