Müller, H., Clough, P., Deselaers, Th., Caputo, B. (Eds.)
2010, XXVIII, 544 p.
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Comprehensively describes benchmarks for image retrieval
Written by the organizers of the ImageCLEF evaluation campaign
Includes detailed descriptions of effective retrieval across multiple application domains
The creation and consumption of content, especially visual content, is ingrained into our modern world. This book contains a collection of texts centered on the evaluation of image retrieval systems. To enable reproducible evaluation we must create standardized benchmarks and evaluation methodologies. The individual chapters in this book highlight major issues and challenges in evaluating image retrieval systems and describe various initiatives that provide researchers with the necessary evaluation resources. In particular they describe activities within ImageCLEF, an initiative to evaluate cross-language image retrieval systems which has been running as part of the Cross Language Evaluation Forum (CLEF) since 2003.
To this end, the editors collected contributions from a range of people: those involved directly with ImageCLEF, such as the organizers of specific image retrieval or annotation tasks; participants who have developed techniques to tackle the challenges set forth by the organizers; and people from industry and academia involved with image retrieval and evaluation generally.
Mostly written for researchers in academia and industry, the book stresses the importance of combing textual and visual information – a multimodal approach – for effective retrieval. It provides the reader with clear ideas about information retrieval and its evaluation in contexts and domains such as healthcare, robot vision, press photography, and the Web.
Content Level »Research
Keywords »Annotation - Image Retrieval - Medical Image Processing - Multimedia Retrieval - Performance Evaluation - Robot Vision - Text Retrieval - classification - information retrieval - media retrieval - performance