International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences
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Figure 2. Design of the convergent geometry
Figure 3. Correlated clouds of points.
3. METHODS
Different estimates have been given, all of them validated
afterwards, letting us know the mean square error and compare
models' accuracy.
3.1 Inverse Distance Weighing (IDW)
The z coordinates of the point to interpolate are estimated
allocating weights to environment data in inverse relation to
distance; nearest points thus getting more weight in
calculations. It is an exact method that estimates the value of
the variable for a point not belonging to the sample, using the
following expression (1):
2
i
i=l
zi
> =
ON
|
i=l
where dj; is the Euclidean distance between each data item and
the point to interpolate, and p is the weighting exponent. The
least mean square error of the prediction (RMSPE) is calculated
in order to determine the optimal exponent value. The optimal
power (p) value is determined by minimizing the root mean
square prediction error (RMSPE). The RMSPE is the statistic
that is calculated from cross-validation. In cross-validation,
each measured point is removed and compared to the predicted
value for that location. The RMSPE is a summary statistic
quantifying the error of the prediction surface (Johnston et.alt.
RMSPE
M Op value
1.5 2 2.5
exponent
e
Un
Lo
Figure 4. Optimal exponent determination graph.
3.2 Radial basis function (RBF)
Radial base functions comprise a wide group of exact and local
interpolators that use an equation with its base dependent on
distance. Generally speaking, the value of the variable is given
by the following expression (2):
z; = NO ; F(d;) (2)
i=l
where F(dij) is the radial base function, with d being the
distance between points; a, the coefficients that will be
calculated solving a lincar system of n equations, and n, the
number of neighbouring sample points involved in obtaining z;.
In this case, we will use a radial base multiquadratic-type
function (3)(Aguilar et. al, 2001), which comprises an r
parameter: the softening factor. This value should be previously
tested according to the data in each case; a very high value will
generate a very softened surface, far from the real surface.
F(d;) 24d; *r' (3)
, Vol XXXV, Part BS. Istanbul 2004
Internatioi
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