2012
DOI: 10.1016/j.rse.2012.04.021
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Generation and analysis of the 2005 land cover map for Mexico using 250m MODIS data

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Cited by 54 publications
(54 citation statements)
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“…Our findings regarding the more accurate performance using stratification-based classifications may be highly relevant for subnational-to continental-scale classification efforts [46,47], which often suffer from a lack of accurate generalization of training signatures across large areas with non-parametric machine-learning classifiers [35,110,111]. For instance, in one of the preceding works where one of the authors was involved [35], the difficulty of creating an accurate land-cover classification across Eastern Europe was attributed to a lack of spectral signature generalization by a single non-parametric machine-learning classifier (SVM).…”
Section: Discussionmentioning
confidence: 86%
“…Our findings regarding the more accurate performance using stratification-based classifications may be highly relevant for subnational-to continental-scale classification efforts [46,47], which often suffer from a lack of accurate generalization of training signatures across large areas with non-parametric machine-learning classifiers [35,110,111]. For instance, in one of the preceding works where one of the authors was involved [35], the difficulty of creating an accurate land-cover classification across Eastern Europe was attributed to a lack of spectral signature generalization by a single non-parametric machine-learning classifier (SVM).…”
Section: Discussionmentioning
confidence: 86%
“…Table 2 shows the class aggregation scheme from 18 classes of IDEAM to nine classes of the IGBP legend; class "snow" was aggregated to barren since the area is too small to be considered in the training process. Training sites were only selected in core areas of the reference cartography (i.e., IDEAM map) at least 500 m away from other land cover classes (3 ¢ 3 kernel of which all pixels had the same class as the central pixel [47]). More training data as relative to its expected area from the IDEAM map were sampled for barren, broadleaf forests and secondary vegetation to mitigate confusion with urban and built-up and shrubland [47].…”
Section: Reference Data For Training and Legend Definitionmentioning
confidence: 99%
“…The NALCMS provides land-cover information across the different ecosystems in North America, derived with 10-day MODIS composites at 250 m resolution (Latifovic et al 2010). In the case of Mexico, land-cover classification maps embedded in the NALCMS were developed for 2005 and 2010 forming the basis of the comparison in this study; information on the classification approach is provided by Colditz et al (2012). Fifteen land-cover classes were identified using multiple classifications (ensemble classifier) with decision trees and ancillary datasets including slope, aspect, temperature, precipitation, aerial photography, and high spatial resolution satellite images.…”
Section: Remote Sensing Observations Of Land-cover Changementioning
confidence: 99%
“…This was mainly due to a 13 % decrease in the amount of cultivated hectares reported in 2010 in the municipality records of the agricultural database of SAG-ARPA (SAGARPA 2012). Remote sensing observations of land-cover change From the land-cover change analysis derived with MODIS thematic maps, fourteen of the fifteen land-cover classes identified in Mexico by Colditz et al (2012) were found in the YP. Land-cover change from 2005 to 2010 totaled 7,281 ha.…”
Section: Forest Disturbances In the Yucatan Peninsulamentioning
confidence: 99%