Band selection in hyperspectral imagery using sparse support vector machines

被引:11
作者
Chepushtanova, Sofya [1 ]
Gittins, Christopher [2 ]
Kirby, Michael [1 ]
机构
[1] Colorado State Univ, Dept Math, 1874 Campus Delivery, Ft Collins, CO 80523 USA
[2] UTC Aerosp Syst, Westford, MA USA
来源
ALGORITHMS AND TECHNOLOGIES FOR MULTISPECTRAL, HYPERSPECTRAL, AND ULTRASPECTRAL IMAGERY XX | 2014年 / 9088卷
基金
美国国家科学基金会;
关键词
Band selection; classification; sparse support vector machines; sparsity; bootstrap aggregating; hyperspectral imagery;
D O I
10.1117/12.2063812
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
hi tins paper we propose an l(1)-norm penalized sparse support vector machine (SSVM) as an embedded approach to the hyperspectral imagery band selection prohlem. SSVMs exhihit, a model structure that includes a dearly ifiable gap between zero mid non-zero weights that permits iniportant, bands to be definitively selected in conjunction with the classification problem. The SSVM Algorithm is trained using bootstrap aggregating to obtain a sample of SSVM models to reduce variability in the band selection process. This preliminary sample approach for hand selection is followed by a secondary hand selection which involves retraining the SSVM to further reduce the set of bands retained. We propose and compare three adaptations of the SSVM band selection algorithm for the multiclass problem. Two extensions of the SSVAI Algorithm are based on pairwise band selection between classes. Their performance is validated by using one-against-one (OAO) SSVMs. The third proposed method is a combination of the filter band selection method WaLuMI in sequence with the (0A0) SSVM embedded band selection algorithm. We illustrate the perfomance of these methods on the AVIRIS Indian Pines data set and compare the results to other techniques in the literature. Additionally we illustrate the SSVM Algorithm on the Long- Wavelength Infrared (LWIR) data set consisting of ltyperspectral videos of chentical plumes.
引用
收藏
页数:15
相关论文
共 29 条
  • [1] [Anonymous], IEEE GEOSCIENCE REMO
  • [2] Bertsimas Dimitris, 1997, Introduction to linear optimization, V6
  • [3] Bi J., 2003, Journal of Machine Learning Research, V3, P1229, DOI 10.1162/153244303322753643
  • [4] Bradley P. S., 1998, Machine Learning. Proceedings of the Fifteenth International Conference (ICML'98), P82
  • [5] Breiman L, 1996, MACH LEARN, V24, P123, DOI 10.1023/A:1018054314350
  • [6] A tutorial on Support Vector Machines for pattern recognition
    Burges, CJC
    [J]. DATA MINING AND KNOWLEDGE DISCOVERY, 1998, 2 (02) : 121 - 167
  • [7] Imaging sensor constellation for tomographic chemical cloud mapping
    Cosofret, Bogdan R.
    Konno, Daisei
    Faghfouri, Aram
    Kindle, Harry S.
    Gittins, Christopher M.
    Finson, Michael L.
    Janov, Tracy E.
    Levreault, Mark J.
    Miyashiro, Rex K.
    Marinelli, William J.
    [J]. APPLIED OPTICS, 2009, 48 (10) : 1837 - 1852
  • [8] Regularization Paths for Generalized Linear Models via Coordinate Descent
    Friedman, Jerome
    Hastie, Trevor
    Tibshirani, Rob
    [J]. JOURNAL OF STATISTICAL SOFTWARE, 2010, 33 (01): : 1 - 22
  • [9] A feature selection Newton method for support vector machine classification
    Fung, GM
    Mangasarian, OL
    [J]. COMPUTATIONAL OPTIMIZATION AND APPLICATIONS, 2004, 28 (02) : 185 - 202
  • [10] Band, selection for hyperspectral image classification using mutual information
    Guo, Baofeng
    Gunn, Steve R.
    Damper, R. I.
    Nelson, J. D. B.
    [J]. IEEE GEOSCIENCE AND REMOTE SENSING LETTERS, 2006, 3 (04) : 522 - 526