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Title: Kernel principal component analysis for change detection
Type: Article in proceedingsArticle in proceedings
Participant(s):
Author:  Nielsen, Allan Aasbjerg (Cwisno: 1730)
Technical University of Denmark
Email:

Forfatter:  Morton, J.C.
Technical University of Denmark

Abstract: Principal component analysis (PCA) is often used to detect change over time in remotely sensed images. A commonly used technique consists of finding the projections along the two eigenvectors for data consisting of two variables which represent the same spectral band covering the same geographical region acquired at two different time points. If change over time does not dominate the scene, the projection of the original two bands onto the second eigenvector will show change over time. In this paper a kernel version of PCA is used to carry out the analysis. Unlike ordinary PCA, kernel PCA with a Gaussian kernel successfully finds the change observations in a case where nonlinearities are introduced artificially.
Published: part of: SPIE Europe Remote Sensing Conference, 2008, SPIE - International Society for Optical Engineering,
Presented at: SPIE Europe Remote Sensing Conference
See the publication in DTU Orbit See the publication in DTU Orbit

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