Full text: International cooperation and technology transfer

172 
Picture 7: the same area in two different spatial 
resolutions images (30 m and 500 m) 
Soft classification allows evaluating the classification 
accuracy by a modified confusion matrix that compare, 
class by class, not the number of pixels but the 
membership degrees. In particularly snow class accuracy 
classification is valued as the RMS of differences 
between well-known snow degrees and classified ones 
for a testing set. Some tests done give snow membership 
degree accuracy about 10%; this value is suitable for 
small scale snowpack monitoring. 
Snow covered area con be evaluated as sum of the 
contributions of all the pixels in the image. Each 
contribution is in proportion to the pixel snowy condition 
in the following way: 
Nimage 
Snow area = pixel size • £ snowdegree j 
i=1 
where: 
Snow area is the snow-covered area estimated. 
Pixel size is the terrain area corresponding to the 
sensor IFOV. 
Nimage is the number of pixels of image 
Snowdegreei is the membership degree to snow 
class assigned to pixel i; this value represents the 
snow presence percentage into the pixel. 
Snow covered area estimation by soft classification is not 
underestimated because all the pixels contributions are 
considered by the snow membership degrees to snow 
class. 6 
6. FINAL REMARKS 
Snow covered area estimation via remote sensing is not 
a new object. At the beginning it was done by 
photointerpretation but this is a quite long via and 
accuracy can not be evaluated. Estimation by automatic 
hard classification (i.e. Maximum Likelihood algorithm) 
requires less time but the accuracy is not suitable 
because the system is unable to menage mixture and 
snowpack borderlines are recorded as mixed pixels. Soft 
classification by Fuzzy-statistic algorithm gives good 
results (as accuracy of estimation of snowpack 
extension) but requires training set about mixture too and 
this information can be difficult to find and to valued. 
Next step will be use Fuzzy neural network system that 
allow supervised soft classification but does not require 
training set about mixture. 
REFERENCES 
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1998 
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1221 
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measurements 
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26 
9. Miller, D. M.; Kamkisky, E. D.; Rana, S. (1995) - 
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Computers and Geosciences, Voi 21, pp 377-386 
10. Norwegian Hydropower Companies (1998): Satellite 
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28, pp 194-201
	        
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