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Creating New Medical Ontologies For Image Annotation A Case Study 1st Edition Liana Stanescu

  • SKU: BELL-2511192
Creating New Medical Ontologies For Image Annotation A Case Study 1st Edition Liana Stanescu
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Creating New Medical Ontologies For Image Annotation A Case Study 1st Edition Liana Stanescu instant download after payment.

Publisher: Springer-Verlag New York
File Extension: PDF
File size: 2.08 MB
Pages: 111
Author: Liana Stanescu, Dumitru Dan Burdescu, Marius Brezovan, Cristian Gabriel Mihai (auth.)
ISBN: 9781461419082, 1461419085
Language: English
Year: 2012
Edition: 1

Product desciption

Creating New Medical Ontologies For Image Annotation A Case Study 1st Edition Liana Stanescu by Liana Stanescu, Dumitru Dan Burdescu, Marius Brezovan, Cristian Gabriel Mihai (auth.) 9781461419082, 1461419085 instant download after payment.

Creating New Medical Ontologies for Image Annotation focuses on the problem of the medical images automatic annotation process, which is solved in an original manner by the authors. All the steps of this process are described in detail with algorithms, experiments and results. The original algorithms proposed by authors are compared with other efficient similar algorithms.
In addition, the authors treat the problem of creating ontologies in an automatic way, starting from Medical Subject Headings (MESH). They have presented some efficient and relevant annotation models and also the basics of the annotation model used by the proposed system: Cross Media Relevance Models. Based on a text query the system will retrieve the images that contain objects described by the keywords.

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