A Highly Accurate Classification of TM Data through Correction of Atmospheric Effects

Atmospheric correction impacts on the accuracy of satellite image-based land cover classification are a growing concern among scientists. In this study, the principle objective was to enhance classification accuracy by minimizing contamination effects from aerosol scattering in Landsat TM images due...

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Main Authors: Bill Smith, Frank Scarpace, Widad Elmahboub
Format: Article
Language:English
Published: MDPI AG 2009-07-01
Series:Remote Sensing
Subjects:
Online Access:http://www.mdpi.com/2072-4292/1/3/278/
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spelling doaj-fc145dc0777c4effb813a75ef2bf45232020-11-25T01:16:27ZengMDPI AGRemote Sensing2072-42922009-07-011327829910.3390/rs1030278A Highly Accurate Classification of TM Data through Correction of Atmospheric EffectsBill SmithFrank ScarpaceWidad ElmahboubAtmospheric correction impacts on the accuracy of satellite image-based land cover classification are a growing concern among scientists. In this study, the principle objective was to enhance classification accuracy by minimizing contamination effects from aerosol scattering in Landsat TM images due to the variation in solar zenith angle corresponding to cloud-free earth targets. We have derived a mathematical model for aerosols to compute and subtract the aerosol scattering noise per pixel of different vegetation classes from TM images of Nicolet in north-eastern Wisconsin. An algorithm in C++ has been developed with iterations to simulate, model, and correct for the solar zenith angle influences on scattering. Results from a supervised classification with corrected TM images showed increased class accuracy for land cover types over uncorrected images. The overall accuracy of the supervised classification was improved substantially (between 13% and 18%). The z-score shows significant difference between the corrected data and the raw data (between 4.0 and 12.0). Therefore, the atmospheric correction was essential for enhancing the image classification. http://www.mdpi.com/2072-4292/1/3/278/improvement of supervised classification accuracyremote sensing interpretationsimulationmodeling
collection DOAJ
language English
format Article
sources DOAJ
author Bill Smith
Frank Scarpace
Widad Elmahboub
spellingShingle Bill Smith
Frank Scarpace
Widad Elmahboub
A Highly Accurate Classification of TM Data through Correction of Atmospheric Effects
Remote Sensing
improvement of supervised classification accuracy
remote sensing interpretation
simulation
modeling
author_facet Bill Smith
Frank Scarpace
Widad Elmahboub
author_sort Bill Smith
title A Highly Accurate Classification of TM Data through Correction of Atmospheric Effects
title_short A Highly Accurate Classification of TM Data through Correction of Atmospheric Effects
title_full A Highly Accurate Classification of TM Data through Correction of Atmospheric Effects
title_fullStr A Highly Accurate Classification of TM Data through Correction of Atmospheric Effects
title_full_unstemmed A Highly Accurate Classification of TM Data through Correction of Atmospheric Effects
title_sort highly accurate classification of tm data through correction of atmospheric effects
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2009-07-01
description Atmospheric correction impacts on the accuracy of satellite image-based land cover classification are a growing concern among scientists. In this study, the principle objective was to enhance classification accuracy by minimizing contamination effects from aerosol scattering in Landsat TM images due to the variation in solar zenith angle corresponding to cloud-free earth targets. We have derived a mathematical model for aerosols to compute and subtract the aerosol scattering noise per pixel of different vegetation classes from TM images of Nicolet in north-eastern Wisconsin. An algorithm in C++ has been developed with iterations to simulate, model, and correct for the solar zenith angle influences on scattering. Results from a supervised classification with corrected TM images showed increased class accuracy for land cover types over uncorrected images. The overall accuracy of the supervised classification was improved substantially (between 13% and 18%). The z-score shows significant difference between the corrected data and the raw data (between 4.0 and 12.0). Therefore, the atmospheric correction was essential for enhancing the image classification.
topic improvement of supervised classification accuracy
remote sensing interpretation
simulation
modeling
url http://www.mdpi.com/2072-4292/1/3/278/
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