International audienceImage auto-annotation is an important open problem in computer vision. For this task we propose TagProp, a discriminatively trained nearest neighbor model. Tags of test images are predicted using a weighted nearest-neighbor model to exploit labeled training images. Neighbor weights are based on neighbor rank or distance. TagProp allows the integration of metric learning by directly maximizing the log-likelihood of the tag predictions in the training set. In this manner, we can optimally combine a collection of image similarity metrics that cover different aspects of image content, such as local shape descriptors, or global color histograms. We also introduce a word specific sigmoidal modulation of the weighted neighbor...
International audienceWe consider the image auto-annotation problem by exploiting information from I...
International audienceWe consider the image auto-annotation problem by exploiting information from I...
International audienceWe consider the image auto-annotation problem by exploiting information from I...
Abstract. Automatic image annotation aims at predicting a set of tex-tual labels for an image that d...
In this paper, we propose a novel image auto-annotation model using tag-related random search over r...
International audienceImage annotation is an important computer vision problem where the goal is to ...
International audienceWe address the problem of tag completion for automatic image annotation. Our m...
The success of media sharing and social networks has led to the availability of extremely large quan...
The success of media sharing and social networks has led to the availability of extremely large quan...
International audienceWe address the problem of tag completion for automatic image annotation. Our m...
A traditional approach to retrieving images is to manually annotate the image with textual keywords ...
Abstract. This paper gives an overview of recent approaches towards image representation and image s...
International audienceWe consider the image auto-annotation problem by exploiting information from I...
International audienceWe consider the image auto-annotation problem by exploiting information from I...
HAL is a multi-disciplinary open access archive for the deposit and dissemination of sci-entific res...
International audienceWe consider the image auto-annotation problem by exploiting information from I...
International audienceWe consider the image auto-annotation problem by exploiting information from I...
International audienceWe consider the image auto-annotation problem by exploiting information from I...
Abstract. Automatic image annotation aims at predicting a set of tex-tual labels for an image that d...
In this paper, we propose a novel image auto-annotation model using tag-related random search over r...
International audienceImage annotation is an important computer vision problem where the goal is to ...
International audienceWe address the problem of tag completion for automatic image annotation. Our m...
The success of media sharing and social networks has led to the availability of extremely large quan...
The success of media sharing and social networks has led to the availability of extremely large quan...
International audienceWe address the problem of tag completion for automatic image annotation. Our m...
A traditional approach to retrieving images is to manually annotate the image with textual keywords ...
Abstract. This paper gives an overview of recent approaches towards image representation and image s...
International audienceWe consider the image auto-annotation problem by exploiting information from I...
International audienceWe consider the image auto-annotation problem by exploiting information from I...
HAL is a multi-disciplinary open access archive for the deposit and dissemination of sci-entific res...
International audienceWe consider the image auto-annotation problem by exploiting information from I...
International audienceWe consider the image auto-annotation problem by exploiting information from I...
International audienceWe consider the image auto-annotation problem by exploiting information from I...