When segmenting massive amounts of remote sensing images collected from different satellites or geographic locations (cities), the pre-trained deep learning models cannot always output satisfactory predictions. To deal with this issue, domain adaptation has been widely utilized to enhance the generalization abilities of the segmentation models. Most of the existing domain adaptation methods, which based on image-to-image translation, firstly transfer the source images to the pseudo-target images, adapt the classifier from the source domain to the target domain. However, these unidirectional methods suffer from the following two limitations: (1) they do not consider the inverse procedure and they cannot fully take advantage of the informatio...
In the recent years, remote sensing has faced a huge evolution. The constantly growing availability ...
Semantic segmentation for remote sensing images (RSI) is critical for the Earth monitoring system. H...
Despite the significant advances noted in semantic segmentation of aerial imagery, a considerable li...
Domain adaptation is one of the prominent strategies for handling both the scarcity of pixel-level g...
With the development of deep learning, the performance of image semantic segmentation in remote sens...
Semantic segmentation is a critical problem for many remote sensing (RS) image applications. Benefit...
International audienceThe domain adaptation of satellite images has recently gained an increasing at...
Benefiting from the development of deep learning, researchers have made significant progress and ach...
Bidirectional in recent years, Deep learning performance in natural scene image processing has impro...
The performance of a semantic segmentation model for remote sensing (RS) images pretrained on an ann...
Semantic segmentation is an important analysis task for the investigation of aerial imagery. Recentl...
Segmenting aerial images is of great potential in surveillance and scene understanding of urban area...
The recent advances of deep learning in computer vision field have revolutionized digital image proc...
Existing deep learning-based remote sensing images semantic segmentation methods require large-scale...
Although unsupervised domain adaptation (UDA) has been extensively studied in remote sensing image s...
In the recent years, remote sensing has faced a huge evolution. The constantly growing availability ...
Semantic segmentation for remote sensing images (RSI) is critical for the Earth monitoring system. H...
Despite the significant advances noted in semantic segmentation of aerial imagery, a considerable li...
Domain adaptation is one of the prominent strategies for handling both the scarcity of pixel-level g...
With the development of deep learning, the performance of image semantic segmentation in remote sens...
Semantic segmentation is a critical problem for many remote sensing (RS) image applications. Benefit...
International audienceThe domain adaptation of satellite images has recently gained an increasing at...
Benefiting from the development of deep learning, researchers have made significant progress and ach...
Bidirectional in recent years, Deep learning performance in natural scene image processing has impro...
The performance of a semantic segmentation model for remote sensing (RS) images pretrained on an ann...
Semantic segmentation is an important analysis task for the investigation of aerial imagery. Recentl...
Segmenting aerial images is of great potential in surveillance and scene understanding of urban area...
The recent advances of deep learning in computer vision field have revolutionized digital image proc...
Existing deep learning-based remote sensing images semantic segmentation methods require large-scale...
Although unsupervised domain adaptation (UDA) has been extensively studied in remote sensing image s...
In the recent years, remote sensing has faced a huge evolution. The constantly growing availability ...
Semantic segmentation for remote sensing images (RSI) is critical for the Earth monitoring system. H...
Despite the significant advances noted in semantic segmentation of aerial imagery, a considerable li...