International audienceMost photo sharing sites give their users the opportunity to manually label images. The labels collected that way are usually very incomplete due to the size of the image collections: most images are not labeled according to all the categories they belong to, and, conversely, many class have relatively few representative examples. Automated image systems that can deal with small amounts of labeled examples and unbalanced classes are thus necessary to better organize and annotate images. In this work, we propose a multiview semi-supervised bipartite ranking model which allows to leverage the information contained in unlabeled sets of images in order to improve the prediction performance, using multiple descriptions, or ...
Distributing labeling tasks among hundreds or thousands of annotators is an increasingly important m...
International audienceIn image categorization the goal is to decide if an image belongs to a certain...
We are currently experiencing an exceptional growth of visual data, for example, millions of photos ...
Most photo sharing sites give their users the opportunity to manually label images. The labels colle...
In this thesis, we introduce two multiview learning approaches. In a first approach, we describe a s...
This paper presents a novel multi-label classification framework for domains with large numbers of l...
International audienceWe address the problem of learning to rank documents in a multilingual context...
<p> Driven by the rapid development of Internet and digital technologies, we have witnessed the exp...
We address the problem of learning to rank documents in a multilingual context, when reference ranki...
In this paper we propose a novel biased random sampling strategy for image representation in Bag-of-...
This paper presents an empirical study of multi-label classification methods, and gives suggestions ...
International audienceWe propose structured models for image labeling that take into account the dep...
Supervised classification consists in learning a predictive model using a set of labeled samples. It...
We introduce a method for efficiently crowdsourcing multiclass annotations in challenging, real worl...
Abstract—This paper presents a novel multi-label classification framework for domains with large num...
Distributing labeling tasks among hundreds or thousands of annotators is an increasingly important m...
International audienceIn image categorization the goal is to decide if an image belongs to a certain...
We are currently experiencing an exceptional growth of visual data, for example, millions of photos ...
Most photo sharing sites give their users the opportunity to manually label images. The labels colle...
In this thesis, we introduce two multiview learning approaches. In a first approach, we describe a s...
This paper presents a novel multi-label classification framework for domains with large numbers of l...
International audienceWe address the problem of learning to rank documents in a multilingual context...
<p> Driven by the rapid development of Internet and digital technologies, we have witnessed the exp...
We address the problem of learning to rank documents in a multilingual context, when reference ranki...
In this paper we propose a novel biased random sampling strategy for image representation in Bag-of-...
This paper presents an empirical study of multi-label classification methods, and gives suggestions ...
International audienceWe propose structured models for image labeling that take into account the dep...
Supervised classification consists in learning a predictive model using a set of labeled samples. It...
We introduce a method for efficiently crowdsourcing multiclass annotations in challenging, real worl...
Abstract—This paper presents a novel multi-label classification framework for domains with large num...
Distributing labeling tasks among hundreds or thousands of annotators is an increasingly important m...
International audienceIn image categorization the goal is to decide if an image belongs to a certain...
We are currently experiencing an exceptional growth of visual data, for example, millions of photos ...