A VISUAL system makes assumptions in order to interpret visual data. T
he assumption of 'generic view'1-4 states that the observer is not in
a special position relative to the scene. Researchers commonly use a b
inary decision of generic or accidental view to disqualify scene inter
pretations that assume accidental viewpoints5-10. Here we show how to
use the generic view assumption, and others like it, to quantify the l
ikelihood of a view, adding a new term to the probability of a given i
mage interpretation. The resulting framework better models the visual
world and reduces the reliance on other prior assumptions. It may lead
to computer vision algorithms of greater power and accuracy, or to be
tter models of human vision. We show applications to the problems of i
nferring shape, surface reflectance properties, and motion from images
.