Estimating bedrock and surface layer boundaries and confidence intervals in ice sheet radar imagery using MCMC

Image Processing(2014)

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摘要
Climate models that predict polar ice sheet behavior require accurate measurements of the bedrock-ice and ice-air boundaries in ground-penetrating radar imagery. Identifying these features is typically performed by hand, which can be tedious and error prone. We propose an approach for automatically estimating layer boundaries by viewing this task as a probabilistic inference problem. Our solution uses Markov-Chain Monte Carlo to sample from the joint distribution over all possible layers conditioned on an image. Layer boundaries can then be estimated from the expectation over this distribution, and confidence intervals can be estimated from the variance of the samples. We evaluate the method on 560 echograms collected in Antarctica, and compare to a state-of-the-art technique with respect to hand-labeled images. These experiments show an approximately 50% reduction in error for tracing both bedrock and surface layers.
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关键词
glaciology,ground penetrating radar,hydrological techniques,remote sensing by radar,Antarctica,Markov-Chain Monte Carlo,bedrock layer boundary,bedrock-ice measurements,climate models,ground-penetrating radar imagery,hand-labeled images,ice sheet radar imagery,ice-air boundaries,polar ice sheet behavior,probabilistic inference problem,state-of-the-art technique,surface layer boundary,Bedrock and Surface Layers,Polar Science,Probabilistic Graphical Models,Radar Imagery
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