International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Vol XXXV, Part B2. Istanbul 2004 | Interna
Data Metrics 00:18:08 -138.04 154.02 -1.069 20.638 |
Local Polynomial 00:25:24 -161.73 149.95 -0.113 20.133 |
From statistics that above the form can get, all the aspect of mean error, are impracticable margin |
methods use the time most longer is Radial Basis for error of Polynomial Regression biger outside, the |
Function, and the shortest Polynomial Regression rest of worth and all very small. |
discrepancy very big, especially at the standard error With the scope of error margin worth for horizontal |
aspect, every kind of method have the obvious sit the mark, and the quantity is for vertical sit to |
margin as well, its inside than is interesting of is, at mark as follows of histogram: |
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Local Polynomial Inverse Distance to a Power Kriging
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Natural Neighbor
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Nearest Neighbor Polynomial Regression Radial Basis Function |
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Triangulation with Linear Moving Average Data Metrics
Interpolation
Top each statistical chart of form in, put the Regression, can then obviously find its distributing
method due to each interpolation horizontal sit to the appearance not good, the rest sketch all make the
mark the scope all different, therefore can't directly rule symmetry to distribute.
judge mutually the density of its distribute the
difference, but in the statistical chart of Polynomial
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