Ranking on image search has attracted considerable attentions. Many graph-based algorithms have been proposed to solve this problem. Despite their remarkable success, these approaches are restricted to their separated image networks. To improve the ranking performance, one effective strategy is to work beyond the separated image graph by leveraging fruitful information from manual semantic labeling (i.e., tags) associated with images, which leads to the technique of co-ranking images and tags, a representative method that aims to explore the reinforcing relationship between image and tag graphs. The idea of co-ranking is implemented by adopting the paradigm of random walks. However, there are two problems hidden in co-ranking remained to be...
Now a day’s number of computerized pictures are expanding which are accessible in online media .for ...
International audienceText-based image retrieval is a popular and simple framework consisting in usi...
We investigate to what extent a large group of human workers is able to produce collaboratively a gl...
In this paper, we consider the problem of clustering and re-ranking web image search results so as t...
We propose Max-Margin Riffled Independence Model (MMRIM), a new method for image tag ranking modelin...
Social media websites such as Flickr and Facebook are pervading our lives today. Thesefast-evolving ...
Multilabel ranking is an important machine learning task with many applications, such as content-bas...
We present a re-ranking algorithm for image retrieval by fusing multi-feature information. We utiliz...
Searching for relevant images given a query term is an important task in nowadays large-scale commun...
Nowadays Social Media focus on users to billions of images, famous e commerce web sites such as Flip...
International audienceText-based image retrieval is a popular and simple framework, which consists i...
Folksonomy, considered a core component for Web 2.0 user-participation architecture, is a classifica...
Visual reranking has been widely deployed to refine the quality of conventional content-based image ...
In image search, an algorithm tries to identify images in a database that are similar to a query ima...
Recently, various learning to rank approaches have been proposed in the information retrieval realm,...
Now a day’s number of computerized pictures are expanding which are accessible in online media .for ...
International audienceText-based image retrieval is a popular and simple framework consisting in usi...
We investigate to what extent a large group of human workers is able to produce collaboratively a gl...
In this paper, we consider the problem of clustering and re-ranking web image search results so as t...
We propose Max-Margin Riffled Independence Model (MMRIM), a new method for image tag ranking modelin...
Social media websites such as Flickr and Facebook are pervading our lives today. Thesefast-evolving ...
Multilabel ranking is an important machine learning task with many applications, such as content-bas...
We present a re-ranking algorithm for image retrieval by fusing multi-feature information. We utiliz...
Searching for relevant images given a query term is an important task in nowadays large-scale commun...
Nowadays Social Media focus on users to billions of images, famous e commerce web sites such as Flip...
International audienceText-based image retrieval is a popular and simple framework, which consists i...
Folksonomy, considered a core component for Web 2.0 user-participation architecture, is a classifica...
Visual reranking has been widely deployed to refine the quality of conventional content-based image ...
In image search, an algorithm tries to identify images in a database that are similar to a query ima...
Recently, various learning to rank approaches have been proposed in the information retrieval realm,...
Now a day’s number of computerized pictures are expanding which are accessible in online media .for ...
International audienceText-based image retrieval is a popular and simple framework consisting in usi...
We investigate to what extent a large group of human workers is able to produce collaboratively a gl...