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isprsarchives XL 3 W3 543 2015

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Figure 1: Data Life Cycle in the aspect of transform informationto knowledge (According to R
Figure 2: The increase of data size has surpassed the capabilitiesof computation (C.L
Figure 5: Distribution of the sub raster blocks to a region basedprocessing aspect
Figure 8 has four dataset and two processes. PS1 takes datasets 1and 2 as input, and after execution DS3 dataset is created
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