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 Learning Geospatial Analysis with Python
 Learning Geospatial Analysis with Python

Learning Geospatial Analysis with Python: Unleash the power of Python 3 with practical techniques for learning GIS and remote sensing , Fourth Edition

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Profile Icon Joel Lawhead
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Full star icon Full star icon Full star icon Full star icon Half star icon 4.9 (8 Ratings)
Paperback Nov 2023 432 pages 4th Edition
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Learning Geospatial Analysis with Python

Learning about Geospatial Analysis with Python

This chapter is an overview of geospatial analysis. We will see how geospatial technology is currently impacting our world by looking at a case study of one of the worst pandemics the world has ever seen and how geospatial analysis helped track the spread of the disease to buy researchers time to create a vaccine. Next, we’ll step through the history of geospatial analysis, which predates computers and even paper maps! Then, we’ll examine why you might want to learn a programming language as a geospatial analyst as opposed to just using Geographic Information System (GIS) applications. We’ll realize the importance of making geospatial analysis as accessible as possible to the broadest number of people. Then, we’ll step through basic GIS and remote sensing concepts and terminology that will stay with you through the rest of this book. Finally, we’ll start using Python for geospatial analysis by building the simplest possible GIS from scratch!

Here’s a quick overview of the topics we’ll be covering in this chapter:

  • Geospatial analysis and our world
  • History of geospatial analysis
  • Evolution of Geographic Information Systems (GISs)
  • Remote sensing concepts
  • Point cloud data
  • Computer-aided drafting
  • Geospatial analysis and computer programming
  • The importance of geospatial analysis
  • GIS concepts
  • Common GIS processes
  • Common remote sensing processes
  • Common raster data concepts
  • Creating the simplest possible Python GIS

By the end of this chapter, you will understand geospatial analysis as a way of answering questions about our world and the differences between GIS and remote sensing.

Technical requirements

This chapter provides a foundation for geospatial analysis, which is needed to pursue any subject in the areas of remote sensing and GIS, including the material in the rest of the chapters of this book. The code for this book can be found in the following GitHub code repository: https://github.com/PacktPublishing/Learning-Geospatial-Analysis-with-Python-4th-Edition. We will be using Python 3.10.9 for the code examples, which will be provided through the Anaconda 3 platform. The code files for this chapter can be accessed on GitHub: https://github.com/PacktPublishing/Learning-Geospatial-Analysis-with-Python-Fourth-Edition/tree/main/B19730_01_Asset_Files.

Geospatial analysis and our world

In December 2019, doctors reported a cluster of cases of a mysterious pneumonia-like illness in Wuhan, China. At first, it was thought to be a minor outbreak, but as the number of cases continued to rise, it quickly became clear that this was something much more serious.

As the virus began to spread to other countries, the World Health Organization (WHO) declared a global health emergency on January 30, 2020. Despite this warning, many countries were slow to take action, and the virus continued to spread unchecked.

By March 2020, the virus had reached pandemic proportions, with cases reported in every corner of the globe. Governments scrambled to respond, implementing lockdowns and travel bans in an attempt to slow the spread of the virus.

As the number of cases and deaths continued to rise, the world watched in horror as hospitals became overwhelmed and healthcare systems struggled to keep up. For the first time in over a century, humanity found itself in a global pandemic, battling a new virus named COVID-19.

As with any new virus, there was no vaccine or even an effective treatment. Medical experts raced to develop a vaccine. The only solution in the short term was to buy time. To do that, the world needed a way to track the virus as it spread to focus resources in the areas it raged most intensely.

In the US, at Johns Hopkins University in Baltimore, Maryland, a PhD candidate named Ensheng Dong had watched as news of the virus spread from his home country – China. As a student, Dong studied both epidemiology and a technology called GIS, a computer system that displays and analyzes geographically referenced information. Dong became worried about his family’s safety, and when the first COVID case hit Washington, he wanted to take action.

