Land use/land cover change detection combining automatic processing and visual interpretation

This article presents a hybrid classification method combining image segmentation, GIS analysis, and visual interpretation, and its application to elaborate a multi-date cartographic database with 23 land use/cover (LUC) classes using SPOT 5 imagery for the Mexican state of Michoacan (~60,000 km2)....

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Main Authors: Jean-François Mas, Richard Lemoine-Rodríguez, Rafael González-López, Jairo López-Sánchez, Andrés Piña-Garduño, Evelyn Herrera-Flores
Format: Article
Language:English
Published: Taylor & Francis Group 2017-01-01
Series:European Journal of Remote Sensing
Subjects:
Online Access:http://dx.doi.org/10.1080/22797254.2017.1387505
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spelling doaj-93d65a3bdefb4f309d75682e7f699ba12020-11-25T01:42:30ZengTaylor & Francis GroupEuropean Journal of Remote Sensing2279-72542017-01-0150162663510.1080/22797254.2017.13875051387505Land use/land cover change detection combining automatic processing and visual interpretationJean-François Mas0Richard Lemoine-Rodríguez1Rafael González-López2Jairo López-Sánchez3Andrés Piña-Garduño4Evelyn Herrera-Flores5Universidad Nacional Autónoma de MéxicoUniversidad Nacional Autónoma de MéxicoUniversidad Nacional Autónoma de MéxicoUniversidad Nacional Autónoma de MéxicoUniversidad Nacional Autónoma de MéxicoUniversidad Nacional Autónoma de MéxicoThis article presents a hybrid classification method combining image segmentation, GIS analysis, and visual interpretation, and its application to elaborate a multi-date cartographic database with 23 land use/cover (LUC) classes using SPOT 5 imagery for the Mexican state of Michoacan (~60,000 km2). First, the resolution of an existing 1:100,000 LUC map produced through visual interpretation of 2007 SPOT images was improved. 2007 SPOT images were segmented, and each segment received the “majority” LUC category from the 1:100,000 map. Segments were characterized from the images (spectral indices) and the map (LUC class). A multivariate trimming was applied to detect “uncertain” segments presenting discrepancy between their spectral response and the LUC class assigned from the map. For these uncertain segments, a category was determined by digital classification, but a definitive category was assigned through visual interpretation. Finally, accuracy of the resulting LUC map was assessed. The same procedure was applied to downgrade (2004) and to update (2014) the map. The implemented method enabled us to improve the scale of an existing 2007 LUC map and to detect land use/cover changes in previous (downgrading) and later (updating) dates with an overall accuracy of 83.3% ± 3.1%.http://dx.doi.org/10.1080/22797254.2017.1387505Change detectionland cover databaseimage segmentationvisual interpretationaccuracy assessmentcartographic updating
collection DOAJ
language English
format Article
sources DOAJ
author Jean-François Mas
Richard Lemoine-Rodríguez
Rafael González-López
Jairo López-Sánchez
Andrés Piña-Garduño
Evelyn Herrera-Flores
spellingShingle Jean-François Mas
Richard Lemoine-Rodríguez
Rafael González-López
Jairo López-Sánchez
Andrés Piña-Garduño
Evelyn Herrera-Flores
Land use/land cover change detection combining automatic processing and visual interpretation
European Journal of Remote Sensing
Change detection
land cover database
image segmentation
visual interpretation
accuracy assessment
cartographic updating
author_facet Jean-François Mas
Richard Lemoine-Rodríguez
Rafael González-López
Jairo López-Sánchez
Andrés Piña-Garduño
Evelyn Herrera-Flores
author_sort Jean-François Mas
title Land use/land cover change detection combining automatic processing and visual interpretation
title_short Land use/land cover change detection combining automatic processing and visual interpretation
title_full Land use/land cover change detection combining automatic processing and visual interpretation
title_fullStr Land use/land cover change detection combining automatic processing and visual interpretation
title_full_unstemmed Land use/land cover change detection combining automatic processing and visual interpretation
title_sort land use/land cover change detection combining automatic processing and visual interpretation
publisher Taylor & Francis Group
series European Journal of Remote Sensing
issn 2279-7254
publishDate 2017-01-01
description This article presents a hybrid classification method combining image segmentation, GIS analysis, and visual interpretation, and its application to elaborate a multi-date cartographic database with 23 land use/cover (LUC) classes using SPOT 5 imagery for the Mexican state of Michoacan (~60,000 km2). First, the resolution of an existing 1:100,000 LUC map produced through visual interpretation of 2007 SPOT images was improved. 2007 SPOT images were segmented, and each segment received the “majority” LUC category from the 1:100,000 map. Segments were characterized from the images (spectral indices) and the map (LUC class). A multivariate trimming was applied to detect “uncertain” segments presenting discrepancy between their spectral response and the LUC class assigned from the map. For these uncertain segments, a category was determined by digital classification, but a definitive category was assigned through visual interpretation. Finally, accuracy of the resulting LUC map was assessed. The same procedure was applied to downgrade (2004) and to update (2014) the map. The implemented method enabled us to improve the scale of an existing 2007 LUC map and to detect land use/cover changes in previous (downgrading) and later (updating) dates with an overall accuracy of 83.3% ± 3.1%.
topic Change detection
land cover database
image segmentation
visual interpretation
accuracy assessment
cartographic updating
url http://dx.doi.org/10.1080/22797254.2017.1387505
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