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Title:
Bridging the Semantic Gap Using Ranking SVM For Image Retrieval.
Author(s):
Guan H, Antani S, Long LR, Thoma GR.
Institution(s):
1) National Library of Medicine, NIH, USA
Source:
2009 IEEE International Symposium on Biomedical Imaging: From Nano to Macro. June 2009:354-7.
Abstract:
One of the main challenges for Content-Based Image Retrieval
(CBIR) is to achieve meaningful mappings between
the high-level semantic concepts and the low-level visual features
in images. This paper presents an approach for bridging
this semantic gap to improve retrieval quality using the
Ranking Support Vector Machine (Ranking SVM) algorithm.
Ranking SVM is a supervised learning algorithm which models
the relationship between semantic concepts and image features,
and performs retrieval at the semantic level. We apply
it to the problem of vertebra shape retrieval on a digitized
spine x-ray image collection from the second National Health
and Nutrition Examination Survey (NHANES II). The experimental
results show that the retrieval precision is improved
2.45 − 15.16% using the proposed approach.
Publication Type: CONFERENCE
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