Visualizing Geospatial Data in R

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Level

Beginner

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Paid

Certificate

Paid

Learn to read, explore, and manipulate spatial data then use your skills to create informative maps using R.

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Course Description

What You’ll Learn

Basic mapping with ggplot2 and ggmap

We’ll dive in by displaying some spatial data — property sales in a small US town — using ggplot2 and we’ll introduce you to the ggmap package as a quick way to add spatial context to your plots. We’ll talk about what makes spatial data special and introduce you to the common types of spatial data we’ll be working with throughout the course.

Raster data and color

While the sp package provides some classes for raster data, the raster package provides more useful classes. You’ll be introduced to these classes and their advantages and then learn to display them. The examples continue with the theme of population from Chapter 2, but you’ll look at some much finer detail datasets, both spatially and demographically. In the second half of the chapter you’ll learn about color — an essential part of any visual display, but especially important for maps.

Point and polygon data

You can get a long way with spatial data stored in data frames, but it makes life easier if they are stored in special spatial objects. In this chapter we’ll introduce you to the spatial object classes provided by the sp package, particularly for point and polygon data. You’ll learn how to explore and subset these objects by exploring a world map. The reward for learning about these object classes: we’ll show you the package tmap which requires spatial objects as input, but makes creating maps really easy! You’ll finish up by making a map of the world’s population.

Data import and projections

In this chapter you’ll follow the creation of a visualization from raw spatial data files to adding a credit to a map. Along the way, you’ll learn how to read spatial data into R, more about projections and coordinate reference systems, how to add additional data to a spatial object, and some tips for polishing your maps.

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    Visualizing Geospatial Data in R
    Visualizing Geospatial Data in R
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