posted on 2002-01-01, 00:00authored byOwen Carmichael, Martial Hebert
We frame the problem of object recognition from edge cues in terms of determining
whether individual edge pixels belong to the target object or to clutter,
based on the configuration of edges in their vicinity. A classifier solves this
problem by computing sparse, localized edge features at image locations determined
at training time. In order to save computation and solve the aperture
problem, we apply a cascade of these classifiers to the image, each of which
computes edge features over larger image regions than its predecessors. Experiments
apply this approach to the recognition of real objects with holes
and wiry components in cluttered scenes under arbitrary out-of-image-plane
rotation.