- Using an Interest Point Detector to Find Potential Fragments for
Recognition
- M.J. Bravo and H. Farid
- Vision Sciences (VSS), Sarasota, FL, 2006
Inspired by recent computer vision models for object recognition in
clutter, we are developing a model of human object recognition based
on local, distinctive fragments. The first stage of such models
typically involves the selection of a large pool of potential image
fragments using an interest point detector. In subsequent stages, this
large pool is reduced to a smaller set of distinctive fragments. In
developing a model for humans, our first step has been to determine
whether the pool of fragments selected by the most common interest
point detector, the Harris Detector (HD), includes the fragments
humans find distinctive. Our test images were randomly rotated
photographs of 12 common tools. We applied an HD to these images and
collected fragments with a wide range of interest ratings. The scale
of the HD determined the size of the fragments (8-pixel radius, 1-2%
of the whole object). These fragments were then used as the stimuli in
a recognition experiment. After a brief training period with whole
tools, observers identified the tool fragments. Overall, observers
were remarkably good at recognizing these tiny fragments. We then
compared the recognition results with the interest ratings of the
HD. Many fragments that were recognizable to observers were not given
high interest ratings by the HD, which responds best to locations with
large luminance gradients in multiple directions (e.g., corners). In
addition to recognizing such fragments, observers also recognized
fragments with subtle or one-dimensional gradients.
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