YoVDO

NDVI Analysis and Biomass Proxy Calculation for Coorabulka Station Using ProRaster Scientific

Offered By: Roberts Geospatial Engineering via YouTube

Tags

Remote Sensing Courses Time Series Analysis Courses Geospatial Analysis Courses ProRaster Scientific Courses Landsat Courses

Course Description

Overview

Save Big on Coursera Plus. 7,000+ courses at $160 off. Limited Time Only!
Explore a comprehensive 38-minute tutorial on performing vegetation change analysis using ProRaster Scientific version 2.2.03. Learn how to process 552 Landsat 8 and 9 scenes, create a Collated Mosaic Sequence product, compute NDVI, and transform it into a proxy measure of "Feed On Offer" for Coorabulka Station in western Queensland. Follow step-by-step instructions on building scene databases, applying spatial clipping, computing statistics, and visualizing data over a 10-year period. Gain insights into the channel country's yearly flooding events and their impact on vegetation. Discover productivity tools and techniques for efficient geospatial analysis, including database creation, product sequencing, NDVI computation, and data transformation. Conclude with a demonstration of batch hardcopy imagery export and time series visualization in Excel.

Syllabus

Introduction
Building the scene database
Building a Collated Mosaic Sequence product
View the report
Edit the product
Rendering
Time Control Panel
NDVI Index
NDVI color table
Clip to polygon
Compute multidimensional statistics
Biomass proxy Feed On Offer
Calculator clipping operation
Transformation operation
Biomass proxy statistics graph
Biomass proxy over 10 years
Batch hardcopy imagery export


Taught by

Roberts Geospatial Engineering

Related Courses

Spatial Analysis and Satellite Imagery in a GIS
University of Toronto via Coursera
Geographic Information Systems (GIS)
University of California, Davis via Coursera
Synthetic Aperture Radar: Hazards
University of Alaska Fairbanks via edX
Geospatial Big Data Visualization with Kepler GL
Coursera Project Network via Coursera
Microsoft Azure Data Explorer - Advanced KQL
Pluralsight