Relevant and irrelevant images collected from the Web (e.g., Flickr.com) have been employed as loosely labeled training data for image categorization and retrieval. In this work, we propose a new approach to learn a robust classifier for text-based image retrieval (TBIR) using relevant and irrelevant training web images, in which we explicitly handle noise in the loose labels of training images. Specifically, we first partition the relevant and irrelevant training web images into clusters. By treating each cluster as a "bag" and the images in each bag as "instances", we formulate this task as a multi-instance learning problem with constrained positive bags, in which each positive bag contains at least a portion of positive instances. We pre...
In this paper, we propose a new tag-based image retrieval framework to improve the retrieval perform...
In this paper, we propose a new tag-based image retrieval framework to improve the retrieval perform...
Abstract—To deal with the two problems in image retrieval, i.e., the small number of query images, t...
Relevant and irrelevant images collected from the We-b (e.g., Flickr.com) have been employed as loos...
With the rapid development of digital cameras, we have witnessed an explosive growth of digital imag...
With the rapid development of digital cameras, we have witnessed an explosive growth of digital imag...
Text-based image retrieval may perform poorly due to the irrelevant and/or incomplete text surroundi...
Given a textual query in traditional text-based image retrieval (TBIR), relevant images are to be re...
In multi-instance learning, the training examples are bags composed of instances without labels and ...
In this study, we propose a weakly-supervised multiple instance learning (MIL) method to improve the...
Automatic content-based image categorization is a challenging research topic and has many practical ...
Automatic content-based image categorization is a challenging research topic and has many practical ...
Automatic content-based image categorization is a challenging research topic and has many practical ...
Automatic content-based image categorization is a challenging research topic and has many practical ...
Part 7: MultimediaInternational audienceBecause multi-instance and multi-label learning can effectiv...
In this paper, we propose a new tag-based image retrieval framework to improve the retrieval perform...
In this paper, we propose a new tag-based image retrieval framework to improve the retrieval perform...
Abstract—To deal with the two problems in image retrieval, i.e., the small number of query images, t...
Relevant and irrelevant images collected from the We-b (e.g., Flickr.com) have been employed as loos...
With the rapid development of digital cameras, we have witnessed an explosive growth of digital imag...
With the rapid development of digital cameras, we have witnessed an explosive growth of digital imag...
Text-based image retrieval may perform poorly due to the irrelevant and/or incomplete text surroundi...
Given a textual query in traditional text-based image retrieval (TBIR), relevant images are to be re...
In multi-instance learning, the training examples are bags composed of instances without labels and ...
In this study, we propose a weakly-supervised multiple instance learning (MIL) method to improve the...
Automatic content-based image categorization is a challenging research topic and has many practical ...
Automatic content-based image categorization is a challenging research topic and has many practical ...
Automatic content-based image categorization is a challenging research topic and has many practical ...
Automatic content-based image categorization is a challenging research topic and has many practical ...
Part 7: MultimediaInternational audienceBecause multi-instance and multi-label learning can effectiv...
In this paper, we propose a new tag-based image retrieval framework to improve the retrieval perform...
In this paper, we propose a new tag-based image retrieval framework to improve the retrieval perform...
Abstract—To deal with the two problems in image retrieval, i.e., the small number of query images, t...