Content-Based
Image Retrieval with Relevance
Feedback |
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Relevance feedback (RF) has been an
active research area in Content-based
Image Retrieval (CBIR). RF bridges the
gap between the low-level image features
and the high-level human visual
perception by analyzing and employing
the feedback information provided by the
user. This gap becomes more evident and
important in medical image retrieval due
to the two distinct facts with regard to
medical images: (1) subtle differences
between images, even between
pathological and non-pathological
images; (2) subjective and different
diagnosis even among experts. |
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Project Sponsors:
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National Library of Medicine (2004)
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Collaborators:
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Dr.
Sameer Antani, National Library of
Medicine
Mr.
L. Rodney Long, National Library of
Medicine
Dr.
George Thoma, National Library of
Medicine |
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Graduate Students: |
Xiaoqian Xu
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Publications:
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X. Xu,
S.K. Antani, D.J. Lee, L.R. Long, and G.R. Thoma, “Relevance
Feedback for Shape-based Pathology in Spine X-ray Image
Retrieval”, SPIE Medical Imaging, Picture Archive and
Communication Systems (PACS) and Imaging Informatics, vol. 6145-21, p. 120-129, San Diego, CA, USA, February 11-16,
2006.
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X. Xu,
D.J. Lee, S.K. Antani, and L.R. Long, ”Relevance
Feedback for Spine X-ray Retrieval”, Proceedings of
The 18th IEEE Symposium on Computer-Based Medical Systems,
Dublin, Ireland, p. 197-202, June 23-24, 2005.
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(Click image to view.)
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