The transformation from forest and rural to developed land is growing dramatically
worldwide. A measure of the underlying structure of this shift is needed to better understand the nature of this change and to be able to establish control mechanisms at a regional scale.
Landscape metrics evaluate the morphology of the spatial pattern at the object level (patch) through the categorization of Land Cover, generally without considering the similarities or dissimilarities between categories in the classification.
This work uses the Mean Edge Contrast Index (MECI) to quantify the structure of the
counties around Columbus, OH. This index doesn’t make a hard distinction between
categories, since it uses a matrix that assigns a value to the contrast between each Land Cover class pairwise, and measures the degree of contrast between each patch and its
immediate neighborhood.
The values of the matrix are obtained through the comparison of MECI and a studied
variable, obtaining a measure of the similarity or dissimilarity of each class that better explains each variable. These relationships are visualized with different techniques to better understand their similarities.