MIRACLE's Combination of Visual and Textual Queries for Medical Image Retrieval
نویسندگان
چکیده
This paper presents the 2005 MIRACLE’s team participation in the ImageCLEFmed task of ImageCLEF 2005. This task certainly requires the use of image retrieval techniques and therefore it is mainly aimed at image analysis research groups. Although our areas of expertise don’t include image analysis research, we decided to make the effort to participate in this task to promote and encourage multidisciplinary participation in all aspects of information retrieval, no matter if it is text or content based. We resort to a publicly available image retrieval system (GIFT [1]) when needed.
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Manual Query Modification and Data Fusion for Medical Image Retrieval
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