Methodology for hyperspectral band selection

被引:213
作者
Bajcsy, P [1 ]
Groves, P [1 ]
机构
[1] Natl Ctr Supercomp Applicat, Automated Learning Grp, Champaign, IL 61820 USA
关键词
D O I
10.14358/PERS.70.7.793
中图分类号
P9 [自然地理学];
学科分类号
0705 ; 070501 ;
摘要
While hyperspectral data are very rich in information, processing the hyperspectral data poses several challenges regarding computational requirements, information redundancy removal.. relevant information identification, and modeling accuracy. In this paper we present a new methodology for combining unsupervised and supervised methods under classification accuracy and computational requirement constraints that is designed to perform hyperspectral band (wavelength ronge) selection and statistical modeling method selection. The band and method selections are utilized for prediction of continuous ground variables using airborne hyperspectral measurements. The novelty of the proposed work is in combining strengths of unsupervised and supervised band selection methods to build a computationally efficient and accurate band selection system. The unsupervised methods are used to rank hyperspectral bonds while the accuracy of the predictions of supervised methods are used to score those rankings. We conducted experiments with seven unsupervised and three supervised methods. The list of unsupervised methods includes information entropy, first and second spectral derivative, spatial contrast, spectral ratio, correlation, and principal component analysis ranking combined with regression, regression tree, and instance-based supervised methods. These methods were applied to a data set that relates around measurements of soil electrical conductivity with airborne hyperspectral image values. The outcomes of our analysis led to a conclusion that the optimum number of bonds in this domain is the top four to eight bonds obtained by the entropy unsupervised method followed by the regression tree supervised method evaluation. Although the proposed bond selection approach is demonstrated with a data set from the precision agriculture domain, it applies in other hyperspectral application domains.
引用
收藏
页码:793 / 802
页数:10
相关论文
共 31 条
  • [1] [Anonymous], DATA MINING PRACTICA
  • [2] BAJCSY P, 2002, IMAGE KNOWLEDGE 12K
  • [3] Balanis C. A., 1989, Advanced engineering electromagnetics
  • [4] CLASSIFICATION AND FEATURE-EXTRACTION OF AVIRIS DATA
    BENEDIKTSSON, JA
    SVEINSSON, JR
    ARNASON, K
    [J]. IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING, 1995, 33 (05): : 1194 - 1205
  • [5] SmcHD1, containing a structural-maintenance-of-chromosomes hinge domain, has a critical role in X inactivation
    Blewitt, Marnie E.
    Gendrel, Anne-Valerie
    Pang, Zhenyi
    Sparrow, Duncan B.
    Whitelaw, Nadia
    Craig, Jeffrey M.
    Apedaile, Anwyn
    Hilton, Douglas J.
    Dunwoodie, Sally L.
    Brockdorff, Neil
    Kay, Graham F.
    Whitelaw, Emma
    [J]. NATURE GENETICS, 2008, 40 (05) : 663 - 669
  • [6] Bruske J., 1999, 7th European Symposium on Artificial Neural Networks. ESANN'99. Proceedings, P105
  • [7] CAMPBELL BJ, 1996, INTRO REMOTE SENSING
  • [8] SPECTRAL BAND SELECTION FOR THE CHARACTERIZATION OF SALINITY STATUS OF SOILS
    CSILLAG, F
    PASZTOR, L
    BIEHL, LL
    [J]. REMOTE SENSING OF ENVIRONMENT, 1993, 43 (03) : 231 - 242
  • [9] Davis S. M, 1978, Remote Sensing: The Quantitative Approach
  • [10] Duda R.O., 2001, Pattern Classification, V2nd