standard PCA, Gaussian kernel PCA, polynomial kernel PCA, pre-image reconstruction
https://www.mathworks.com/matlabcentral/fileexchange/39715-kernel-pca-and-pre-image-reconstruction
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Kernel PCA and Pre-Image Reconstruction
Overview
In this package, we implement standard PCA, kernel PCA, and pre-image reconstruction of Gaussian kernel PCA.
We also provide three demos:
- Two concentric spheres embedding;
- Face classification with PCA/kPCA;
- Active shape models with kPCA.
Standard PCA is not optimized for very high dimensional data. But our kernel PCA implementation is very efficient, and has been used in many research projects.
This library is also available at MathWorks:
Citations
If you use this library, please cite:
@article{wang2012kernel,
title={Kernel principal component analysis and its applications in face recognition and active shape models},
author={Wang, Quan},
journal={arXiv preprint arXiv:1207.3538},
year={2012}
}
Zitieren als
Quan Wang (2026). Kernel PCA and Pre-Image Reconstruction (https://github.com/wq2012/kPCA/releases/tag/v3.2), GitHub. Abgerufen .
Quellenangaben
Inspiriert: PCA Based Face Recognition System Using ORL Database
Kategorien
Mehr zu Dimensionality Reduction and Feature Extraction finden Sie in Help Center und MATLAB Answers
Allgemeine Informationen
- Version 3.2 (6,94 MB)
-
Lizenz auf GitHub anzeigen
Kompatibilität der MATLAB-Version
- Kompatibel mit allen Versionen
Plattform-Kompatibilität
- Windows
- macOS
- Linux
| Version | Veröffentlicht | Versionshinweise | Action |
|---|---|---|---|
| 3.2 | See release notes for this release on GitHub: https://github.com/wq2012/kPCA/releases/tag/v3.2 |
||
| 1.4.0.0 | Fixed a fatal bug in pre-image reconstruction. |
||
| 1.3.0.0 | addpath('../code') in demo2 |
||
| 1.2.0.0 | We replaces all demos, and the data used for the demo. We also updated the document to provide better illustration and better experiments. Now the code generates exactly the same results as shown in the paper. |
||
| 1.1.0.0 | The efficiency is optimized. |
||
| 1.0.0.0 |

