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ASME Press Select Proceedings
International Conference on Computer Technology and Development, 3rd (ICCTD 2011)
ISBN:
9780791859919
No. of Pages:
2000
Publisher:
ASME Press
Publication date:
2011
eBook Chapter
172 Research on Large Scale Image Identifying Algorithm Based on SVM in Network Environment
By
Yongjiao Wang
Yongjiao Wang
Department of Computer Science,
University of Uuban Construction
, Pingdingshan
Fiber Optic Sensing Technology Research Centre,
Wuhan University of Technology
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Page Count:
5
-
Published:2011
Citation
Wang, Y. "Research on Large Scale Image Identifying Algorithm Based on SVM in Network Environment." International Conference on Computer Technology and Development, 3rd (ICCTD 2011). Ed. Zhou, J. ASME Press, 2011.
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As internet has become one of the most important access to information for peoples daily life, ensuring the authentication of the images transmitted in internet is of great importance. However, current image identifying technology can not satisfy the requirement on efficiency and accuracy of mass image authenticating in the internet environment. Regarding this problem, this paper proposed a SVM based image identifying algorithm which can be deployed in the network environment with the help of cloud computing architecture. With the algorithm described, mass images can be crawled from internet, the identifying model can be trained automatically and new coming image can be authenticated swiftly.
Abstract
Key Words
1 Introduction
2 Description of Image Authenticating Algorithm
3. Simulation Experiment
5. Conclusion and Future Works
References
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