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Improvements in land use mapping for irrigated agriculture from satellite sensor data using a multi-stage maximum likelihood classification

Islam Abou El-Magda Department of Civil and Environmental Engineering , University of Southampton , Highfield , Southampton SO17 1BJ , UKT.W. Tantona Department of Civil and Environmental Engineering , University of Southampton , Highfield , Southampton SO17 1BJ , UK
2003en
ABI

Аннотация

The accuracy of conventional land use classification of irrigated agriculture from optical satellite images using maximum likelihood supervised classification was compared with a classification based on multistage maximum likelihood supervised classification. In the multistage maximum likelihood classification series of sub-classifications were carried out which included masking and/or omitting certain crops from the classifications. <br/>These series of classifications improved the identification of individual crops/land use types. The output from the optimum sub-classifications were stacked to give an overall crop types/land use map. When the multistage classification was tested against a single stage classification on a large irrigation scheme in Central Asia the final accuracy of crop/land use classification increased from 85% to 94%. Field verification confirmed the accuracy at 93.5%. These results were achieved with a single Landsat 7 Enhanced Thematic Mapper (ETM+) sensor dataset as of 2 August 1999 over an area of 38.5 km(2).

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