Iterative kernel principal component analysis for image modeling

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In recent years, Kernel Principal Component Analysis ( KPCA) has been suggested for various image processing tasks requiring an image model such as, e.g., denoising or compression. The original form of KPCA, however, can be only applied to strongly restricted image classes due to the limited number of training examples that can be processed. We therefore propose a new iterative method for performing KPCA, the Kernel Hebbian Algorithm which iteratively estimates the Kernel Principal Components with only linear order memory complexity. In our experiments, we compute models for complex image classes such as faces and natural images which require a large number of training examples. The resulting image models are tested in single-frame super-resolution and denoising applications. The KPCA model is not specifically tailored to these tasks; in fact, the same model can be used in super-resolution with variable input resolution, or denoising with unknown noise characteristics. In spite of this, both super-resolution and denoising performance are comparable to existing methods.
Publisher
IEEE COMPUTER SOC
Issue Date
2005-09
Language
English
Article Type
Article
Keywords

NATURAL IMAGES; SUPERRESOLUTION

Citation

IEEE TRANSACTIONS ON PATTERN ANALYSIS AND MACHINE INTELLIGENCE, v.27, no.9, pp.1351 - 1366

ISSN
0162-8828
URI
http://hdl.handle.net/10203/89124
Appears in Collection
RIMS Journal Papers
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