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ICIP
2004
IEEE

Sparse representation of images with hybrid linear models

15 years 1 months ago
Sparse representation of images with hybrid linear models
We propose a mixture of multiple linear models, also known as hybrid linear model, for a sparse representation of an image. This is a generalization of the conventional KarhunenLoeve transform (KLT) or principal component analysis (PCA). We provide an algebraic algorithm based on generalized principal component analysis (GPCA) that gives a global and non-iterative solution to the identification of a hybrid linear model for any given image. We demonstrate the efficiency of the proposed hybrid linear model by experiments and comparison with other transforms such as the KLT, DCT, and wavelet transforms. Such an efficient representation can be very useful for later stages of image processing, especially in applications such as image segmentation and image compression.
Kun Huang, Allen Y. Yang, Yi Ma
Added 24 Oct 2009
Updated 27 Oct 2009
Type Conference
Year 2004
Where ICIP
Authors Kun Huang, Allen Y. Yang, Yi Ma
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