The next day, he met with his faculty advisor, Dr. Lauren Gardner, who suggested he use his knowledge of epidemiology and GIS to create a dashboard that would track the virus for the world. Dong began scouring the internet for COVID data and posted it to an online map twice a day while barely sleeping in between. He posted red dots on a map with a dark background. In areas with a large number of cases, he would increase the size of the dot to show the severity of the spread. As word of the dashboard grew, Dong began receiving help to automate the data collection and posting process.

These dashboard map visualizations helped public health officials understand where the virus was spreading and identify hotspots that needed extra attention. It helped track the effectiveness of containment measures such as lockdowns and social distancing rules. It also allowed news organizations to notify the public.

The following figure shows the COVID-19 dashboard:

Figure 1.1 – The COVID-19 dashboard

Figure 1.1 – The COVID-19 dashboard

Government organizations used other GIS maps as well in response to the pandemic to identify high-risk populations. By overlaying data on demographics, income levels, and pre-existing health conditions, GIS helped officials identify communities that were particularly vulnerable to the virus and target resources to those areas.

Officials also used GIS to help manage the logistics of the pandemic’s response. For example, they used it to plan the distribution of personal protective equipment, medical supplies, and vaccines. GIS also tracked the movements of healthcare workers and other essential personnel, ensuring they were deployed to where they were needed most.

In short, GIS has played a vital role in the response to the pandemic, providing critical information and tools to help organizations respond to the crisis more effectively.

Other uses of GIS

Geospatial analysis can be found in almost every industry, including real estate, oil and gas, agriculture, defense, politics, health, transportation, and oceanography, to name a few. For a good overview of how geospatial analysis is used in dozens of different industries, visit https://www.esri.com/en-us/what-is-gis/overview.

History of geospatial analysis

Geospatial analysis can be traced back as far as 17,000 years ago, to the Lascaux cave in southwestern France. In this cave, Paleolithic artists painted commonly hunted animals and what many experts recently concluded are dots representing the animals’ lunar cycles to note seasonal behavior patterns of prey, such as mating or migration. Though crude, these paintings demonstrate an ancient example of humans creating abstract models of the world around them and correlating spatial-temporal features to find relationships. The following figure shows one of these paintings – a bull with four dots on its back, cross-referencing a lunar time reference:

Figure 1.2 – A cave painting of prey tagged with a lunar cycle reference to predict when it will appear in hunting grounds again

Figure 1.2 – A cave painting of prey tagged with a lunar cycle reference to predict when it will appear in hunting grounds again

Over the centuries, the art of cartography and the science of land surveying have developed, but it wasn’t until the 1800s that significant advances in geographic analysis emerged. Deadly cholera outbreaks in Europe between 1830 and 1860 led geographers in Paris and London to use geographic analysis for epidemiological studies.

In 1832, Charles Picquet used different halftone shades of gray to represent the deaths per thousand citizens in the 48 districts of Paris as part of a report on the cholera outbreak. In 1854, Dr. John Snow expanded on this method by tracking a cholera outbreak in London as it occurred. By placing a point on a map of the city each time a fatality was diagnosed, he was able to analyze the clustering of cholera cases. Snow traced the disease to a single water pump and prevented further cases. The following zoomed-in map section has three layers with streets, a labeled dot for each pump, and bars for each cholera death in a household:

Figure 1.3 – 1854 map of London tracking a cholera outbreak, with dots for the location of water pumps that were potential sources of the disease and bars showing the number of outbreaks per household

Figure 1.3 – 1854 map of London tracking a cholera outbreak, with dots for the location of water pumps that were potential sources of the disease and bars showing the number of outbreaks per household

Geospatial analysis wasn’t just used for the war on diseases. For centuries, generals and historians have used maps to understand human warfare. A retired French engineer named Charles Minard produced some of the most sophisticated infographics that were ever drawn between 1850 and 1870. The term infographics is too generic to describe these drawings because they have strong geographic components. The quality and detail of these maps make them fantastic examples of geographic information analysis, even by today’s standards. Minard released his masterpiece in 1869:

“La carte figurative des pertes successives en hommes de l’Armée Française dans la campagne de Russie 1812-1813,” which translates to “Figurative map of the successive losses of men of the French army in the Russian Campaign 1812-13.”

