Using deep learning semantic segmentation for land use extraction is the most challenging problem in medium spatial resolution imagery. This is because of the deep convolution layer and multiple levels of deep steps of the baseline network, which can cause a degradation problem in small land use features. In this paper, a deep learning semantic segmentation algorithm which comprises an adjustment network architecture (LoopNet) and land use dataset is proposed for automatic land use classification using Landsat 8 imagery. The experimental results illustrate that deep learning semantic segmentation using the baseline network (SegNet, U-Net) outperforms pixel-based machine learning algorithms (MLE, SVM, RF) for land use classification. Further...
Efficiently implementing remote sensing image classification with high spatial resolution imagery ca...
International audienceThis work investigates the use of deep fully convolutional neural networks (DF...
In recent years, a lot of remote sensing problems benefited from the improvements made in deep learn...
Land-use mapping (LUM) using high-spatial resolution remote sensing images (HSR-RSIs) is a challengi...
The paper describes the process of training a convolutional neural network to segment land into its ...
Color poster with text, images, diagrams and maps.Deep Learning tools have become very efficient in ...
Land cover semantic segmentation is an important technique in land. It is very practical in land res...
Automatic mapping of land cover in remote sensing data plays an increasingly significant role in sev...
Efficiently implementing remote sensing image classification with high spatial resolution imagery ca...
Deep learning semantic segmentation algorithms have provided improved frameworks for the automated p...
Semantic segmentation consists of the generation of a categorical map, given an image in which each ...
The Deeplabv3+ network for semantic segmentation of remote sensing images has drawbacks like inaccur...
In this paper we address the challenge of land cover classification for satellite images via Deep Le...
In recent years, with the development of deep learning in remotely sensed big data, semantic segment...
Accurate acquisition of cultivated land area and location information is of great significance to ag...
Efficiently implementing remote sensing image classification with high spatial resolution imagery ca...
International audienceThis work investigates the use of deep fully convolutional neural networks (DF...
In recent years, a lot of remote sensing problems benefited from the improvements made in deep learn...
Land-use mapping (LUM) using high-spatial resolution remote sensing images (HSR-RSIs) is a challengi...
The paper describes the process of training a convolutional neural network to segment land into its ...
Color poster with text, images, diagrams and maps.Deep Learning tools have become very efficient in ...
Land cover semantic segmentation is an important technique in land. It is very practical in land res...
Automatic mapping of land cover in remote sensing data plays an increasingly significant role in sev...
Efficiently implementing remote sensing image classification with high spatial resolution imagery ca...
Deep learning semantic segmentation algorithms have provided improved frameworks for the automated p...
Semantic segmentation consists of the generation of a categorical map, given an image in which each ...
The Deeplabv3+ network for semantic segmentation of remote sensing images has drawbacks like inaccur...
In this paper we address the challenge of land cover classification for satellite images via Deep Le...
In recent years, with the development of deep learning in remotely sensed big data, semantic segment...
Accurate acquisition of cultivated land area and location information is of great significance to ag...
Efficiently implementing remote sensing image classification with high spatial resolution imagery ca...
International audienceThis work investigates the use of deep fully convolutional neural networks (DF...
In recent years, a lot of remote sensing problems benefited from the improvements made in deep learn...