We report on simple textual strategies with thesaural resources in order to perform document and query translation for cross-language information retrieval in a collection of annotated medical images. The keystone of our strategy for the previous medical ImageCLEF was to enrich documents and queries with Medical Subject Headings (MeSH) terms extracted from them, in order to translate the more important concepts into an intermediate language. The core technical component of our cross-language search engine is an automatic text categorizer, which associates a set of MeSH terms to any input text, with a top precision at above 90%. Nevertheless, in the new 2008 collection, images are given with more verbose captions, and with an associated arti...
In 2008, we participated in medical ImageCLEF in order to compare different strategies of query and ...
In this paper we present Eurovision, a text-based system for cross-language (CL) image retrieval. T...
Advances in medical knowledge give clinicians more objective information for a diagnosis. Therefore,...
In this paper, we report on the fusion of simple retrieval strategies with thesaural resources in or...
In the 2006 ImageCLEF cross-language image retrieval track, the MedIC/CISMeF group participated at t...
Over the past decade, broad-coverage crosslanguage text retrieval has progressed from isolated exper...
Abstract. This paper outlines efforts from the 2005 CLEF cross– language image retrieval campaign (I...
This paper presents the results of the State University of New York at Buffalo in the Cross Language...
In this paper we present Eurovision, a text-based system for cross-language (CL) image retrieval. Th...
The ImageCLEF image retrieval benchmark was established in 2003 as part of the CLEF (Cross Language ...
In this paper we present Eurovision, a text-based system for cross-language (CL) image retrieval. Th...
This paper represents the first participation of the Institute of Statistical Studies and Research a...
Abstract. ImageCLEF is a pilot experiment run at CLEF 2003 for cross language image retrieval using ...
In this article the authors present Eurovision, a text-based system for cross-language (CL) image re...
We participate in 2008 to our first Domain-Specific Track, with the aim to establish a baseline for ...
In 2008, we participated in medical ImageCLEF in order to compare different strategies of query and ...
In this paper we present Eurovision, a text-based system for cross-language (CL) image retrieval. T...
Advances in medical knowledge give clinicians more objective information for a diagnosis. Therefore,...
In this paper, we report on the fusion of simple retrieval strategies with thesaural resources in or...
In the 2006 ImageCLEF cross-language image retrieval track, the MedIC/CISMeF group participated at t...
Over the past decade, broad-coverage crosslanguage text retrieval has progressed from isolated exper...
Abstract. This paper outlines efforts from the 2005 CLEF cross– language image retrieval campaign (I...
This paper presents the results of the State University of New York at Buffalo in the Cross Language...
In this paper we present Eurovision, a text-based system for cross-language (CL) image retrieval. Th...
The ImageCLEF image retrieval benchmark was established in 2003 as part of the CLEF (Cross Language ...
In this paper we present Eurovision, a text-based system for cross-language (CL) image retrieval. Th...
This paper represents the first participation of the Institute of Statistical Studies and Research a...
Abstract. ImageCLEF is a pilot experiment run at CLEF 2003 for cross language image retrieval using ...
In this article the authors present Eurovision, a text-based system for cross-language (CL) image re...
We participate in 2008 to our first Domain-Specific Track, with the aim to establish a baseline for ...
In 2008, we participated in medical ImageCLEF in order to compare different strategies of query and ...
In this paper we present Eurovision, a text-based system for cross-language (CL) image retrieval. T...
Advances in medical knowledge give clinicians more objective information for a diagnosis. Therefore,...