ul 2004
5. CONCLUSION
In this paper we compare 12 different interpolation
methods. For each method, we analyze its
applicability, algorithm, efficiency and advantage.
There is no absolutely best method but only the
optimal choice under certain circumstances. One
should first review the characteristic and theorem of
each method as well as the property and spatial
analysis of data before he or she can successfully
select a spatial interpolation method which is
relatively best in certain situation. However, the
outcome should be evaluated by conscientious
experiences.
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