On the predictive value of the WorldView3 VNIR and SWIR spectral bands

This paper illustrates the improvements in classification accuracy obtained by using the 16 WorldView-3 spectral bands as compared against the more typical 4-band platforms. Experiments revealed that the additional SWIR bands improve classification performance by over 20% and allow discriminating specific classes such as metal roofs, concrete surfaces, and soil.

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