One of the simplest supervised classifiers is the parallelopiped method. But on this page we employ a (usually) somewhat better approach (in terms of greater accuracy) known as the Minimum Distance classifier. This sets up clusters in multidimensional space, each defining a distinct (named) class. Any pixel is then assigned to that class it is closest to (shortest vector distance).
We initiate our exemplification of Supervised Classification by producing one using the Minimum Distance routine. The IDRISI program acts on DNs in multidimensional band space to organize the pixels into the classes we choose. Each unknown pixel is then placed in the class closest to the mean vector in this band space. For Morro Bay, the resulting classification image consists of 16 gray levels, each representing a class, to which we can then assign any color on the computer. We can elect to combine classes to have either color themes (similar colors for related classes) and/or to set apart spatially adjacent classes by using disparate colors. Examine this Minimum Distance classification below, in which we use all seven TM bands, including the thermal. Study it in relation to your acquired knowledge of this scene from the preceding pages in this section and compare it with the classifications we show on the next page.
Primary Author: Nicholas M. Short, Sr. email: firstname.lastname@example.org