Title of article :
Three-dimensional Bayesian image analysis and confocal microscopy
Author/Authors :
Fahimah Al-Awadhi، نويسنده , , Merrilee Hurn&Christopher Jennison، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2011
Abstract :
We report methods for tackling a challenging three-dimensional (3D) deconvolution problem arising in
confocal microscopy.We fit a marked point process model for the set of cells in the sample using Bayesian
methods; this produces automatic or semi-automatic segmentations showing the shape, size, orientation and
spatial arrangement of objects in a sample. Importantly, the methods also provide measures of uncertainty
about size and shape attributes. The 3D problem is considerably more demanding computationally than the
two-dimensional analogue considered in Al-Awadhi et al. [2] due to the much larger data set and higherdimensional
descriptors for objects in the image. In using Markov chain Monte Carlo simulation to draw
samples from the posterior distribution, substantial computing effort can be consumed simply in reaching
the main area of support of the posterior distribution. For more effective use of computation time, we use
morphological techniques to help construct an initial typical image under the posterior distribution
Keywords :
image analysis , mathematical morphology , Object recognition , three-dimensional deconvolution , Stochastic simulation , confocal microscopy , Bayesian statistics , Markov chain Monte Carlo methods
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS