We present a novel technique for addressing domain adaptation problems in the classification of remote sensing images with active learning. Domain adaptation is the important problem of adapting a supervised classifier trained on a given image (source domain) to the classification of another similar (but not identical) image (target domain) acquired on a different area, or on the same area at a different time. The main idea of the proposed approach is to iteratively labeling and adding to the training set the minimum number of the most informative samples from target domain, while removing the source-domain samples that does not fit with the distributions of the classes in the target domain. In this way, the classification system exploits a...
In remote sensing image classification, it is commonly assumed that the distribution of the classes ...
This paper presents an analysis of active learning techniques for the classification of remote sensi...
This paper proposes a procedure aimed at efficiently adapting a classifier trained on a source image...
We present a novel technique for addressing domain adaptation problems in the classification of remo...
In this paper, we propose two active learning algorithms for semiautomatic definition of training sa...
In this letter, we show how active learning can be particularly promising for classifying remote sen...
In the remote sensing field, classification of images at large scale represents a very important pro...
The validity of training samples collected in field campaigns is crucial for the success of land use...
Active learning process represents an interesting solution to the problem of training sample collect...
Member, IEEE Active learning, which has a strong impact on processing data prior to the classificati...
Active learning, which has a strong impact on processing data prior to the classification phase, is ...
Defining an efficient training set is one of the most delicate phases for the success of remote sens...
Defining an efficient training set is one of the most delicate phases for the success of remote sens...
Abstract — The success of remote sensing image classification techniques is based on defining an eff...
This paper presents a comparative study in order to analyze active learning (AL) and semi-supervised...
In remote sensing image classification, it is commonly assumed that the distribution of the classes ...
This paper presents an analysis of active learning techniques for the classification of remote sensi...
This paper proposes a procedure aimed at efficiently adapting a classifier trained on a source image...
We present a novel technique for addressing domain adaptation problems in the classification of remo...
In this paper, we propose two active learning algorithms for semiautomatic definition of training sa...
In this letter, we show how active learning can be particularly promising for classifying remote sen...
In the remote sensing field, classification of images at large scale represents a very important pro...
The validity of training samples collected in field campaigns is crucial for the success of land use...
Active learning process represents an interesting solution to the problem of training sample collect...
Member, IEEE Active learning, which has a strong impact on processing data prior to the classificati...
Active learning, which has a strong impact on processing data prior to the classification phase, is ...
Defining an efficient training set is one of the most delicate phases for the success of remote sens...
Defining an efficient training set is one of the most delicate phases for the success of remote sens...
Abstract — The success of remote sensing image classification techniques is based on defining an eff...
This paper presents a comparative study in order to analyze active learning (AL) and semi-supervised...
In remote sensing image classification, it is commonly assumed that the distribution of the classes ...
This paper presents an analysis of active learning techniques for the classification of remote sensi...
This paper proposes a procedure aimed at efficiently adapting a classifier trained on a source image...