• DocumentCode
    1037360
  • Title

    Robust support vector method for hyperspectral data classification and knowledge discovery

  • Author

    Camps-Valls, Gustavo ; Gómez-Chova, Luis ; Calpe-Maravilla, Javier ; Martín-Guerrero, José David ; Soria-Olivas, Emilio ; Alonso-Chordá, Luis ; Moreno, José

  • Author_Institution
    Digital Signal Process. Group, Univ. de Valencia, Burjassot, Spain
  • Volume
    42
  • Issue
    7
  • fYear
    2004
  • fDate
    7/1/2004 12:00:00 AM
  • Firstpage
    1530
  • Lastpage
    1542
  • Abstract
    We propose the use of support vector machines (SVMs) for automatic hyperspectral data classification and knowledge discovery. In the first stage of the study, we use SVMs for crop classification and analyze their performance in terms of efficiency and robustness, as compared to extensively used neural and fuzzy methods. Efficiency is assessed by evaluating accuracy and statistical differences in several scenes. Robustness is analyzed in terms of: (1) suitability to working conditions when a feature selection stage is not possible and (2) performance when different levels of Gaussian noise are introduced at their inputs. In the second stage of this work, we analyze the distribution of the support vectors (SVs) and perform sensitivity analysis on the best classifier in order to analyze the significance of the input spectral bands. For classification purposes, six hyperspectral images acquired with the 128-band HyMAP spectrometer during the DAISEX-1999 campaign are used. Six crop classes were labeled for each image. A reduced set of labeled samples is used to train the models, and the entire images are used to assess their performance. Several conclusions are drawn: (1) SVMs yield better outcomes than neural networks regarding accuracy, simplicity, and robustness; (2) training neural and neurofuzzy models is unfeasible when working with high-dimensional input spaces and great amounts of training data; (3) SVMs perform similarly for different training subsets with varying input dimension, which indicates that noisy bands are successfully detected; and (4) a valuable ranking of bands through sensitivity analysis is achieved.
  • Keywords
    crops; fuzzy systems; image classification; neural nets; support vector machines; vegetation mapping; DAISEX-1999 campaign; Gaussian noise; HyMAP spectrometer; crop classification; feature selection; fuzzy methods; hyperspectral data classification; hyperspectral imaging; knowledge discovery; neural networks; neurofuzzy models; robust support vector method; sensitivity analysis; statistical differences; support vector machines; Crops; Employee welfare; Hyperspectral imaging; Hyperspectral sensors; Layout; Noise robustness; Performance analysis; Sensitivity analysis; Support vector machine classification; Support vector machines; Crop classification; SVMs; hyperspectral imagery; knowledge discovery; neural networks; support vector machines;
  • fLanguage
    English
  • Journal_Title
    Geoscience and Remote Sensing, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    0196-2892
  • Type

    jour

  • DOI
    10.1109/TGRS.2004.827262
  • Filename
    1315837