The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences. Vol. XXXVII. Part B7. Beijing 2008
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(2) Calculate the kernel matrix K , and calculate K b and
K t according to the Equation (15) and (17).
(3) Resolve the Equation K h a = A,K w a in order to get the
eigenvector a, corresponding to the maximum eigenvalue.
(4) Get other discriminant vectors a 2 ,a 3 ,L ,a d by Equation
(22), and standardize them by dividing yjaf Ka j .
(5) Extract the feature using Equation (25) for any input
sample x .
3. EXPERIMENT
In order to know whether the feature extraction based on GDA
could improve the classification precision of hyperspectral
image, we did two experiments. The experiments data are
obtained by different remote sensors (AVIRIS and PHI). We
also compared the GDA with other feature extraction methods,
including Principal Component Analysis (PCA), Kernel PCA
(KPA), and Linear Discriminant Analysis (LDA).
3.1 Experiment Flow
The steps of the experiments we have done are given below:
(1) Collect the samples of different ground types according the
spectral library or the known ground cover information.
And then, divide the samples into training samples and test
samples.
(2) Using the training samples, calculate the transform
matrixes of different feature extraction methods separately,
including PCA, KPCA, LDA and GDA.
(3) From the transform matrixes which we got in Step 2 we
extracted the feature of the hyperspectral images.
(4) Train the Minimum Distance Classifier (MDC) through
training samples with feature extracted by Step 3. And
then, evaluate the classification result of the testing
samples.
3.2 Experiment 1
Experiment Data: The NASA AVIRIS (Airborne Visible/
Infrared Imaging Spectrometer) instrument acquired data over
the Cuprites mine field, Nevada, USA. AVIRIS acquired data in
224 bands of 10 nm width with centre wavelengths from 400 -
2500 nm. The image of this data is shown in Figure 1. There are
eight kinds of ores in this area; the samples of them are
described in Table 1.
Figure 1. Hyperspectral image from AVIRIS
(R:178,G:111,B:33)
Class Name
Samples Number
Alunite
604
Buddingtonite
89
Dickite
395
Kaolinite
290
Lite
762
Quartz
285
Sait
381
Tuff
1033
Table 1. Samples of this hyperspectral image
Atmospheric radiation correction based on ATREM has been
applied to the AVIRIS image. After eliminating the bands
which have too much noise and which are absorbed by the
vapour, we used 190 bands in the experiment.
We selected 50 samples each class randomly as the training
samples, and talked the others as testing samples. In the test, we
selected the Poly kernel and RBF kernel for KPCA and GDA.
The feature images extracted based on RBF-GDA is shown in
Figure 2.
(1) Image of the first feature
(2) Image of the second feature
(3) Image of the third feature