Satellite Imagery, Remote Sensing & Machine Learning
About This Course
Transform raw satellite data into actionable environmental insights with this 8-course program bridging traditional remote sensing with cutting-edge machine learning. Start by learning fundamentals: understanding how satellites measure Earth, calculating vegetation indices, & working with LiDAR 3D point clouds. Progress to advanced techniques of spatial statistics, SAR processing for disaster response, & climate data analysis. Dive into machine learning with hands-on training in CNNs for land cover classification, transfer learning, & model interpretability using Grad-CAM. Master Google Earth Engine for large-scale environmental monitoring without complex infrastructure. Through practical projects, analyze forest health, detect flood extent, evaluate air quality, & track vegetation trends. Each course emphasizes real-world application, from creating elevation models to generating climate reports for ESG initiatives. Learn to handle diverse data types—multispectral, SAR, LiDAR, & climate datasets—while building confidence in analysis & communication. Whether monitoring deforestation, assessing disasters, or tracking climate indicators, gain skills essential for environmental consulting & sustainability reporting. Perfect for GIS professionals, environmental analysts, & data scientists entering Earth observation. By completion, you'll confidently process satellite imagery, apply machine learning to environmental challenges, & deliver insights supporting critical decisions.
Instructor
Satellite Imagery