Satellite Image Processing With Computer Vision And Deep Lea
Published 6/2025
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 1.97 GB | Duration: 7h 10m
Analyze Earth from Space Using Python, OpenCV, and AI Models
What you'll learn
Implement Image Processing Projects Step-by-Step
Master Python from Beginner to Advanced
Label Images Effectively Using Roboflow
Train YOLO Models for Object Detection
Deep Learning Techniques for Computer Vision
Advanced Image Processing with OpenCV
Build Real-Time Detection Applications
Requirements
A PC or Laptop with Internet Access
Basic Computer Skills - No Prior Coding Required
Python Installed (Setup Guidance Provided)
Interest in Computer Vision and AI
Description
Have you ever wanted to turn raw satellite images into powerful insights? Curious how AI can help detect changes on Earth from space?Welcome to your hands-on mini-course: Satellite Image Processing with Computer VisionThis is a fully practical project-no fluff, just pure image data, AI models, and real-world applications.In this course, you'll:Use Python for all your coding-clear, readable, and beginner-friendlyWork with OpenCV to process high-resolution satellite imageryLeverage deep learning models like YOLO for object detectionLearn to preprocess satellite data including color correction, noise reduction, and contrast enhancementDetect urban expansion, deforestation, crop health, water bodies, and moreVisualize data using overlays, heatmaps, and geo-referenced outputApply AI to geospatial analysis-vital for agriculture, climate research, disaster management, and urban planningWhy this project?Learn cutting-edge AI techniques in a real-world domainBuild a standout portfolio project in geospatial AIUse freely available satellite datasetsWork with powerful librariesNo need for expensive hardware, your laptop and some data is all you needWhether you're a student, AI enthusiast, geospatial analyst, or just curious about the planet, this project will equip you to turn satellite data into actionable intelligence.Let's bring Earth into focus, from orbit to code.Important Note:Some of the core tools and workflows used in this course - such as Roboflow, labeling, and model training - may also appear in my other courses.However, each course is built around a completely different dataset, project goal, and real-world application.Even when similar tools are used, the challenges, outcomes, and final use cases are entirely unique in each course.This course is self-contained and designed to deliver a specific learning experience related to its own topic.
Beginners,Students,AI Developers,Aspiring Data Scientists,Computer Vision Enthusiasts,Beginners in Python
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