In text-based image retrieval, the Incomplete Annotation Problem (IAP) can greatly degrade retrieval effectiveness. A standard method used to address this problem is pseudo relevance feedback (PRF) which updates user queries by adding feedback terms selected automatically from top ranked documents in a prior retrieval run. PRF assumes that the target collection provides enough feedback information to select effective expansion terms. This is often not the case in image retrieval since images often only have short metadata annotations leading to the IAP. Our work proposes the use of an external knowledge resource (Wikipedia) in the process of refining user queries. In our method, Wikipedia documents strongly related to the terms in user quer...
We propose a relative relevance feedback method for image retrieval systems. Relevance feedback is a...
AbstractImproving the retrieval accuracy of MEDLINE documents is still a challenging issue due to lo...
Pseudo-Relevance Feedback (PRF) assumes that the top-ranking n documents of the initial retrieval ar...
In text-based image retrieval, the Incomplete Annotation Problem (IAP) can greatly degrade retrieva...
Abstract. This paper presents the result of the team of the University of North Texas in the ImageCL...
In this paper, we present our solutions for the WikipediaMM task at ImageCLEF 2008. The aim of this ...
National audienceThis paper deals with the short and precise queries problem. Short and precise quer...
Pseudo-relevance feedback (PRF) via query-expansion has been proven to be effective in many informat...
This paper describes the application of techniques derived from text retrieval research to the conte...
Pseudo-relevance feedback (PRF) via query-expansion has been proven to be effective in many informa...
Pseudo-relevance feedback (PRF) is a classical technique to improve search engine retrieval effectiv...
Currently large scale multimodal image databases have become widely available, for example via photo...
In document retrieval using pseudo relevance feedback, after initial ranking, a fixed number of top-...
In this paper, we introduce an expansion and reranking approach for annotation based image retrieval...
We describe and analyze our participation in the Wikipedi- aMM task at ImageCLEF 2010. Our approach...
We propose a relative relevance feedback method for image retrieval systems. Relevance feedback is a...
AbstractImproving the retrieval accuracy of MEDLINE documents is still a challenging issue due to lo...
Pseudo-Relevance Feedback (PRF) assumes that the top-ranking n documents of the initial retrieval ar...
In text-based image retrieval, the Incomplete Annotation Problem (IAP) can greatly degrade retrieva...
Abstract. This paper presents the result of the team of the University of North Texas in the ImageCL...
In this paper, we present our solutions for the WikipediaMM task at ImageCLEF 2008. The aim of this ...
National audienceThis paper deals with the short and precise queries problem. Short and precise quer...
Pseudo-relevance feedback (PRF) via query-expansion has been proven to be effective in many informat...
This paper describes the application of techniques derived from text retrieval research to the conte...
Pseudo-relevance feedback (PRF) via query-expansion has been proven to be effective in many informa...
Pseudo-relevance feedback (PRF) is a classical technique to improve search engine retrieval effectiv...
Currently large scale multimodal image databases have become widely available, for example via photo...
In document retrieval using pseudo relevance feedback, after initial ranking, a fixed number of top-...
In this paper, we introduce an expansion and reranking approach for annotation based image retrieval...
We describe and analyze our participation in the Wikipedi- aMM task at ImageCLEF 2010. Our approach...
We propose a relative relevance feedback method for image retrieval systems. Relevance feedback is a...
AbstractImproving the retrieval accuracy of MEDLINE documents is still a challenging issue due to lo...
Pseudo-Relevance Feedback (PRF) assumes that the top-ranking n documents of the initial retrieval ar...