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    Geospatial Ai: Deep Learning For Satellite Imagery

    Posted By: ELK1nG
    Geospatial Ai: Deep Learning For Satellite Imagery

    Geospatial Ai: Deep Learning For Satellite Imagery
    Published 9/2025
    MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
    Language: English | Size: 3.18 GB | Duration: 4h 25m

    Build AI Models for Geospatial Data and Satellite Imagery

    What you'll learn

    Preprocess satellite imagery for AI using Python and Google Earth Engine.

    Build and train CNNs for geospatial tasks like crop health classification.

    Apply deep learning to analyze satellite data for real-world applications.

    Evaluate and optimize AI models with metrics and hyperparameter tuning.

    Requirements

    No prior experience needed! Basic Python knowledge is helpful but not required. You'll need a computer, internet access, and a free Google account for Google Colab. All tools and datasets are provided in the course!

    Description

    Transform satellite imagery into actionable insights with Geospatial AI!Dive into Geospatial AI: Deep Learning for Satellite Imagery and master the art of building AI models for geospatial analysis. This hands-on course equips you with cutting-edge skills to process Sentinel-2 imagery, design convolutional neural networks (CNNs), and tackle real-world challenges like crop health analysis, plant counting, land cover classification, and global weather emulation using FourCastNet. Begin with Python and AI fundamentals, then advance to powerful tools like Google Colab, Google Earth Engine, TensorFlow, and PyTorch for handling large-scale geospatial data. Learn to preprocess satellite imagery, calculate geospatial indices, conduct zonal statistics, and optimize models through hyperparameter tuning and cross-validation. Compare deep learning with traditional machine learning methods like Random Forest to understand their strengths in geospatial contexts. The course culminates in a capstone project where you’ll build a portfolio-ready land cover classification model, integrating data acquisition, preprocessing, and AI modeling. Perfect for data scientists, GIS professionals, or ML enthusiasts with basic Python and machine learning knowledge, this course bridges theory and practice to elevate your career in geospatial AI. Practical learning awaits! Through guided projects and quizzes, you’ll apply AI to solve pressing geospatial challenges, from monitoring deforestation to optimizing agricultural yields, preparing you to make a tangible impact in this dynamic field.Enroll today to unlock the future of satellite imagery analysis and become a geospatial AI expert!

    Overview

    Section 1: Introduction to Geospatial AI and Satellite Imagery

    Lecture 1 Welcome and Course Overview

    Lecture 2 Introduction to Geospatial Analysis

    Lecture 3 Introduction to Artificial Intelligence

    Lecture 4 Why Python is the Top Choice for AI?

    Lecture 5 Overview of Deep Learning in Geospatial Applications

    Section 2: Setting Up Your Deep Learning Environment

    Lecture 6 Step-by-Step Guide to GPU Setup

    Section 3: Cloud-Based AI with Google Colab

    Lecture 7 Introduction to Goggle Colab

    Lecture 8 Setting Up Google Colab for AI Projects

    Lecture 9 Running TensorFlow Models in the Cloud

    Lecture 10 Running PyTorch Models in the Cloud

    Lecture 11 Saving and Sharing Colab Notebooks

    Section 4: Preprocessing Satellite Imagery for Deep Learning

    Lecture 12 Calculating Geospatial Indices

    Lecture 13 Import and Clean Datasets in Jupyter Notebook with Pandas

    Lecture 14 Conducting Zonal Statistics in Python

    Lecture 15 Preprocessing Real Sentinel-2 Imagery for Deep Learning

    Lecture 16 Integrating Google Earth Engine for Data Pipelines

    Lecture 17 Working with Large-Scale Geospatial Data

    Section 5: Building Convolutional Neural Networks (CNNs) for Geospatial Tasks

    Lecture 18 Introduction to CNNs for Satellite Imagery Analysis

    Lecture 19 Designing a CNN Model for Crop Health Classification

    Lecture 20 Visualizing AI Model Performance

    Lecture 21 Evaluating models: Accuracy, precision, recall, and cross-validation.

    Lecture 22 Hyperparameter Tuning with Grid Search and Random Search in Python

    Section 6: Advanced Geospatial AI Applications

    Lecture 23 Building a Convolutional Neural Network for Image Classification

    Lecture 24 Building an AI Model for Crop Health Analysis

    Lecture 25 Plant Counting with Computer Vision Techniques

    Lecture 26 Applying Deep Learning for Global Weather Emulation with FourCastNet

    Lecture 27 Validating Biomass Predictions with Ground Truth

    Section 7: Course Wrap-Up and Resources

    Lecture 28 Course Summary and Key Takeaways

    Lecture 29 Next Steps and Additional Resources

    Beginner Data Scientists: New to AI and geospatial analysis, eager to learn deep learning for satellite imagery.,GIS Professionals: Looking to integrate AI into geospatial workflows for tasks like land cover or crop analysis.,Environmental Researchers: Interested in applying CNNs to satellite data for climate or agricultural studies.,Students and Hobbyists: Curious about geospatial AI, with basic Python skills or a willingness to learn.