Principal Component Analysis for Data Compression and Face Recognition

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Dinesh Kumar
C. S. Rai
Shakti Kumar

Abstract

Data compression is the most important step in many signal processing and pattern recognition applications. We come across very high dimensional data in such applications. Before processing of large-dimensional datasets, we need to reduce the dimensions to have lesser storage space and reduced computational complexities while retaining the maximum information. Principal Component Analysis (PCA) is one such technique that helps in reduction of high dimensional data. It is an unsupervised, useful statistical technique that has been successfully used in dimensionality reduction in pattern recognition applications. There are number of ways of performing Principal Component Analysis. This paper reviews the performance of three such methods, Eigen Decomposition, Singular Value Decomposition and Hebbian Neural Networks. It shows the application of the methods for face images for compression/ dimensionality reduction and face recognition.

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How to Cite
Kumar, D., Rai, C. S., & Kumar, S. (2008). Principal Component Analysis for Data Compression and Face Recognition. INFOCOMP Journal of Computer Science, 7(4), 48–59. Retrieved from https://infocomp.dcc.ufla.br/index.php/infocomp/article/view/238
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