Re-using models trained on a specific image acquisition to classify landcover in another image is no easy task. Illumination effects, specific angular configurations, abrupt and simple seasonal changes make that the spectra observed, even though representing the same kind of surface, drift in a way that prevents a non-adapted model to perform well. In this paper we propose a relative normalization technique to perform domain adaptation, i.e. to make the data distribution in the images more similar before classification. We study optimal transport as a way to match the image-specific distributions and propose two regularization schemes, one unsupervised and one semi-supervised, to obtain more robust and semantic matchings. Code is available ...
Domain adaptation techniques in transfer learning try to reduce the amount of training data required...
In this paper, we tackle the problem of reducing discrepancies between multiple domains, i.e. multi-...
International audienceIn this paper, we tackle the problem of reducing discrepancies between multipl...
Re-using models trained on a specific image acquisition to classify landcover in another image is no...
Re-using models trained on a specific image acqui- sition to classify landcover in another image is ...
Nowadays, an ever increasing number of multi-temporal images is available, giving the possibility of...
This paper addresses the problem of land-cover map updating by classification of multitemporal remot...
Among the types of remote sensing acquisitions, optical images are certainly one of the most widely ...
This paper proposes a novel change-detection-driven transfer learning (TL) approach to update land-c...
We propose a novel coclustering-based domainadaptation algorithm for simultaneously generating class...
International audienceWe present a new and original method to solve the domain adaptation problem us...
International audienceAccurate estimates of poplar plantations area and their distribution are not a...
Domain adaptation from one data space (or domain) to another is one of the most challenging tasks of...
The automated interpretation of aerial image data is a task with increasing significance for several...
International audienceWhile popular solutions exist for land cover mapping, they become intractable ...
Domain adaptation techniques in transfer learning try to reduce the amount of training data required...
In this paper, we tackle the problem of reducing discrepancies between multiple domains, i.e. multi-...
International audienceIn this paper, we tackle the problem of reducing discrepancies between multipl...
Re-using models trained on a specific image acquisition to classify landcover in another image is no...
Re-using models trained on a specific image acqui- sition to classify landcover in another image is ...
Nowadays, an ever increasing number of multi-temporal images is available, giving the possibility of...
This paper addresses the problem of land-cover map updating by classification of multitemporal remot...
Among the types of remote sensing acquisitions, optical images are certainly one of the most widely ...
This paper proposes a novel change-detection-driven transfer learning (TL) approach to update land-c...
We propose a novel coclustering-based domainadaptation algorithm for simultaneously generating class...
International audienceWe present a new and original method to solve the domain adaptation problem us...
International audienceAccurate estimates of poplar plantations area and their distribution are not a...
Domain adaptation from one data space (or domain) to another is one of the most challenging tasks of...
The automated interpretation of aerial image data is a task with increasing significance for several...
International audienceWhile popular solutions exist for land cover mapping, they become intractable ...
Domain adaptation techniques in transfer learning try to reduce the amount of training data required...
In this paper, we tackle the problem of reducing discrepancies between multiple domains, i.e. multi-...
International audienceIn this paper, we tackle the problem of reducing discrepancies between multipl...