• DocumentCode
    995154
  • Title

    Unsupervised Linear Feature-Extraction Methods and Their Effects in the Classification of High-Dimensional Data

  • Author

    Jiménez-Rodríguez, Luis O. ; Arzuaga-Cruz, Emmanuel ; Vélez-Reyes, Miguel

  • Author_Institution
    Dept. of Electr. & Comput. Eng., Puerto Rico Univ., Mayaguez
  • Volume
    45
  • Issue
    2
  • fYear
    2007
  • Firstpage
    469
  • Lastpage
    483
  • Abstract
    This paper presents an analysis and a comparison of different linear unsupervised feature-extraction methods applied to hyperdimensional data and their impact on classification. The dimensionality reduction methods studied are under the category of unsupervised linear transformations: principal component analysis, projection pursuit (PP), and band subset selection. Special attention is paid to an optimized version of the PP introduced in this paper: optimized information divergence PP, which is the maximization of the information divergence between the probability density function of the projected data and the Gaussian distribution. This paper is particularly relevant with current and the next generation of hyperspectral sensors that acquire more information in a higher number of spectral channels or bands when compared to multispectral data. The process to uncover these high-dimensional data patterns is not a simple one. Challenges such as the Hughes phenomenon and the curse of dimensionality have an impact in high-dimensional data analysis. Unsupervised feature extraction, implemented as a linear projection from a higher dimensional space to a lower dimensional subspace, is a relevant process necessary for hyperspectral data analysis due to its capacity to overcome some difficulties of high-dimensional data. An objective of unsupervised feature extraction in hyperspectral data analysis is to reduce the dimensionality of the data maintaining its capability to discriminate data patterns of interest from unknown cluttered background that may be present in the data set. This paper presents a study of the impact these mechanisms have in the classification process. The impact is studied for supervised classification even on the conditions of a small number of training samples and unsupervised classification where unknown structures are to be uncovered and detected
  • Keywords
    classification; feature extraction; geophysical signal processing; multidimensional signal processing; principal component analysis; Gaussian distribution; Hughes phenomenon; band subset selection; dimensionality reduction methods; high dimensional data analysis; hyperdimensional data classification; hyperspectral sensors; multispectral data; optimized information divergence PP; principal component analysis; probability density function; projected data; projection pursuit; unsupervised linear feature extraction methods; unsupervised linear transformations; Contracts; Data analysis; Feature extraction; Gaussian distribution; Hyperspectral imaging; Hyperspectral sensors; NASA; Pattern recognition; Principal component analysis; Probability density function; Classification; dimensionality reduction; feature extraction; feature selection; hyperspectral data; pattern recognition; principal component analysis (PCA); projection pursuit (PP);
  • fLanguage
    English
  • Journal_Title
    Geoscience and Remote Sensing, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    0196-2892
  • Type

    jour

  • DOI
    10.1109/TGRS.2006.885412
  • Filename
    4069105