QGIS is a powerful open-source GIS platform for analyzing and visualizing geographic data. In this course, you’ll build on your QGIS fundamentals and learn to work with current object detection workflows and plugins. You’ll analyze raster data such as orthophotos and satellite imagery and convert detection results into usable vector layers for further GIS analysis.
Object detection in QGIS goes beyond manual digitization. You will learn how AI models automatically recognize objects such as buildings, infrastructure, trees, or other spatial features. You will also learn how to prepare data, evaluate results, identify errors, and interpret uncertainties, ensuring that the outcomes are reliable and reproducible.
In QGIS Object Detection, you’ll learn how to apply object detection results in practical workflows, such as for monitoring, inventories, reporting, or policy analysis. The course demonstrates how to use open-source tools to integrate advanced object detection into your existing GIS environment.
Please note! Knowledge of QGIS is required for this course. If you do not have this knowledge, we recommend taking the QGIS Basic Course first.
What will you learn in the QGIS Object Detection course?
In this course, you’ll learn step-by-step how object detection works within QGIS. You’ll start with the basics: what object detection is, what types exist, and how AI-based detection differs from traditional GIS analysis.
Next, you’ll get hands-on experience with:
- Object detection on raster data such as satellite imagery and aerial photos
- Working with AI and deep learning plugins within QGIS
- Preparing input data and interpreting detection results
- Converting detections to vector layers
- Visualizing, verifying, and applying object detection results
You will not only learn how to detect objects, but also how to use the results responsibly in analysis and decision-making.
Why choose the QGIS Object Detection course?
This course is unique because object detection is approached entirely from a GIS practical perspective. No abstract AI theory, but directly applicable workflows within QGIS. You’ll learn how to use object detection in a reproducible and verifiable way with open-source tools.
You’ll learn, among other things:
- Which object detection methods are suitable for different applications
- How to effectively combine AI plugins and QGIS tools
- How to validate and interpret detection results
- How to use object detection for monitoring, policy, and research
The course is practical, open-source, and focused on realistic GIS applications.
Who is this course intended for?
This course is intended for GIS users who want to automatically recognize and analyze objects in spatial data. Do you work in spatial planning, the environment, ecology, infrastructure, agriculture, research, cartography, or policy? Then this course offers immediate value.
You need basic knowledge of QGIS, but no experience with AI, deep learning, or programming. Do you want to stop digitizing objects manually and instead detect them in a smart and reproducible way? Then QGIS Object Detection is a logical next step.