This depicts the decimation of Napoleon’s army in the Russian campaign of 1812. The map shows the size and location of the army over time, along with prevailing weather conditions. The following figure contains four different series of information on a single theme. It is a fantastic example of geographic analysis using pen and paper. The size of the army is represented by the widths of the brown and black swaths at a ratio of one millimeter for every 10,000 men. The numbers are also written along the swaths. The brown-colored path shows soldiers who entered Russia, while the black-colored path represents the ones who made it out. The map scale is shown to the right in the center as one French league (2.75 miles or 4.4 kilometers). The chart at the bottom runs from right to left and depicts the brutally freezing temperatures that were experienced by the soldiers on their march home from Russia:

Figure 1.4 – Charles Minard’s famous geographic story map showing the decimation of Napoleon’s army during the Russian Campaign of 1812. It combines geography, time, and statistics

Figure 1.4 – Charles Minard’s famous geographic story map showing the decimation of Napoleon’s army during the Russian Campaign of 1812. It combines geography, time, and statistics

While far more mundane than a war campaign, Minard released another compelling map cataloging the number of cattle sent to Paris from around France. Minard used pie charts of varying sizes in the regions of France to show each area’s variety and the volume of cattle that was shipped:

Figure 1.5 – Another map by Minard combining geography and statistics showing beef production in France using pie charts

Figure 1.5 – Another map by Minard combining geography and statistics showing beef production in France using pie charts

In the early 1900s, mass printing drove the development of the concept of map layers – a key feature of geospatial analysis. Cartographers drew different map elements (vegetation, roads, and elevation contours) on plates of glass that could then be stacked and photographed to be printed as a single image. If the cartographer made a mistake, only one plate of glass had to be changed instead of the entire map. Later, the development of plastic sheets made it even easier to create, edit, and store maps in this manner. However, the layering concept for maps as a benefit to analysis would not come into play until the modern computer age.

Evolution of Geographic Information Systems (GISs)

Computer mapping evolved with the computer itself in the 1960s. However, the origin of the term GIS began with the Canadian Department of Forestry and Rural Development. Dr. Roger Tomlinson headed a team of 40 developers in an agreement with IBM to build the Canada Geographic Information System (CGIS). The CGIS tracked the natural resources of Canada and allowed those features to be profiled for further analysis. The CGIS stored each type of land cover as a different layer.

It also stored data in a Canadian-specific coordinate system, suitable for the entire country, which was devised for optimal area calculations. While the technology that was used was primitive by today’s standards, the system had phenomenal capability at that time. The CGIS included the following software features, all of which can still be found in modern GIS software over 60 years later:

  • Map projection switching
  • The rubber sheeting of scanned images
  • Map scale change
  • Line smoothing and generalization to reduce the number of points in a feature
  • Automatic gap closing for polygons
  • Area measurement
  • The dissolving and merging of polygons
  • Geometric buffering
  • The creation of new polygons
  • Scanning
  • The digitizing of new features from the reference data

More about CGIS

The National Film Board of Canada produced a documentary in 1967 on the CGIS, which you can view at https://www.youtube.com/watch?v=3VLGvWEuZxI.

Tomlinson was often called the father of GIS. After launching the CGIS, he earned his doctorate from the University of London with his 1974 dissertation, titled The application of electronic computing methods and techniques to the storage, compilation, and assessment of mapped data, which describes GIS and geospatial analysis. Tomlinson ran his own global consulting firm, Tomlinson Associates Ltd., where he remained an active participant in the industry late in life. He was often found delivering keynote addresses at geospatial conferences.

