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International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B5. Istanbul 2004
The principles of band selection (Beauchemin et al, 2001) are
followed as:
‚Whole information content of bands;
Correlation among different channels;
«Class separability.
Some statistical methods at different aspects such as OIF
(Optimum Index Factor), SI (Sheffield Index) and CI (Crippen
Index) and so on, are employed for optimum band selection.
OIF (Chavez et al., 1982) is introduced to select a three-band
combination having high variances and low pair-wise
correlation. It mainly emphasizes the differences between bands.
SI (Sheffiled, 1995; Beauchemin et al., 2001) is proposed based
on the image covariance matrix of multispectral bands. Another
optimum index CI (Crippen, 1989) is based on image
correlation matrix and it minimizes the effect of redundant
image content. All methods referred above follow the first two
principles to select best triplet that has the highest information
content and the lowest correlation.
Joint entropy is a statistical mean of the probabilities of the
grey-value combinations and could also used to be an
assessment index of information content in remote sensing
images. Joint entropy as the general criterion of the information
content could be employed in application to optimum band
selection. The formula is seen in section 2 (2) and the
comparisons of these methods are showed in the experiments
(Table 3).
32 Quality Assessment of Fused Imagery
Quality assessment of image fusion is relatively new issue in
recent years. A good fusion method lies on improving the
spatial resolution of multispectral images as well as preserving
their spectral characteristics. Various statistical methods are
proposed to evaluate the quality of fused images. For example,
average, entropy, variance, standard deviation, average gradient,
correlation coefficient (Jia 2001; Li, 2000; Wang et al., 2002)
of images have been employed for evaluation.
The fused image can be evaluated both spectrally and spatially.
The quality of spatial information could be judged by lucidity
and local contrast of images and there are many methods for
describing lucidity and contrast. For example, average gradient
and variance are proposed to assess the details and variations in
each channel of the merged image. And entropy is used to
evaluate at the aspect of spatial information content. However,
since there are redundancies between different channels of one
fused image and entropy and average gradient can only be used
to evaluate a single channel, the simple addition of entropies or
gradients cannot represent the whole information of the fused
image. Joint entropy eliminates the redundant information
between channels and can solve this problem efficiently.
4. EXPERIMENTS AND RESULTS
The following experiments include two sections: joint entropy
applied to optimum band selection and applied to quality
assessment of merged images. By experiments, the comparisons
between joint entropy and other methods are discussed.
41 Optimum Band Selection
The test data are the same as that of the above experiment in
Table 1. SI, CI, OIF are also used to compare with joint entropy
(JE), and the sequence results are showed in Table 3.
Seq. Triplets JE SI CI OIF
I 3.4.5 15.192 4 $ 4
2 1,4,5 14.968 6 7 7
3 3,4,7 14.963 1 2 2
4 1,4,7 14.836 3 3 5
5 4,5,7 14.493 19 19 19
6 2,4,5 14.440 5 4 9
7 3.5.7 14.321 14 17 13
8 2,4,7 14.274 2 1 6
9 1,3,4 14.234 7 6 1
10 1.5.7 14.093 18 18 15
11 1.3.5 14.036 8 8 10
12 2.37 13.609 16 15 14
13 1,3,7 15.567 9 9 16
14 2,3,4 13.334 13 13 8
15 2,55 13.189 15 14 11
16 1,2,4 13.163 10 10 3
17 1.2.5 13.025 11 11 12
18 12.7 12.711 12 12 18
19 2 d 12.610 17 16 17
20 1.2.3 11.351 20 20 20
Table 3. Comparisons between JE and different methods in
application to optimum band selection
As is showed above, all these methods obtain optimum band
combinations, such as 543, 743, 742, 741. Whether judged by
visual effect or by local contrast, they're all good triplets. This
demonstrates that joint entropy could be applied to band
selection. At the same time, the reasons for the ranking
differences are the similarity of variances among different
bands after adjustment of contrast. The similarity of variances
causes OIF and SI only related to correlations between bands.
OIF, SI, CI obtain the same sequences which might be a little
different from reality, such as 431, the best triplet selected by
OIF is not a good result. However, based on information
content, joint entropy uses the probabilities of possible grey
combinations instead of the variances and correlations, by
which the optimum band selection could be judged more
efficiently and this is why joint entropy is better than other
statistical methods.
4.20 Experiment on Quality Assessment of fused images
In order to evaluate the quality of fused images, the experiment
is based on IKONOS 4m multispectral (MS) and Im
panchromatic images, which are taken from Beijing, China in
1999. Fusion methods such as IHS (Intensity, Hue, Saturation),
PCA (Principal Component Analysis) and á trous wavelet
transform (Pohl et al. 1998, Jia, 2001) are employed to obtain
the fused images. Entropy, gradient and joint entropy are
applied as quality assessment criteria and the results are listed
in Table 4.