Introduction
Welcome to Mangrove Mapping Using Multiple Sensors! This workshop will demonstrate a Random Forest classification mapping workflow using Landsat data. We will cover Image Collection filtering, merging, pre-processing steps, and finally, Random Forest model training, classification and accuracy assessment.
Pre-workshop Set-up
- Ensure you are logged into your Google Earth Engine account.
- Click this link to accept the trinidad-tobago GEE script repository - https://code.earthengine.google.com/?accept_repo=users/kwoodward/trinidad-tobago
- Create a new script file in your own script repository - name it ‘Mangroves Classification - Landsat’. Keep in mind a master copy is available in the above script repository.
- Check the full script https://code.earthengine.google.com/76baffb749990e7bbbcb13559de9b873
Objectives
- Understand the general process for training and applying a model in Google Earth Engine on satellite data
- Adapt the provided workflow for a different area of interest and time period
- Experiment with different ways to improve accuracy of your classification