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Using the low-resolution properties of correlated images to improve the computational efficiency of eigenspace decomposition

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Draper, Bruce A., author

Roberts, Rodney G., author

Maciejewski, Anthony A., author

Saitwal, Kishor, author

IEEE, publisher

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Abstract

Eigendecomposition is a common technique that is performed on sets of correlated images in a number of computer vision and robotics applications. Unfortunately, the computation of an eigendecomposition can become prohibitively expensive when dealing with very high-resolution images. While reducing the resolution of the images will reduce the computational expense, it is not known a priori how this will affect the quality of the resulting eigendecomposition. The work presented here provides an analysis of how different resolution reduction techniques affect the eigendecomposition. A computationally efficient algorithm for calculating the eigendecomposition based on this analysis is proposed. Examples show that this algorithm performs well on arbitrary video sequences.

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computational complexity

computer vision

correlation

data compression

eigenspace

image resolution

image sampling

image sequences

singular value decomposition (SVD)

video coding

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