Contents
|
An overview
This page lists the main topics, followed by a detailed contents page |
|
1. Introduction to categorisation of objects from their data
This chapter gives an introduction to the concepts of classification and a short introduction into the basics of visual recognition and sensing |
|
2. Introduction into the mathematical methods
The basic mathematical methods like probability, probability density functions like scatterplots |
|
3. What is classification?
Here we put all the math together and learn about the basic methods and techniques of classifying remote sensing data |
|
4. The Minimum Distance Classifier
A first and basic metrics used for classification |
|
5. The Maximum Likelihood Classifier
A second and less simple metrics used for classification |
|
6. Errors and Costs in Classification
Is classification a way to automatically adding information? Here we learn about the costs |
|
7. Exercises and Tutorials
Additional information to specific topics, exercises and tutorials. |
|
8. References
A list of references of literature and data sources as well as suggestions for further reading |
|
9. Links
A list of useful external links dealing with the topic (e.g. references, data sources, research projects, case studies) |
|
10. Image Credits
A list of all images used in the tutorial with indications of their sources |
|
11. Authors
A list of the authors who created the tutorial |
|
12. Exercises, Answers and Tutorials
Additional information to specific topics, exercises, answers and tutorials. (This link is only visible for teachers) |