Abstract:
Mathematical methods for image processing make use of
function spaces which are usually Banach spaces with
integral $L_p$ norms. The corresponding mathematical
models of the images are functions in these spaces. There
are discussions here involving the value of $p$ for which
the distance between two functions is most natural when
they represent images, or the metric in which our
eyes measure the distance between the images. In this
paper we argue that the Hausdorff distance is more
natural to measure the distance (difference) between
images than any $L_p$ norm.