CCA Fuzzy Land Cover: a new method for classifying vegetation types and coverages and its implications for deforestation analysis
H. Arellano-P., J. O. Rangel-Ch

TL;DR
This paper introduces a novel classification method combining canonical correspondence analysis and fuzzy logic to improve vegetation type mapping, aiding more accurate deforestation and biodiversity assessments.
Contribution
It presents a new methodology that preserves vegetation diversity details and can be applied across various satellite data for consistent, detailed land cover analysis.
Findings
Enhanced vegetation classification accuracy
Better preservation of floristic and structural information
Applicable to diverse satellite data sets
Abstract
Land cover has been evaluated and classified on the basis of general features using reflectance or digital levels of photographic or satellite data. One of the most common methodologies based on CORINE land cover (Coordination of Information on the Environment) data, which classifies natural cover according to a small number of categories. This method produces generalizations about the inventoried areas, resulting in the loss of important floristic and structural information about vegetation types present (such as palm groves, tall dense mangroves, and dense forests). This classification forfeits relevant information on sites with high heterogeneity and diversity. Especially in the tropics, simplification of coverage types reaches its maximum level with the use of deforestation analysis, particularly when it is reduced to the two classes of forests and nonforests. As this paper…
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Taxonomy
TopicsEnvironmental and Ecological Studies · Statistical Methods and Applications · Agricultural and Food Production Studies
