Evaluation Method for Band Selection Algorithms of Hyperspectral Image

Article Preview

Abstract:

Band selection algorithm is most important in data dimension reduction of hyperspectral image. There are many algorithms of band selection, but there are only few methods to do algorithm evaluation. A method is put forward in this paper to evaluate the band selection algorithm of hyperspectral image. The amount of information, brightness, image contrast and definition are defined as 4 indexes to measure deferent data fusion based on various band selection results. Based on the measurement, the evaluation of band selection algorithm is realized. In the paper, the evaluation method is used in the compare of 4 common band selection algorithms, the result of measurement is analyzed and the feasibility is verified.

You might also be interested in these eBooks

Info:

Periodical:

Pages:

495-498

Citation:

Online since:

April 2013

Export:

Price:

Permissions CCC:

Permissions PLS:

Сopyright:

© 2013 Trans Tech Publications Ltd. All Rights Reserved

Share:

Citation:

[1] Tong QX, Zhang B, Zhen LF. Hyperspectral Remote Sensing. Higher Education Press. Beijing (2006).

Google Scholar

[2] Liu H, Lu H, Yu L. Active sampling: an effective approach to feature selection. SIAM International Conference on Data Ming, 5(2003): 244-248.

DOI: 10.1137/1.9781611972733.23

Google Scholar

[3] Zhao CH, Chen WH, Yang L. Research advances and analysis of hyperspectral remote sensing image band selection. Journal of Nature Science of Heilongjiang University. 24(5)(2007): 592-602.

Google Scholar

[4] Guo L, Chang WW, Fu CY. Band selection of optimal for hyperspectral image fusion. Journal of Astronautics. 32(2)(2011): 374-379.

Google Scholar

[5] Pan JG, Zhao WJ, Gong HL. The research of remote sensing image classification method. Journal of Capital Normal University (Natural Science Edition). 25(3)(2004): 86-91.

Google Scholar

[6] Li JS, Yang W, Zhang XM. Infrared Image Processing, Analysis and Fusion. Science Press. Beijing (2009).

Google Scholar

[7] Zhao YS. Remote Sensing Application Analysis Theory and Method. Science Press. Beijing (2003).

Google Scholar