The ability to categorize is a cornerstone of visual intelligence, and a key functionality for artificial, autonomous visual machines. This problem will never be solved without algorithms able to adapt and generalize across visual domains. Within the context of domain adaptation and generalization, this paper focuses on the predictive domain adaptation scenario, namely the case where no target data are available and the system has to learn to generalize from annotated source images plus unlabeled samples with associated metadata from auxiliary domains. Our contribution is the first deep architecture that tackles predictive domain adaptation, able to leverage over the information brought by the auxiliary domains through a graph. Moreover, we...
There is a growing interest in learning data representations that work well for many different types...
Images seen during test time are often not from the same distribution as images used for learning. T...
Most machine learning algorithms assume that training and test data are sampled from the same distri...
The ability to categorize is a cornerstone of visual intelligence, and a key functionality for artif...
The advent of deep convolutional networks has powered a new wave of progress in visual recognition. ...
One of the main limitations of artificial intelligence today is its inability to adapt to unforeseen...
In recent years, great advances in Domain Adaptation (DA) have been possible through deep neural net...
This book provides a survey of deep learning approaches to domain adaptation in computer vision. It ...
We pose the following question: what happens when test data not only differs from training data, but...
Current Domain Adaptation (DA) methods based on deep architectures assume that the source samples ar...
For unsupervised domain adaptation, the process of learning domain-invariant representations could b...
The number of application areas of deep neural networks for image classification is continuously gro...
Unsupervised Domain Adaptation (UDA) refers to the problem of learning a model in a target domain wh...
Recent studies have shown that recognition datasets are biased. Paying no heed to those biases, lear...
We describe an unsupervised domain adaptation framework for images by a transform to an abstract int...
There is a growing interest in learning data representations that work well for many different types...
Images seen during test time are often not from the same distribution as images used for learning. T...
Most machine learning algorithms assume that training and test data are sampled from the same distri...
The ability to categorize is a cornerstone of visual intelligence, and a key functionality for artif...
The advent of deep convolutional networks has powered a new wave of progress in visual recognition. ...
One of the main limitations of artificial intelligence today is its inability to adapt to unforeseen...
In recent years, great advances in Domain Adaptation (DA) have been possible through deep neural net...
This book provides a survey of deep learning approaches to domain adaptation in computer vision. It ...
We pose the following question: what happens when test data not only differs from training data, but...
Current Domain Adaptation (DA) methods based on deep architectures assume that the source samples ar...
For unsupervised domain adaptation, the process of learning domain-invariant representations could b...
The number of application areas of deep neural networks for image classification is continuously gro...
Unsupervised Domain Adaptation (UDA) refers to the problem of learning a model in a target domain wh...
Recent studies have shown that recognition datasets are biased. Paying no heed to those biases, lear...
We describe an unsupervised domain adaptation framework for images by a transform to an abstract int...
There is a growing interest in learning data representations that work well for many different types...
Images seen during test time are often not from the same distribution as images used for learning. T...
Most machine learning algorithms assume that training and test data are sampled from the same distri...