• Title of article

    A genetic-algorithm-based selective principal component analysis (GA-SPCA) method for high-dimensional data feature extraction

  • Author/Authors

    Yao، Haibo نويسنده , , Tian، Lei نويسنده ,

  • Issue Information
    روزنامه با شماره پیاپی سال 2003
  • Pages
    -1468
  • From page
    1469
  • To page
    0
  • Abstract
    A genetic-algorithm-based selective principal component analysis (GA-SPCA) method is proposed and tested using hyperspectral remote sensing data and ground reference data collected within an agricultural field. The proposed method uses a global optimizer, the genetic algorithms, to select a subset of the original image bands, which first reduces the data dimension. A principal component transformation is subsequently applied to the selected bands. By extracting features from the resulting eigenimage, the remote sensing data, originally high in dimension, will be further reduced to a feature space with one to several principal component bands. Subsequent image processing on the reduced feature space can thus be performed with improved accuracy. Experiments were conducted using three sets of ground reference data: corn chlorophyll content, corn plant population, and various corn hybrids. The results showed that with GA-SPCA, the number of original bands used for principal component analysis (PCA) could be reduced to 17, 26, and 25 from a 60-band hyperspectral image, respectively. In all cases, the correlation coefficients between image and ground reference data were greater when using GASPCA than that for PCA results with all original bands. This indicates that bands with no contribution to a specific application were removed prior to PCA. The variance related to a specific application within the image was transformed with more emphasis by using bands sensitive to that application. The selected bands can also provide useful information for future imaging sensor development.
  • Keywords
    BRDF normalization , image processing , Remote sensing
  • Journal title
    IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING
  • Serial Year
    2003
  • Journal title
    IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING
  • Record number

    100231