CGIS is the starting point of geospatial analysis, as defined by this book. However, this book would not have been written if not for the work of Howard Fisher and the Harvard Laboratory for Computer Graphics and Spatial Analysis at the Harvard Graduate School of Design. His work on the SYMAP GIS software, which outputs maps to a line printer, started an era of development at the laboratory, which produced two other important packages and, as a whole, permanently defined the geospatial industry. SYMAP led to other packages, including GRID and the Odyssey project, which come from the same lab:

  • GRID was a raster-based GIS system that used cells to represent geographic features instead of geometry. GRID was written by Carl Steinitz and David Sinton. The system later became IMGRID.
  • Odyssey was a team effort led by Nick Chrisman and Denis White. It was a system of programs that included many advanced geospatial data management features that are typical of modern geodatabase systems. Harvard attempted to commercialize these packages with limited success. However, their impact is still seen today.

Virtually, every existing commercial and open source package owes something to these code bases.

Howard Fisher produced a film in 1967 using the output from SYMAP to show the urban expansion of Lansing, Michigan, from 1850 to 1965 by hand-coding decades of property information into the system. This analysis took months. However, in this day and age, it would take only a few minutes to recreate them because of modern tools and data.

More on SYMAP

You can watch the film at https://www.youtube.com/watch?v=xj8DQ7IQ8_o.

There are dozens of graphical user interface (GUI) geospatial desktop applications available today from companies, including Esri, ERDAS, Intergraph, ENVI, and so on. Esri is the oldest, continuously operating GIS software company, which started in the late 1960s. In the open source realm, packages including Quantum GIS (QGIS) and the Geographic Resources Analysis Support System (GRASS) are widely used. Beyond comprehensive desktop software packages, software libraries for building new software exist in the thousands.

GIS can provide detailed information about the Earth, but it is still just a model. Sometimes, we need a direct representation to gain knowledge about current or recent changes on our planet. At that point, we need remote sensing.

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Key benefits

  • Create GIS solutions using the new features introduced in Python 3.10
  • Explore a range of GIS tools and libraries, including PostGIS, QGIS, and PROJ
  • Identify the tools and resources that best align with your specific needs
  • Purchase of the print or Kindle book includes a free PDF eBook

Description

Geospatial analysis is used in almost every domain you can think of, including defense, farming, and even medicine. In this special 10th anniversary edition, you'll embark on an exhilarating geospatial analysis adventure using Python. This fourth edition starts with the fundamental concepts, enhancing your expertise in geospatial analysis processes with the help of illustrations, basic formulas, and pseudocode for real-world applications. As you progress, you’ll explore the vast and intricate geospatial technology ecosystem, featuring thousands of software libraries and packages, each offering unique capabilities and insights. This book also explores practical Python GIS geospatial applications, remote sensing data, elevation data, and the dynamic world of geospatial modeling. It emphasizes the predictive and decision-making potential of geospatial technology, allowing you to visualize complex natural world concepts, such as environmental conservation, urban planning, and disaster management to make informed choices. You’ll also learn how to leverage Python to process real-time data and create valuable information products. By the end of this book, you'll have acquired the knowledge and techniques needed to build a complete geospatial application that can generate a report and can be further customized for different purposes.

Who is this book for?

This book is for Python developers, researchers, or analysts who want to perform geospatial modeling and GIS analysis with Python. Basic knowledge of digital mapping and analysis using Python or other scripting languages will be helpful.

What you will learn

  • Automate geospatial analysis workflows using Python
  • Understand the different formats in which geospatial data is available
  • Unleash geospatial tech tools to create stunning visualizations
  • Create thematic maps with Python tools such as PyShp, OGR, and the Python Imaging Library
  • Build a geospatial Python toolbox for analysis and application development
  • Unlock remote sensing secrets, detect changes, and process imagery
  • Leverage ChatGPT for solving Python geospatial solutions
  • Apply geospatial analysis to real-time data tracking and storm chasing

