International audienceWe propose structured models for image labeling that take into account the dependencies among the image labels explicitly. These models are more expressive than independent label predictors, and lead to more accurate predictions. While the improvement is modest for fully-automatic image labeling, the gain is significant in an interactive scenario where a user provides the value of some of the image labels. Such an interactive scenario offers an interesting trade-off between accuracy and manual labeling effort. The structured models are used to decide which labels should be set by the user, and transfer the user input to more accurate predictions on other image labels. We also apply our models to attribute-based image c...
International audienceAttributes are an intermediate representation whose purpose is to enable param...
Unsupervised domain adaptation aims to address the problem of classifying unlabeled samples from the...
We introduce a framework for actively learning visual categories from a mixture of weakly and strong...
International audienceWe propose structured models for image labeling that take into account the dep...
International audienceWe propose structured prediction models for image labeling that explicitly tak...
In this paper we introduce Structured Local Predictors (SLP) A new formulation that considers the im...
International audienceAttributes are an intermediate representation, which enables parameter sharing...
A common obstacle preventing the rapid deployment of supervised machine learning algorithms is the l...
Powerful statistical models that can be learned efficiently from large amounts of data are currently...
The need for richer descriptions of images arises in a wide spectrum of applications ranging from im...
International audienceAttributes act as intermediate representations that enable parameter sharing b...
International audienceWe propose to solve a label ranking problem as a structured output regression ...
International audienceixel wise image labeling is an interesting and challenging problem with great ...
Unsupervised domain adaptation aims to address the problem of classifying unlabeled samples from the...
International audienceMost photo sharing sites give their users the opportunity to manually label im...
International audienceAttributes are an intermediate representation whose purpose is to enable param...
Unsupervised domain adaptation aims to address the problem of classifying unlabeled samples from the...
We introduce a framework for actively learning visual categories from a mixture of weakly and strong...
International audienceWe propose structured models for image labeling that take into account the dep...
International audienceWe propose structured prediction models for image labeling that explicitly tak...
In this paper we introduce Structured Local Predictors (SLP) A new formulation that considers the im...
International audienceAttributes are an intermediate representation, which enables parameter sharing...
A common obstacle preventing the rapid deployment of supervised machine learning algorithms is the l...
Powerful statistical models that can be learned efficiently from large amounts of data are currently...
The need for richer descriptions of images arises in a wide spectrum of applications ranging from im...
International audienceAttributes act as intermediate representations that enable parameter sharing b...
International audienceWe propose to solve a label ranking problem as a structured output regression ...
International audienceixel wise image labeling is an interesting and challenging problem with great ...
Unsupervised domain adaptation aims to address the problem of classifying unlabeled samples from the...
International audienceMost photo sharing sites give their users the opportunity to manually label im...
International audienceAttributes are an intermediate representation whose purpose is to enable param...
Unsupervised domain adaptation aims to address the problem of classifying unlabeled samples from the...
We introduce a framework for actively learning visual categories from a mixture of weakly and strong...