Geostatistical Analysis: Software Flashpoint
نویسندگان
چکیده
Most spatial analysis computer programs are available on the ‘World Wide Wait’ leading this framework to a new GIS platform. Ultimately, this world expects fast answers because if it works then it is obsolete. To review and to evaluate the present spatial geostatistical analysis software and withdraw major conclusions regarding its implementation status are the major goal of this article. Among others, Surface III, VarioWin, Regard, GSLib, SpaceStat and ESRI Geostatistical Analyst are analyzed. Major conclusions regarding the present status of geostatistical software are drawn.
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