Edge detection in hyperspectral images is an intrinsically difficult problem as the gray value intensity images related to
single spectral bands may show different edges. The few existing approaches are either based on a straight forward combining
of these individual edge images, or on finding the outliers in a region segmentation. As an alternative, we propose a clustering
of all image pixels in a feature space constructed by the spatial gradients in the spectral bands. An initial comparative
study shows the differences and properties of these approaches and makes clear that the proposal has interesting properties
that should be studied further.