Abstract
Aiming at the exploring of vegetation coverage in Shandong province, this paper provided a method based on remote sensing. Firstly, the Landsat8 OLI image was selected to be the data resources, and then, the remote sensing image of Shandong Province was separated from the original image by using vector data as a tool. And then, Using the method of band match, the NDVI value of Shandong Province was calculated, and then the FVC value of Shandong Province was obtained using the formula. The FVC distribution map of Shandong Province was plotted using resampling method. Finally, the vegetation coverage of each category was calculated using pixel statistical method. The research results of this article can provide effective reference for environmental protection and sustainable development in Shandong Province.
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