Combining Textual and Visual Features for Image Retrieval

نویسندگان

  • José Luis Martínez-Fernández
  • Julio Villena-Román
  • Ana M. García-Serrano
  • José Carlos González
چکیده

This paper presents the approaches used by the MIRACLE team to image retrieval at ImageCLEF 2005. Text-based and content-based techniques have been tested, along with combination of both types of methods to improve image retrieval. The text-based experiments defined this year try to use semantic information sources, like thesaurus with semantic data or text structure. On the other hand, content-based techniques are not part of the main expertise of the MIRACLE team, but multidisciplinary participation in all aspects of information retrieval has been pursued. We rely on a publicly available image retrieval system (GIFT 4) when needed.

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تاریخ انتشار 2005