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Table of Contents

17 Chapters
Part 1:The History and the Present of the Industry Chevron down icon Chevron up icon
Chapter 1: Learning about Geospatial Analysis with Python Chevron down icon Chevron up icon
Chapter 2: Learning about Geospatial Data Chevron down icon Chevron up icon
Chapter 3: The Geospatial Technology Landscape Chevron down icon Chevron up icon
Part 2:Geospatial Analysis Concepts Chevron down icon Chevron up icon
Chapter 4: Geospatial Python Toolbox Chevron down icon Chevron up icon
Chapter 5: Python and Geospatial Algorithms Chevron down icon Chevron up icon
Chapter 6: Creating and Editing GIS Data Chevron down icon Chevron up icon
Chapter 7: Python and Remote Sensing Chevron down icon Chevron up icon
Chapter 8: Python and Elevation Data Chevron down icon Chevron up icon
Part 3:Practical Geospatial Processing Techniques Chevron down icon Chevron up icon
Chapter 9: Advanced Geospatial Modeling Chevron down icon Chevron up icon
Chapter 10: Working with Real-Time Data Chevron down icon Chevron up icon
Chapter 11: Putting It All Together Chevron down icon Chevron up icon
Assessments Chevron down icon Chevron up icon
Index Chevron down icon Chevron up icon
Other Books You May Enjoy Chevron down icon Chevron up icon

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Greg Cocks Feb 16, 2024
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[disclaimers – (i) a publisher’s representative solicited a review of this book and provided an e-book version for that purpose but no recompense, (ii) this is my impartial, personal review - and hence is not an endorsement by my employer, implicit or otherwise.]--Chapters:Learning Geospatial Analysis with PythonLearning About Geospatial DataThe Geospatial Technology LandscapeGeospatial Python ToolboxPython And Geospatial AlgorithmsCreating And Editing GIS DataPython And Remote SensingPython And Elevation DataAdvanced Geospatial ModelingWorking With Real-Time DataPutting It All TogetherAssessments--Anecdotal I know: in a previous role, I wrote, tested and applied code for ‘geospatial analysis with Python’, applied hydrologic science. With a new role – which I am grateful for – I don’t get to do this often. When the publisher asked me to look at this new (4th Edition) of this book and provide my impression, I was therefore very happy to do so, a nudge to get me back into some old tasks in a guided way, that will help my current role in a technologies platform agnostic way.My initial look over this book has, frankly, got me excited, as cliché as that might sound! The chapters are well laid out, leading you into your exploration and learning, the writing is far from dry, the description of options and different possible approaches is excellent and so much more.The first three chapters bring you into the space, and are wonderful refreshers for those more experienced, with some reminders that GIS, spatial analysis and applied science, business, technology, etc is for a purpose, to help solve problems, ‘better, faster, stronger’ – helping tale away through code and association automation some of the mundanity of spatial data processing, analysis and results presentation and implementation in pragmatic ways – with associated reduction in errors, increase in accuracy, etc. That all sounds a little ‘fluffy I know, but I think it is the core of what we do as spatial professionals, especially in research and/or bringing systems to a production environment.The chapters following are where you get to ‘dig in’, with outstanding descriptions of the what, how, why of the various software and libraries that form the foundation of the book and are used throughout, descriptions of many spatial algorithms and how to apply them in a Python setting, ditto with the large volume of readily available and powerful remote sensing (open) data, ditto the strengths and what to be careful with in terms of elevation data.As the author states, “geospatial data editing and processing helps use understand the world as it is”, and this is the thread of the chapter on geospatial modeling, and for me the most powerful chapter in the book, as the applied scientist that I like to consider myself.Working with real-time data is – frankly – something I have not had a lot of experience in and so I look forward to the exposure and grounding that this chapter will bring, as I can see myself wanting if not needing to use it ongoing.The final chapter is one that, through my initial look, will be the most powerful & worthwhile for me. For those of you old enough, the dry-as-dust ‘worked examples’ like the Northwind database and other such are not in evidence here. I used to teach a little (and also for some of my mentees) the one thing I tried to get across is to work with real-world data and problem-solving as soon and as often as you can in your learning processes, to experience all of its warts, missing info, non-clean contributing datasets, and more – and this chapter appears to do just that! (as you will expect from a self-help book like this, especially one of its evident quality and usefulness, there are example code and data files to download – and my initial appraisal is that they are excellent, and I know that I am using that word a lot in this review.)In my opinion, you will like this book, get value from it, not get bored or ‘stuck’, and will come out the other side a better spatial professional, and I certainly expect to do so as I work through it over the coming months.
