DocumentCode
3011781
Title
Novel Kernels and Kernel PCA for Pattern Recognition
Author
Isaacs, Jason C. ; Foo, Simon Y. ; Meyer-Baese, Anke
Author_Institution
Florida State Univ., Tallahassee
fYear
2007
fDate
20-23 June 2007
Firstpage
438
Lastpage
443
Abstract
Kernel methods are a mathematical tool that provides a generally higher dimensional representation of given data set in feature space for feature recognition and image analysis problems. Typically, the kernel trick is thought of as a method for converting a linear classification learning algorithm into non-linear one, by mapping the original observations into a higher-dimensional non-linear space so that linear classification in the new space is equivalent to non-linear classification in the original space. Moreover, optimal kernels can be designed to capture the natural variation present in the data. In this paper we present the performance results of fifteen novel kernel functions and their respective performance for kernel principal component analysis on five select databases. Empirical results show that our kernels perform as well and better than existing kernels on these databases.
Keywords
feature extraction; image classification; learning (artificial intelligence); principal component analysis; visual databases; feature recognition; image analysis problem; kernel PCA method; linear classification learning algorithm; pattern recognition; principal component analysis; Classification algorithms; Computational intelligence; Databases; Extraterrestrial measurements; Kernel; Pattern recognition; Polynomials; Principal component analysis; Robotics and automation; USA Councils;
fLanguage
English
Publisher
ieee
Conference_Titel
Computational Intelligence in Robotics and Automation, 2007. CIRA 2007. International Symposium on
Conference_Location
Jacksonville, FI
Print_ISBN
1-4244-0790-7
Electronic_ISBN
1-4244-0790-7
Type
conf
DOI
10.1109/CIRA.2007.382927
Filename
4269927
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