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ASME Press Select Proceedings
International Conference on Instrumentation, Measurement, Circuits and Systems (ICIMCS 2011)
By
ISBN:
9780791859902
No. of Pages:
1400
Publisher:
ASME Press
Publication date:
2011
eBook Chapter
202 A Hybrid GA and Active Learning SVM Model for Relevance Feedback in the Content-Based Images Retrival
By
Cai-hong Ma
,
Cai-hong Ma
Center for Earth Observation and Digital Earth, Chinese Academy of Sciences,
Graduate University of Chinese Academy of Sciences
, Beijing
, China
; abcmacai@163.com
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Dai Qin
,
Dai Qin
Center for Earth Observation and Digital Earth,
Chinese Academy of Sciences
, Beijing
, China
; qdai@ceode.ac.cn
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Shi-Bin Liu
Shi-Bin Liu
Center for Earth Observation and Digital Earth,
Chinese Academy of Sciences
, Beijing
, China
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Page Count:
4
-
Published:2011
Citation
Ma, C, Qin, D, & Liu, S. "A Hybrid GA and Active Learning SVM Model for Relevance Feedback in the Content-Based Images Retrival." International Conference on Instrumentation, Measurement, Circuits and Systems (ICIMCS 2011). Ed. Ming, C. ASME Press, 2011.
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To address the semantic gap challenges in the content-based image retrieval, an improved relevance feedback system based on hybrid GA and active learning SVM model was proposed in this text. There are two main improvements for the new system. First, the GA with∕without feature selection are used to optimal the parameters ( C and У ) and sub-features in the SVM classifier. Second, the active SVM was applied on actively selecting most information images that minimizes redundancy between the candidate images shown to the user. The experimental results show the proposed approach has the speedy convergence and good stability in the relevant feedback system.
Abstract
Keywords:
Introduction
Related Work
A Hybrid GA and Active Learning SVM Model for Relevance Feedback
Experiment Results
Conclusion
Acknowledgments
References
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