Loading...
SVD and PCA in Image Processing
Renkjumnong, Wasuta -
Renkjumnong, Wasuta -
Citations
Altmetric:
Abstract
The Singular Value Decomposition is one of the most useful matrix factorizations in applied linear algebra, the Principal Component Analysis has been called one of the most valuable results of applied linear algebra. How and why principal component analysis is intimately related to the technique of singular value decomposition is shown. Their properties and applications are described. Assumptions behind this techniques as well as possible extensions to overcome these limitations are considered. This understanding leads to the real world applications, in particular, image processing of neurons. Noise reduction, and edge detection of neuron images are investigated.
Comments
Description
Date
2007-07-16
Journal Title
Journal ISSN
Volume Title
Publisher
Collections
Research Projects
Organizational Units
Journal Issue
Keywords
Principal component analysis, Singular value decomposition, Image
Citation
Renkjumnong, Wasuta -. "SVD and PCA in Image Processing." 2007. Thesis, Georgia State University. https://doi.org/10.57709/1059687
Embargo Lift Date
2012-01-26
