Using the Canonical Correlation Analysis Technique for Imaging Dimensionality Reduction in Multisource Land sat Images

Section: Article
Published
Jun 25, 2025
Pages
1-18

Abstract

The Canonical Correlations Analysis technique (CCA) was suggested in the dimensionality reduction images for the multivariate multisource data applied in remote sensing . These techniques transform multivariate multiset data into new orthogonal variables called Canonical Variates (CVs) . This research uses the LANDSAT-5 TM data for the set of multivariate multispectral correlation at fixed points in time . The results show maximum similarity for the low- order canonical variates and minimum similarity for the high- order canonical variates .

Identifiers

Download this PDF file

Statistics

How to Cite

-, .-., & عبد. (2025). Using the Canonical Correlation Analysis Technique for Imaging Dimensionality Reduction in Multisource Land sat Images. IRAQI JOURNAL OF STATISTICAL SCIENCES, 13(1), 1–18. Retrieved from https://rjps.uomosul.edu.iq/index.php/stats/article/view/20982