Stochastic representation of memoryless Boolean functions:application to boundary estimation at low contrast
Roysam, B.; Miller, M.I.
Acoustics, Speech, and Signal Processing, 1990. ICASSP-90., 1990 International Conference on
Volume , Issue , 3-6 Apr 1990 Page(s):2333 - 2336 vol.4
Digital Object Identifier 10.1109/ICASSP.1990.116050
Summary:Earlier work on parallel computation of generalized Bayesian
hypothesis tests for hierarchical image reconstruction on massively
parallel processor arrays is extended to incorporate pattern constraints
specified with Boolean functions defined on symbolic imaging variables.
This is based on a stochastic representation for memoryless Boolean
functions following U. Grenander's work (1984) on metric pattern theory.
Its application is presented to the segmentation of low-contrast
textured images through an extension of J. Besag's (1986) ICM
segmentation algorithm, and to image reconstruction with large point
spread. Hierarchical image reconstruction in time-of-flight positron
emission tomography at low count levels is described
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