In this paper we present a novel class-based segmentation method, which is guided by a stored representation of the shape
of objects within a general class (such as horse images). The approach is different from bottom-up segmentation methods that
primarily use the continuity of grey-level, texture, and bounding contours. We show that the method leads to markedly improved
segmentation results and can deal with significant variation in shape and varying backgrounds. We discuss the relative merits
of class-specific and general image-based segmentation methods and suggest how they can be usefully combined.
Keywords Grouping and segmentation - Figure-ground - Top-down processing - Object classification
This research was supported by the Israel Ministry of Science under the Scene Teleportation Research Project and by the Moross
Laboratory at the Weizmann Institute of Science.