This paper proposes direct learning of image classification from image tags in the wild, without filtering. Each wild tag is supplied by the user who shared the image online. Enormous numbers of these tags are freely available, and they give insight about the image categories important to users and to image classification. Our main contribution is an analysis of the Flickr 100 Million Image dataset, including several useful observations about the statistics of these tags. We introduce a large-scale robust classification algorithm, in order to handle the inherent noise in these tags, and a calibration procedure to better predict objective annotations. We show that freely available, wild tags can obtain similar or superior results to large da...
Recently, a large visual dataset has emerged from a web-based photo service called Flickr which util...
Visual recognition is a fundamental research topic in computer vision. This dissertation explores d...
Learning successful image classification models requires large quantities of labelled examples that ...
This paper proposes direct learning of image classifica-tion from user-supplied tags, without filter...
The success of an object classifier depends strongly on its training set, but this fact seems to be ...
International audienceThe availability of large annotated visual resources, such as ImageNet, recent...
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...
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 audienceThe keep-growing content of Web images is probably the next important data sou...
International audienceThe keep-growing content of Web images is probably the next important data sou...
International audienceThe keep-growing content of Web images is probably the next important data sou...
International audienceThe keep-growing content of Web images is probably the next important data sou...
Recently, a large visual dataset has emerged from a web-based photo service called Flickr which util...
Visual recognition is a fundamental research topic in computer vision. This dissertation explores d...
Learning successful image classification models requires large quantities of labelled examples that ...
This paper proposes direct learning of image classifica-tion from user-supplied tags, without filter...
The success of an object classifier depends strongly on its training set, but this fact seems to be ...
International audienceThe availability of large annotated visual resources, such as ImageNet, recent...
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...
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 audienceThe keep-growing content of Web images is probably the next important data sou...
International audienceThe keep-growing content of Web images is probably the next important data sou...
International audienceThe keep-growing content of Web images is probably the next important data sou...
International audienceThe keep-growing content of Web images is probably the next important data sou...
Recently, a large visual dataset has emerged from a web-based photo service called Flickr which util...
Visual recognition is a fundamental research topic in computer vision. This dissertation explores d...
Learning successful image classification models requires large quantities of labelled examples that ...