International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B5. Istanbul 2004
4.2 Determination of search radius
Tests were carried out choosing neighbours within a circular
area of variable radius, keeping the number of neighbouring
points fixed at 30 with at least 12 within, using selection
without quadrant, over the whole sector (table 9).
Method Semiaxis RMS
0.50 0.025
IDW 0.10 0.025
0.05 0.025
0.01 0.028
0.5 0,041
Krieim 0.1 0.041
gme 0.05 0.042
0.01 0.021
constant.
4.3 Choice of optimum exponent
4.4 Statistical evaluation
Table 9. RMS according to neighbours' selection radius.
In the light of results, we can affirm that the method most
homogeneous to the selection circumference is IDW, knowing
that varying the radius, the model's mean square error remains
[t can be due to the fact that all points that take part in the
interpolation have already been selected within a 5-cm radius;
thus an increase in radius doesn't alter the interpolation at all.
Hence the RMS varies when the radius decreases to 1 cm.
The use of the IDW method implies choosing the optimum
exponent of the weighting functions. In our case -having
analysed all the data- the exponent with minimum RMSPE (i.e.
the optimum) has a value of 1.257; which not only means that it
is not a linear relationship, but that more importance is given to
far away points than is this exponent is quadratic.
Comparing among models using the value of a 10-cm radius
without quadrants, we obtained (table 10):
Method RMS (m)
IDW 0.025
RBF 0.046
Kriging 0.041
Table 10.. Comparison among the different models.
4.5 Visual evaluation
Visual evaluation shows little differences between three
analized methods. The model using IDW method (figure 11),
the model with RBF method (figure 13) and the model
generated by kriging method (figure 8).
E igure 11; IDW model
Figure 12: RBF model
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