scholarly journals Empirical study of neighbourhood rough sets based band selection techniques for classification of hyperspectral images

2019 ◽  
Vol 13 (8) ◽  
pp. 1266-1279 ◽  
Author(s):  
Barnali Barman ◽  
Swarnajyoti Patra
2018 ◽  
Vol 56 (12) ◽  
pp. 7230-7245 ◽  
Author(s):  
Chen Yang ◽  
Lorenzo Bruzzone ◽  
Haishi Zhao ◽  
Yulei Tan ◽  
Renchu Guan

Author(s):  
R. Hänsch ◽  
O. Hellwich

The automatic classification of land cover types from hyperspectral images is a challenging problem due to (among others) the large amount of spectral bands and their high spatial and spectral correlation. The extraction of meaningful features, that enables a subsequent classifier to distinguish between different land cover classes, is often limited to a subset of all available data dimensions which is found by band selection techniques or other methods of dimensionality reduction. This work applies Projection-Based Random Forests to hyperspectral images, which not only overcome the need of an explicit feature extraction, but also provide mechanisms to automatically select spectral bands that contain original (i.e. non-redundant) as well as highly meaningful information for the given classification task. The proposed method is applied to four challenging hyperspectral datasets and it is shown that the effective number of spectral bands can be considerably limited without loosing too much of classification performance, e.g. a loss of 1 % accuracy if roughly 13 % of all available bands are used.


Author(s):  
R. Hänsch ◽  
O. Hellwich

The automatic classification of land cover types from hyperspectral images is a challenging problem due to (among others) the large amount of spectral bands and their high spatial and spectral correlation. The extraction of meaningful features, that enables a subsequent classifier to distinguish between different land cover classes, is often limited to a subset of all available data dimensions which is found by band selection techniques or other methods of dimensionality reduction. This work applies Projection-Based Random Forests to hyperspectral images, which not only overcome the need of an explicit feature extraction, but also provide mechanisms to automatically select spectral bands that contain original (i.e. non-redundant) as well as highly meaningful information for the given classification task. The proposed method is applied to four challenging hyperspectral datasets and it is shown that the effective number of spectral bands can be considerably limited without loosing too much of classification performance, e.g. a loss of 1 % accuracy if roughly 13 % of all available bands are used.


2019 ◽  
Vol 19 (4) ◽  
pp. 21-28
Author(s):  
D. SAQUI ◽  
J. H. SAITO ◽  
D. C. De LIMA ◽  
L. M. Del Val CURA ◽  
S. T. M. ATAKY

Sign in / Sign up

Export Citation Format

Share Document