Developing and Analyzing Boundary Detection Operators Using Probabilistic Models

03/27/2013
by   David Sher, et al.
0

Most feature detectors such as edge detectors or circle finders are statistical, in the sense that they decide at each point in an image about the presence of a feature, this paper describes the use of Bayesian feature detectors.

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