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 número67Comparación de metodologías para el mapeo de la cobertura y uso del suelo en el sureste de MéxicoCambio de uso del suelo y vegetación en la Península de Baja California, México índice de autoresíndice de materiabúsqueda de artículos
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Investigaciones geográficas

versión On-line ISSN 2448-7279versión impresa ISSN 0188-4611

Resumen

COUTURIER, Stéphane et al. Accuracy assessment of the National Forest Inventory map of Mexico: sampling designs and the fuzzy characterization of landscapes. Invest. Geog [online]. 2008, n.67, pp.39-58. ISSN 2448-7279.

There is no record so far in the literature of a comprehensive method to assess the accuracy of regional scale Land Cover/ Land Use (LCLU) maps in the sub-tropical belt. The elevated biodiversity and the presence of highly fragmented classes hamper the use of sampling designs commonly employed in previous assessments of mainly temperate zones. A sampling design for assessing the accuracy of the Mexican National Forest Inventory (NFI) map at community level is presented. A pilot study was conducted on the Cuitzeo Lake watershed region covering 400 000 ha of the 2000 Landsat-derived map. Various sampling designs were tested in order to find a trade-off between operational costs, a good spatial distribution of the sample and the inclusion of all scarcely distributed classes ('rare classes'). A two-stage sampling design where the selection of Primary Sampling Units (PSU) was done under separate schemes for commonly and scarcely distributed classes, showed best characteristics. A total of 2 023 punctual secondary sampling units were verified against their NFI map label. Issues regarding the assessment strategy and trends of class confusions are devised.

Palabras llave : Double sampling; rare class; classification system; Landsat; stereoscopic interpretation; aerial photography; fuzzy classification.

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