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Google Earth

 During our final week in Cartography, we learned how to use Google Earth Pro to create a map density map with a hydrography element, as well as a recorded tour of the map.

Map 1: Dot density and hydrography of South Florida. 

 I converted the surface water file to a Google Earth compatible KMZ file on ArcGIS Pro using the Layer to KMZ tool. Then using Google Earth Pro, I added a jpeg image of the legend using Image Overlay. Lastly, I created a recorded tour of the map and explored camera panning features. 

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