Amazon Verified review Amazon
jakethesnake Feb 21, 2024
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I recently had the pleasure of diving into 'Geospatial Analysis with Python - Fourth Edition,' and it has been an enlightening experience. This book masterfully unravels the complexities of geospatial analysis, making it accessible and engaging. The authors do an excellent job of blending theoretical knowledge with practical applications, providing readers with the tools and confidence to tackle their own geospatial projects. The updated content in this edition, including the latest Python libraries and techniques, has been particularly valuable. Whether you're a beginner or looking to sharpen your skills, this book is a must-have for anyone interested in unlocking the power of Python for geospatial analysis. Highly recommended!
Amazon Verified review Amazon
John D Jan 19, 2024
Full star icon Full star icon Full star icon Full star icon Full star icon 5
This is not your typical geospatial and python book! While seemingly geared towards beginners it has content that is interesting even for seasoned professionals. Some of the key aspects I enjoyed most about this book are:1. Full examples of common geospatial algorithms written in python2. The comprehensive layout of the FOSS geospatial ecosystem3. Useful real-world code for accessing and cleaning data4. The background history of GIS and remote sensingMy main critique would be that for a book about analysis, I found the example analytics to be a little basic. There are also a couple of examples of using ChatGPT to help you write code which I think would have been better as an aside rather than an example.All said though, it's a great book, and I will be referencing it in the future!
Amazon Verified review Amazon
Dagoberto Orozco Feb 19, 2024
Full star icon Full star icon Full star icon Full star icon Full star icon 5
As a geologist learning Python I found this book very helpful since it uses practical examples that I can apply my the job. Moreover it was useful to refresh some of the subjects related to remote sensing and to understand what other tools for geospatial analysis are out there. The examples used in the book are easy to follow, well explain and realistic.
Amazon Verified review Amazon
Eniola Olakanmi Mar 12, 2024
Full star icon Full star icon Full star icon Full star icon Full star icon 5
This book is well packaged with good illustrations for anyone interested in Geospatial analysis with python. I love the fact that it covered the geospatial analysis tools including remote sensing and GIS. I am sure this is well detailed for both beginners and professional. I found chapters 5 and 6 very interesting. I'm still using the book anyways but I highly recommend.
Amazon Verified review Amazon
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Yes, all Early Access content is fully available through your subscription. You will need to have a paid for or active trial subscription in order to access all titles.

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Early Access is currently only available as a PDF or through our online reader. As we make changes or add new chapters, the files in your Packt account will be updated so you can download them again or view them online immediately.

How do I buy Early Access content? Chevron down icon Chevron up icon

Early Access is a way of us getting our content to you quicker, but the method of buying the Early Access course is still the same. Just find the course you want to buy, go through the check-out steps, and you’ll get a confirmation email from us with information and a link to the relevant Early Access courses.

What is Early Access? Chevron down icon Chevron up icon

Keeping up to date with the latest technology is difficult; new versions, new frameworks, new techniques. This feature gives you a head-start to our content, as it's being created. With Early Access you'll receive each chapter as it's written, and get regular updates throughout the product's development, as well as the final course as soon as it's ready.We created Early Access as a means of giving you the information you need, as soon as it's available. As we go through the process of developing a course, 99% of it can be ready but we can't publish until that last 1% falls in to place. Early Access helps to unlock the potential of our content early, to help you start your learning when you need it most. You not only get access to every chapter as it's delivered, edited, and updated, but you'll also get the finalized, DRM-free product to download in any format you want when it's published. As a member of Packt, you'll also be eligible for our exclusive offers, including a free course every day, and discounts on new and popular titles.