Bayesian texture segmentation of weed and crop images using reversible jump Markov chain Monte Carlo methods
Ian L. Dryden,
Mark R. Scarr and
Charles C. Taylor
Journal of the Royal Statistical Society Series C, 2003, vol. 52, issue 1, 31-50
Abstract:
Summary. A Bayesian method for segmenting weed and crop textures is described and implemented. The work forms part of a project to identify weeds and crops in images so that selective crop spraying can be carried out. An image is subdivided into blocks and each block is modelled as a single texture. The number of different textures in the image is assumed unknown. A hierarchical Bayesian procedure is used where the texture labels have a Potts model (colour Ising Markov random field) prior and the pixels within a block are distributed according to a Gaussian Markov random field, with the parameters dependent on the type of texture. We simulate from the posterior distribution by using a reversible jump Metropolis–Hastings algorithm, where the number of different texture components is allowed to vary. The methodology is applied to a simulated image and then we carry out texture segmentation on the weed and crop images that motivated the work.
Date: 2003
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https://doi.org/10.1111/1467-9876.00387
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