In recent years, the resolution of remote sensing images, especially aerial images, has become higher and higher, and the spans of time and space have become larger and larger. The phenomenon in which one class of objects can produce several kinds of spectra may lead to more errors in detection methods that are based on spectra. For different convolution methods, downsampling can provide some advanced information, which will lead to rough detail extraction; too deep of a network will greatly increase the complexity and calculation time of a model. To solve these problems, a multifunctional feature extraction model called MSNet (multifunctional feature-sharing network) is proposed, which is improved on two levels: depth feature extraction an...
As a basic research topic in the field of remote sensing, semantic segmentation of high-resolution a...
Abstract In recent years, remote sensing images of various types have found widespread applications ...
In recent years, with the development of deep learning in remotely sensed big data, semantic segment...
The Deeplabv3+ network for semantic segmentation of remote sensing images has drawbacks like inaccur...
In most practical applications of remote sensing images, high-resolution multispectral images are ne...
As remote sensing images have complex backgrounds and varying object sizes, their semantic segmentat...
Applying deep-learning methods, especially fully convolutional networks (FCNs), has become a popular...
Because clouds and snow block the underlying surface and interfere with the information extracted fr...
Land cover classification is a multiclass segmentation task to classify each pixel into a certain na...
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...
Although the Convolutional Neural Network (CNN) has shown great potential for land cover classificat...
Semantic segmentation of remote sensing images is an important technique for spatial analysis and ge...
One of the most important tasks in remote sensing image analysis is remote sensing image Change Dete...
Semantic segmentation of remote sensing images plays an important role in a wide range of applicatio...
As a basic research topic in the field of remote sensing, semantic segmentation of high-resolution a...
Abstract In recent years, remote sensing images of various types have found widespread applications ...
In recent years, with the development of deep learning in remotely sensed big data, semantic segment...
The Deeplabv3+ network for semantic segmentation of remote sensing images has drawbacks like inaccur...
In most practical applications of remote sensing images, high-resolution multispectral images are ne...
As remote sensing images have complex backgrounds and varying object sizes, their semantic segmentat...
Applying deep-learning methods, especially fully convolutional networks (FCNs), has become a popular...
Because clouds and snow block the underlying surface and interfere with the information extracted fr...
Land cover classification is a multiclass segmentation task to classify each pixel into a certain na...
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...
Although the Convolutional Neural Network (CNN) has shown great potential for land cover classificat...
Semantic segmentation of remote sensing images is an important technique for spatial analysis and ge...
One of the most important tasks in remote sensing image analysis is remote sensing image Change Dete...
Semantic segmentation of remote sensing images plays an important role in a wide range of applicatio...
As a basic research topic in the field of remote sensing, semantic segmentation of high-resolution a...
Abstract In recent years, remote sensing images of various types have found widespread applications ...
In recent years, with the development of deep learning in remotely sensed big data, semantic segment...