Google Earth Engine For Remote Sensing: From Zero To Hero
Last updated 11/2022
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz
Language: English | Size: 4.24 GB | Duration: 5h 49m
Last updated 11/2022
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz
Language: English | Size: 4.24 GB | Duration: 5h 49m
Get introduced and Become Expert in Geospatial analysis & Remote Sensing for spatial analysis in Google Earth Engine
What you'll learn
Students will gain access to and a thorough knowledge of the Google Earth Engine platform
Get introduced and advance JavaScript skills on Google Earth Engine platform
Learn how to obtain satellite data, apply image preprocessing for Landsat and Sentinel data in in Google Earth Engine
Learn how import and export spatial data (vector and rsater) from / into the platform
Run analyisis for geospatial applications on the cloud
You'll have a copy of the codes used in the course for your reference
Learn how to calculate spectral indices, create maximim composites and work with Big data on cloud
Apply geospatial analysis for real practical example: flood mapping with Sentinel 2 images
Learn image classification (land cover mapping) basics in Earth Engine
Requirements
An interest in working with geospatial data
A working computer with internet connection
Description
Complete Google Earth Engine for Remote Sensing MasterclassThis course is designed to take users who use GIS for basic geospatial data/GIS/Remote Sensing analysis to perform geospatial analysis tasks with Big Data on the cloud! This course provides you with all the necessary knowledge to start and advance your skills with Geospatial analysis and includes more than 5 hours of video content, plenty of practical analysis, and downloadable materials. After taking this course, you will be able to implement PRACTICAL, real-life spatial geospatial analysis, and tasks with the Big Data on the cloud.This course is designed to equip you with the theoretical and practical knowledge of applied geospatial analysis, namely Remote Sensing and some Geographic Information Systems (GIS). This course emphasizes the importance of understanding the Google Earth Engine platform and JavaScript to be able to implement spatial analysis on the cloud. So, you will learn:a thorough introduction to the Earth Engine Platform, the basics of image analysis (which is essential to understand when you would like to work with Earth Engine)a comprehensive overview of JavaScript basics for spatial analysis. We will cover essential blocks to equip you with the background knowledge and get you started with your analysis on the cloud.You will learn how to import / export data to Earth Engine, how to perform arithmetical image calculationhow to map functions over image collections, and do iterations. We will cover Sentinel and Landsat image pre-processing and analyses for such applications as drought monitoring, flood mapping, and land cover unsupervised and supervised (machine learning algorithms such as Random Forest) classificationWe finish with an introduction to time series trend analysis in GEE.By the end of the course, you will feel confident and completely understand the basics of JavaScript for spatial analysis and you will learn practical geospatial analysis with Big Data on Google Earth Engine cloud. This course will also prepare you for using geospatial analysis with open source and free software tools.One important part of the course is the practical exercises. You will be given some precise instructions, codes, and datasets to create for geospatial analysis in Google Earth Engine.INCLUDED IN THE COURSE: You will have access to all the data used in the course, along with the Java code files. You will also have access to future resources. Enroll in the course today & take advantage of these special materials!
Overview
Section 1: Introduction
Lecture 1 Introduction
Section 2: Introduction to Google Earth Engine
Lecture 2 Why to work with Google Earth Engine?
Lecture 3 Lab: Sign up for Google Earth Engine
Lecture 4 Interface of Google Earth Engine: Code Editor & Explorer
Section 3: Short introduction to spatial and satellite data . theory
Lecture 5 Types of spatial data: vector and raster data
Lecture 6 Introduction to raster data (satellite images)
Lecture 7 Difference between sensors and platforms
Lecture 8 Introduction to Landstat Program of NASA
Lecture 9 Introduction to Sentinel Program of ESA
Lecture 10 Extra lecture: Using cloud platform for spectral indices & land cover analysis
Section 4: Getting started with JavaScrip and geospatial analysis in Google Earth Engine
Lecture 11 Overview of datasets in Earth Engine
Lecture 12 JavaScript - get started!
Lecture 13 Lab: Introduction to JavaScript
Lecture 14 Lab: Mapping and Reducing Collection - Landsat Example
Lecture 15 Lab: Working with image collections and image visualization
Lecture 16 Lab: Image visualisation
Lecture 17 Section 4: Practical Task
Section 5: Image Calculations and Mapping Functions in Earth Engine
Lecture 18 Introduction to image data: Landsat
Lecture 19 Lab: Image Calculations Part 1 - Single Image Calculations
Lecture 20 Lab: Image Calculations Part 2 - Create a composite and calculate NDVI
Lecture 21 Lab: Calculate Zonal Statistics in Earth Engine
Lecture 22 Lab: Short introduction to functions - Maximum NDVI Example
Lecture 23 Lab: How to map a function over an image collection: Example of Landsat and NDVI
Lecture 24 Lab: How to change default names for output image collection
Section 6: Importing / Exporting Data in Google Earth Engine
Lecture 25 Lab: Export image data from Google Earth Engine: an Introduction
Lecture 26 Lab: Importing ratser and vector files into Google Earth Engine
Lecture 27 Lab: Image mosaicking, clipping, reprojection and exporting as tiff to Drive
Lecture 28 Section 6 - Practical Task
Section 7: Examples: Geospatial Analysis in Google Earth Engine
Lecture 29 How to work with spatial data and remote sensing images - theory
Lecture 30 Lab: Iterating function over Image Collection - Example of Drought Monitoring
Lecture 31 Lab: Image preprocessing - Cloud masking of Sentinel 2 images
Lecture 32 Normalized Difference Water Index for flood monitoring - thoery
Lecture 33 Lab: Flood Mapping with Sentinel-2 and NDWI
Lecture 34 Your Project - Flood Mapping
Section 8: Introduction to Land use / land cover (LULC) classification
Lecture 35 Introduction: Machine Learning
Lecture 36 Land use land cover mapping - overview
Lecture 37 Supervised classification with Google Earth Engine (explorer)
Lecture 38 Unsupervised Image Classification and Image Compositing
Lecture 39 Supervised land use mapping with Google Earth Engine and Random Forest
Lecture 40 Task: Image Classification
Lecture 41 Time Series Trend Analysis with Linear Regression: Get Started
Section 9: Outlook
Lecture 42 BONUS
Geographers, Programmers, geologists, biologists, social scientists, or every other expert who deals with GIS maps in their field