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Slow and Smooth: A Bayesian Theory for the Combination of Local Motion Signals in Human Vision

Author(s)
Weiss, Yar; Adelson, Edward H.
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Abstract
In order to estimate the motion of an object, the visual system needs to combine multiple local measurements, each of which carries some degree of ambiguity. We present a model of motion perception whereby measurements from different image regions are combined according to a Bayesian estimator --- the estimated motion maximizes the posterior probability assuming a prior favoring slow and smooth velocities. In reviewing a large number of previously published phenomena we find that the Bayesian estimator predicts a wide range of psychophysical results. This suggests that the seemingly complex set of illusions arise from a single computational strategy that is optimal under reasonable assumptions.
Date issued
1998-02-01
URI
http://hdl.handle.net/1721.1/7252
Other identifiers
AIM-1624
CBCL-158
Series/Report no.
AIM-1624CBCL-158

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  • AI Memos (1959 - 2004)
  • CBCL Memos (1993 - 2004)

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