A proper Land Cover and Forest Type Classification Scheme for Mexico
The imminent implementation of a REDD+ MRV system in Mexico in 2015, demanding operational annual land cover change reporting, requires highly accurate, annual and high resolution forest type maps; not only for monitoring but also to establish the historical baseline from the 1990s onwards. The empl...
Main Authors: | , , , , |
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Format: | Article |
Language: | English |
Published: |
Copernicus Publications
2015-04-01
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Series: | The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences |
Online Access: | http://www.int-arch-photogramm-remote-sens-spatial-inf-sci.net/XL-7-W3/383/2015/isprsarchives-XL-7-W3-383-2015.pdf |
Summary: | The imminent implementation of a REDD+ MRV system in Mexico in 2015, demanding operational annual land cover change
reporting, requires highly accurate, annual and high resolution forest type maps; not only for monitoring but also to establish the
historical baseline from the 1990s onwards. The employment of any supervised classifier demands exhaustive definition of land
cover classes and the representation of all classes in the training stage. This paper reports the process of a data driven class
separability analysis and the definition and application of a national land cover classification scheme. All Landsat data recorded over
Mexico in the year 2000 with cloud coverage below 10 percent and a national digital elevation model have been used. Automatic
wall-2-wall image classification has been performed trained by national reference data on land use and vegetation types with 66
classes. Validation has been performed against field plots of the national forest inventory. Groups of non-separable classes have
subsequently been discerned by automatic iterative class aggregation. Class aggregations have finally been manually revised and
modified towards a proposed national land cover classification scheme at 4 levels with 35 classes at the highest level including 13
classes for primary temperate and tropical forests, 2 classes for secondary temperate and tropical forest, 1 for induced or cultivated
forest, as also 8 different scrubland classes. The remaining 11 classes cover agriculture, grassland, wetland, water bodies, urban and
other vegetation land cover classes. The remaining 3 levels provide further hierarchic aggregations with 14, 10, and 8 classes,
respectively. Trained by the relabeled training dataset wall-2-wall classification towards the 35 classes has been performed. The final
national land cover dataset has been validated against more than 200,000 polygons randomly distributed all over the country with
class labels derived by manual interpretation. The agreement for all 35 classes at level 4 was 71%. Primary forest classes have been
identified with accuracies between 60% and 83%. Secondary forest classes rated only 50% finding major confusion with the primary
forest classes. Accuracies over the scrubland classes have been calculated between 60% and 90%. Agreements for aggregated
temperate and tropical forest classes was 85% and 80%, respectively. Separation of forest and non-forest has been achieved with an
agreement of 87%. |
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ISSN: | 1682-1750 2194-9034 |