This paper addresses the problem of land-cover classification of remotely sensed image pairs in the context of domain adaptation. The primary assumption of the proposed method is that the training data are available only for one of the images (source domain), whereas for the other image (target domain), no labeled data are available. No assumption is made here on the number and the statistical properties of the land-cover classes that, in turn, may vary from one domain to the other. The only constraint is that at least one land-cover class is shared by the two domains. Under these assumptions, a novel graph theoretic cross-domain cluster mapping algorithm is proposed to detect efficiently the set of land-cover classes which are common to bo...
Nowadays, an ever increasing number of multi-temporal images is available, giving the possibility of...
Among the types of remote sensing acquisitions, optical images are certainly one of the most widely ...
Adapting a model to changes in the data distribution is a relevant problem in machine learning and p...
This paper addresses the problem of land-cover classification of remotely sensed image pairs in the ...
We propose a novel coclustering-based domainadaptation algorithm for simultaneously generating class...
This paper addresses the problem of land-cover map updating by classification of multitemporal remot...
We present an adaptation algorithm focused on the description of the data changes under different ac...
In this paper, we study the problem of feature extraction for knowledge transfer between multiple re...
In this paper, we study the problem of feature extraction for knowledge transfer between multiple re...
This paper addresses the problem of unsupervised land-cover classification of multi-spectral remotel...
This paper addresses the problem of unsupervised land-cover classification of multi-spectral remotel...
This contribution studies an approach based on dictionary learning which enables the alignment of th...
We present a novel technique for addressing domain adaptation problems in the classification of remo...
In this contribution, we explore the feature extraction framework to ease the knowledge transfer in ...
This paper proposes a novel change-detection-driven transfer learning (TL) approach to update land-c...
Nowadays, an ever increasing number of multi-temporal images is available, giving the possibility of...
Among the types of remote sensing acquisitions, optical images are certainly one of the most widely ...
Adapting a model to changes in the data distribution is a relevant problem in machine learning and p...
This paper addresses the problem of land-cover classification of remotely sensed image pairs in the ...
We propose a novel coclustering-based domainadaptation algorithm for simultaneously generating class...
This paper addresses the problem of land-cover map updating by classification of multitemporal remot...
We present an adaptation algorithm focused on the description of the data changes under different ac...
In this paper, we study the problem of feature extraction for knowledge transfer between multiple re...
In this paper, we study the problem of feature extraction for knowledge transfer between multiple re...
This paper addresses the problem of unsupervised land-cover classification of multi-spectral remotel...
This paper addresses the problem of unsupervised land-cover classification of multi-spectral remotel...
This contribution studies an approach based on dictionary learning which enables the alignment of th...
We present a novel technique for addressing domain adaptation problems in the classification of remo...
In this contribution, we explore the feature extraction framework to ease the knowledge transfer in ...
This paper proposes a novel change-detection-driven transfer learning (TL) approach to update land-c...
Nowadays, an ever increasing number of multi-temporal images is available, giving the possibility of...
Among the types of remote sensing acquisitions, optical images are certainly one of the most widely ...
Adapting a model to changes in the data distribution is a relevant problem in machine learning and p...