quality and perform grain classification. The input data comprised digital images of kernels
obtained from an optical scanner. The algorithm identified individual kernels' smooth and
wrinkled regions, described their orientation relative to the axis of symmetry, crease visibility
and germ location. We were also able to determine the size of the wrinkled and smooth
areas on a grain's surface, which allowed automatic grain classification and kernel quality …