Integrating Spatial Data Mining Technique to Identify Potential Landsat Data using K-Means and BPNN Algorithm
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چکیده
Spatial Data mining is one of the challenging field in data mining. The explosive development of spatial data and common use of spatial databases highlight the need for the automated detection of spatial knowledge. Computing data mining algorithms such as clustering on massive spatial data sets is still not feasible nor efficient today. In this research first we 1 / 4
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تاریخ انتشار 2016