Atmospheric Correction

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Presentation transcript:

Atmospheric Correction Advanced Remote Sensing Land Use / Land Cover Change Analysis Module 3 Atmospheric Correction Stacy Bogan 2/13/2018

Atmospheric Correction on Level1 Landsat Data Collecting data needed for TerrSet AtmosC module Running correction https://clarklabs.org/tutorial-videos/ Module Outline

Scene in Pará, Brazil

Scene in Pará, Brazil Before Correction After Correction Landsat 5 TM data Collected July 12, 2009 at 1:37 pm

TerrSet ATMOSC Module COS(t) Model Collect sun elevation and timestamp from metadata Convert timestamp to decimal Collect haze value from each band image Band Year Month Day TimeStamp GMT Wavelength of Band Center DN Haze/ RAD Haze offset gain Dn max Viewing Angle Sun elevation 1 2009 7 12 13:37:01 13.61694 0.485 3.042 1023 50.41912 2 0.56 1.952 3 0.66 0.9276

IDRISI ATMOSC Module COS(t) Model Find the haze value over a deep, clear body of water with the Inquire tool

Want to learn more? Related Modules Planning a Remote Sensing Project Module 2: Downloading Landsat Data Module 4: Analysis with the Land Change Modeler https://clarklabs.org/tutorial-videos/ Want to learn more? Related Modules

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