International audienceSemantic segmentation on satellite images is used to automatically detect and classify objects of interest over very large areas. Training a neural network for this task generally requires a lot of human-made ground truth classification masks for each object class of interest. We aim to reduce the time spent by humans in the whole process of image segmentation by learning generic features in an unsupervised manner. Those features are then used to leverage sparse human annotations to compute a dense segmentation of the image. This is achieved by essentially labeling groups of semantically similar pixels at once, instead of labeling each pixel almost individually using strokes. While we apply this method to satellite ima...
Scene understanding of satellite and aerial images is a pivotal task in various remote sensing (RS) ...
Scene understanding of satellite and aerial images is a pivotal task in various remote sensing (RS) ...
International audienceDeep learning architectures have received much attention in recent years demon...
In our galaxy, there are many advanced satellite. Large distance image can be captured with very hig...
This work addresses the problem of training a deep neural network for satellite image segmentation s...
Translating satellite imagery into maps requires intensive effort and time, especially leading to in...
International audienceThe domain adaptation of satellite images has recently gained an increasing at...
This is the final version. Available from SPIE via the DOI in this recordSemantic segmentation is on...
In this paper, we describe a segmentation technique that integrates traditional image processing alg...
In order to reach the goal of reliably solving Earth monitoring tasks, automated and efficient machi...
International audienceWhen one wants to train a neural network to perform semantic segmentation, cre...
Recently, computer vision has been promoted by deep learning techniques significantly, where supervi...
©1999 IEEE. Personal use of this material is permitted. However, permission to reprint/republish thi...
The recent advances of deep learning in computer vision field have revolutionized digital image proc...
Due to the large improvements that deep learning based models have brought to a variety of tasks, th...
Scene understanding of satellite and aerial images is a pivotal task in various remote sensing (RS) ...
Scene understanding of satellite and aerial images is a pivotal task in various remote sensing (RS) ...
International audienceDeep learning architectures have received much attention in recent years demon...
In our galaxy, there are many advanced satellite. Large distance image can be captured with very hig...
This work addresses the problem of training a deep neural network for satellite image segmentation s...
Translating satellite imagery into maps requires intensive effort and time, especially leading to in...
International audienceThe domain adaptation of satellite images has recently gained an increasing at...
This is the final version. Available from SPIE via the DOI in this recordSemantic segmentation is on...
In this paper, we describe a segmentation technique that integrates traditional image processing alg...
In order to reach the goal of reliably solving Earth monitoring tasks, automated and efficient machi...
International audienceWhen one wants to train a neural network to perform semantic segmentation, cre...
Recently, computer vision has been promoted by deep learning techniques significantly, where supervi...
©1999 IEEE. Personal use of this material is permitted. However, permission to reprint/republish thi...
The recent advances of deep learning in computer vision field have revolutionized digital image proc...
Due to the large improvements that deep learning based models have brought to a variety of tasks, th...
Scene understanding of satellite and aerial images is a pivotal task in various remote sensing (RS) ...
Scene understanding of satellite and aerial images is a pivotal task in various remote sensing (RS) ...
International audienceDeep learning architectures have received much attention in recent years demon...