Full text: Proceedings, XXth congress (Part 7)

  
International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B7. Istanbul 2004 
  
5.3.2. Quantitative Evaluation 
In general, a good fusion approach should retain the maximum 
spatial and spectral information from the original images and 
should not damage the internal relationship among the original 
bands. Based on these three criteria, correlation coefficients are 
used to quantitatively evaluate the image fusion results. 
In Table 2, the correlation coefficients between the original 
panchromatic image and the fused images (QB Pan + QB XS) 
are given as a quality measure. As is shown, the correlation 
coefficients are getting larger after fusion, which implies that 
the fused image gains information from the original 
panchromatic image. The amount of increase varies from 7% 
(band 4, near infrared) to 12% (band 1, blue), with the blue 
band having the most gain from the panchromatic image. 
Table 3 presents the correlation coefficients of the fused images 
with their corresponding original images. The higher the value, 
the more similar the fused image to the corresponding original 
image, which in turn indicates a good spectral information 
retain in the fused results. As shown in the table, all bands 
except the blue one have a high correlation over 0.93 to their 
corresponding original images. The fused blue band has the 
lowest correlation of 0.85 to the original blue image. This 
property is consistent with the above analysis as the blue band 
is most affected in the fusion process by gaining the most 
spatial information from the panchromatic image. 
Table 4 presents the correlations among the QuickBird 
multispectral bands before and after fusion. A good fusion 
approach should not considerably change the correlation in the 
corresponding bands. As shown in Table 4, the correlation 
among all bands but band 4 is subject to a minor change after 
fusion. The magnitude of largest correlation change is 0.02, 
which is only about 2% of the original correlation. However, 
the behavior of band 4 (near infrared) presents different 
properties. For both before and after fusion, band 4 has a very 
small correlation with all other multispectral bands, with the 
maximum correlation being only 0.19. Although the magnitude 
of correlation change is still very small (with the largest being 
only 0.07), their relative rate can be large (over 200%). This 
implies that the near infrared image is the most affected image 
in terms of the internal relationship with other bands in the 
fusion process. 
Table 5 shows the correlation coefficients between each 
original multispectral band and the fused ones of QuickBird 
image computed for PCA, Brovey, Multiplicative and the 
Wavelet transform methods. The larger the correlation 
coefficient, the more spectral content is retained from the 
original multispectral images. Results in Table shows that the 
wavelet transform approach keeps over 90% of the spectral 
content of all original multispectral bands except band-1 (blue 
band). Among the tested methods, wavelet based approach is 
the only one that keeps the most number of bands (3) having a 
correlation above 90%. Further examination on Table 5 shows 
the magnitudes of correlation change from band to band, that 
suggests that the performance of fusion methods is band 
selective. A reasonable expectation on a good fusion method is 
that they have similar properties across the bands involved. 
Results in Table 5 show that the Brovey method results in the 
largest range (max — min), whereas the Multiplicative and 
wavelet methods yield similarly small ranges (0.04 and 0.07) 
across the bands. All the above analysis suggests that the 
wavelet based fusion approach provides overall the best results 
in the methods used in our study. 
1248 
  
  
  
  
  
  
  
XS1 XS2 XS3 XS4 
QB | before | 0.6901 | 0.7444 | 0.6753 | 0.6138 
Pan | after | 0.7732 | 0.8063 | 0.7352 0.6572 
  
  
  
Table 2. Correlation coefficients between the original QB pan 
and multispectral bands before and after fusion 
  
XS1 
XS2 
XS3 
X84 
  
  
0.8501 
  
0.9323 
  
0.9516 
  
0.9374 
  
Table 3. Correlation coefficients between the corresponding 
original and fused QB multispectral images 
  
  
  
  
  
  
  
  
  
  
  
  
  
  
XS1 XS2 XS3 XS4 
xs; | Before 1 0.9893 0.9647 | 0.0905 
After ] 0.9671 0.9409 | 0.1645 
XS2 Before | 0.9893 1 0.0723 | 0.1506 
After 0.9671 ] 0.9740 | 0.1889 
XS3 Before | 0.9647 0.9723 1 0.0193 
After 0.9409 0.9740 ] 0.0593 
XS4 Before | 0.0905 0.1596 0.0193 ] 
After 0.1645 0.1889 0.0593 1 
  
  
Table 4. Correlation coefficients among the QB multispectral 
bands before and after fusion 
  
  
  
  
  
  
  
  
  
Bandi Band2 | Band3 Band4 
PCA 0.7743 | 0.7743 | 0.7907 0.9621 
Brovey 0.8766 | 0.6302 - 0.4683 
Multiplicative | 0.8539 | 0.8777 | 0.8958 0.861 
Wavelet 0.8501 | 0.9323 | 0.9516 0.9374 
  
  
  
Table 5. Correlation coefficients between original and fused 
QB multispectral bands for different fusion methods 
  
  
Despite the above studies, one correlation coefficient can only 
represent the overall quality of the fusion results. In fact, fusion 
quality can be higher for certain features than others since they 
can give a better response to the fusion algorithm. For this 
reason, we suggest to calculate the correlation coefficient for a 
small window instead of the entire image. A window that has a 
predefined size w (i.e. w = 3 for a 3X3 window) is taken and 
the correlation coefficient is calculated for the two images that 
falls in this window. In this way, the texture contents at higher 
levels of details in the before- and after- fused images can be 
directly compared. This process is started from the upper left 
corner of the image and continued until whole image is 
covered. At the end of this process, a quality matrix made of 
the correlation coefficients is created. Brighter places in this 
quality matrix suggest better fusion quality than darker places. 
Figure 7 shows the quality matrices represented as a grey level 
image. 
  
  
  
  
  
Pan vs. XS Band-1 Pan vs. Fused XS Band-1 
  
  
Figure 7. Quality matrices before (left) and after (right) fusion 
calculated for QB images using 3 x 3 window.
	        
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