Vision as Bayesian Inference

Lecture, three hours. Requisite: course 100A or 200A. Formulation of vision as Bayesian inference using models developed for designing artificial vision systems. Applied to statistics, they define ideal observer models that can be used to model human performance and serve a benchmark. S/U or letter grading.

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Instructor
Alan Yuille
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15W 14W 13W 12W 11W 10W 09W 07F 07S 06W

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