Traditional machine learning algorithms assume training and test datasets are generated from the same underlying distribution, which is not true for most real-world datasets. As a result, a model trained on the training dataset fails to produce good classification accuracy on the test dataset. One way to mitigate this problem is to use domain adaptation techniques; these techniques build a new model on the unlabeled test dataset (target dataset) by transferring information from a related but labeled training dataset, (source dataset) even when their underlying distributions are different. One other important issue is that in domain adaptation, there is no allowance for obtaining class labels on the test dataset during the training phase. Th...
We propose a procedure that efficiently adapts a classifier trained on a source image to a target im...
We present a novel technique for addressing domain adaptation problems in the classification of remo...
International audienceAll machine learning algorithms that correspond to supervised and semi-supervi...
Traditional supervised machine learning algorithms are expected to have access to a large corpus of ...
Unsupervised domain adaptation has recently emerged as an effective paradigm for generalizing deep n...
In many settings in practice it is expensive to obtain labeled data while unlabeled data is abundant...
This paper proposes a procedure aimed at efficiently adapting a classifier trained on a source image...
We consider the problem of active domain adaptation (ADA) to unlabeled target data, of which subset ...
Object classification by learning from data is a vast area of statistics and machine learning. Withi...
© 2013 IEEE. How can we find a general way to choose the most suitable samples for training a classi...
In this paper, we suggest a novel data-driven approach to active learning (AL). The key idea is to t...
In remote sensing image classification, it is commonly assumed that the distribution of the classes ...
In remote sensing image classification, it is commonly assumed that the distribution of the classes ...
Active learning refers to the settings in which a machine learning algorithm (learner) is able to s...
Active learning refers to the settings in which a machine learning algorithm (learner) is able to s...
We propose a procedure that efficiently adapts a classifier trained on a source image to a target im...
We present a novel technique for addressing domain adaptation problems in the classification of remo...
International audienceAll machine learning algorithms that correspond to supervised and semi-supervi...
Traditional supervised machine learning algorithms are expected to have access to a large corpus of ...
Unsupervised domain adaptation has recently emerged as an effective paradigm for generalizing deep n...
In many settings in practice it is expensive to obtain labeled data while unlabeled data is abundant...
This paper proposes a procedure aimed at efficiently adapting a classifier trained on a source image...
We consider the problem of active domain adaptation (ADA) to unlabeled target data, of which subset ...
Object classification by learning from data is a vast area of statistics and machine learning. Withi...
© 2013 IEEE. How can we find a general way to choose the most suitable samples for training a classi...
In this paper, we suggest a novel data-driven approach to active learning (AL). The key idea is to t...
In remote sensing image classification, it is commonly assumed that the distribution of the classes ...
In remote sensing image classification, it is commonly assumed that the distribution of the classes ...
Active learning refers to the settings in which a machine learning algorithm (learner) is able to s...
Active learning refers to the settings in which a machine learning algorithm (learner) is able to s...
We propose a procedure that efficiently adapts a classifier trained on a source image to a target im...
We present a novel technique for addressing domain adaptation problems in the classification of remo...
International audienceAll machine learning algorithms that correspond to supervised and semi-supervi...