Automated Cloud Classification of Global AVHRR Data Using a Fuzzy Logic Approach

A fuzzy logic classification (FLC) methodology is proposed to achieve the two goals of this paper: 1) to discriminate between clear sky and clouds in a 32 × 32 pixel array, or sample, of 1.1-km Advanced Very High Resolution Radiometer (AVHRR) data, and 2) if clouds are present, to discriminate betwe...

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Veröffentlicht in:Journal of applied meteorology (1988) 1997-11, Vol.36 (11), p.1519-1540
Hauptverfasser: Baum, Bryan A., Tovinkere, Vasanth, Titlow, Jay, Welch, Ronald M.
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container_issue 11
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container_title Journal of applied meteorology (1988)
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creator Baum, Bryan A.
Tovinkere, Vasanth
Titlow, Jay
Welch, Ronald M.
description A fuzzy logic classification (FLC) methodology is proposed to achieve the two goals of this paper: 1) to discriminate between clear sky and clouds in a 32 × 32 pixel array, or sample, of 1.1-km Advanced Very High Resolution Radiometer (AVHRR) data, and 2) if clouds are present, to discriminate between single-layered and multilayered clouds within the sample. To achieve these goals, eight FLC modules are derived that are based broadly on airmass type and surface type (land or water): equatorial over land, marine tropical over land, marine tropical/equatorial over water, continental tropical over land, marine polar over land, marine polar over water, continental polar over land, and continental polar/arctic over water. Derivation of airmass type is performed using gridded analyses provided by the National Centers for Environmental Prediction. The training and testing data used by the FLC are collected from more than 150 daytime AVHRR local area coverage scenes recorded between 1991 and 1994 over all seasons and over all continents and oceans. A total of 190 textural and spectral features are computed from the AVHRR data. A forward feature selection method is implemented to reduce the number of features used to discriminate between classes in each FLC module. The number of features selected ranges from 13 (marine tropical over land) to 24 (marine tropical/equatorial over water). An estimate of the classifier accuracy is determined using the hold-one-out method in which the classifier is trained with all but one of the data samples; the classifier is applied subsequently to the remaining sample. The overall accuracies of the eight classification modules are calculated by dividing the number of correctly classified samples by the total number of manually labeled samples of clear-sky and single-layer clouds. Individual module classification accuracies are as follows: equatorial over land (86.2%), marine tropical over land (85.6%), marine tropical/equatorial over water (88.6%), continental tropical over land (87.4%), marine polar over land (86.8%), marine polar over water (84.8%), continental polar over land (91.1%), and continental polar/arctic over water (89.8%). Single-level cloud samples misclassified as multilayered clouds range between 0.5% (continental polar over land) and 3.4% (marine polar over land) for the eight airmass modules. Classification accuracies for a set of labeled multilayered cloud samples range between 64% and 81% for six of the eight airm
doi_str_mv 10.1175/1520-0450(1997)036<1519:ACCOGA>2.0.CO;2
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Single-level cloud samples misclassified as multilayered clouds range between 0.5% (continental polar over land) and 3.4% (marine polar over land) for the eight airmass modules. Classification accuracies for a set of labeled multilayered cloud samples range between 64% and 81% for six of the eight airmass modules (excluded are the continental polar over land and continental polar/arctic over water modules, for which multilayered cloud samples are difficult to find). 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Techniques, methods, instrumentation and models</topic><topic>Pixels</topic><topic>Sea water</topic><topic>Stratocumulus clouds</topic><toplevel>online_resources</toplevel><creatorcontrib>Baum, Bryan A.</creatorcontrib><creatorcontrib>Tovinkere, Vasanth</creatorcontrib><creatorcontrib>Titlow, Jay</creatorcontrib><creatorcontrib>Welch, Ronald M.</creatorcontrib><collection>Pascal-Francis</collection><collection>CrossRef</collection><collection>Meteorological &amp; Geoastrophysical Abstracts</collection><collection>Meteorological &amp; Geoastrophysical Abstracts - Academic</collection><jtitle>Journal of applied meteorology (1988)</jtitle></facets><delivery><delcategory>Remote Search Resource</delcategory><fulltext>fulltext</fulltext></delivery><addata><au>Baum, Bryan A.</au><au>Tovinkere, Vasanth</au><au>Titlow, Jay</au><au>Welch, Ronald M.</au><format>journal</format><genre>article</genre><ristype>JOUR</ristype><atitle>Automated Cloud Classification of Global AVHRR Data Using a Fuzzy Logic Approach</atitle><jtitle>Journal of applied meteorology (1988)</jtitle><date>1997-11-01</date><risdate>1997</risdate><volume>36</volume><issue>11</issue><spage>1519</spage><epage>1540</epage><pages>1519-1540</pages><issn>0894-8763</issn><eissn>1520-0450</eissn><coden>JOAMEZ</coden><abstract>A fuzzy logic classification (FLC) methodology is proposed to achieve the two goals of this paper: 1) to discriminate between clear sky and clouds in a 32 × 32 pixel array, or sample, of 1.1-km Advanced Very High Resolution Radiometer (AVHRR) data, and 2) if clouds are present, to discriminate between single-layered and multilayered clouds within the sample. 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The number of features selected ranges from 13 (marine tropical over land) to 24 (marine tropical/equatorial over water). An estimate of the classifier accuracy is determined using the hold-one-out method in which the classifier is trained with all but one of the data samples; the classifier is applied subsequently to the remaining sample. The overall accuracies of the eight classification modules are calculated by dividing the number of correctly classified samples by the total number of manually labeled samples of clear-sky and single-layer clouds. Individual module classification accuracies are as follows: equatorial over land (86.2%), marine tropical over land (85.6%), marine tropical/equatorial over water (88.6%), continental tropical over land (87.4%), marine polar over land (86.8%), marine polar over water (84.8%), continental polar over land (91.1%), and continental polar/arctic over water (89.8%). 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subjects Advanced very high resolution radiometers
Air masses
Ceres
Cirrus clouds
Clouds
Cumulus clouds
Earth, ocean, space
Exact sciences and technology
External geophysics
Fuzzy logic
Geophysics. Techniques, methods, instrumentation and models
Pixels
Sea water
Stratocumulus clouds
title Automated Cloud Classification of Global AVHRR Data Using a Fuzzy Logic Approach
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