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Deep Tiered Image Segmentation For Detecting Internal Ice Layers in Radar Imagery

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 Added by Yuchen Wang
 Publication date 2020
and research's language is English




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Understanding the structure of Earths polar ice sheets is important for modeling how global warming will impact polar ice and, in turn, the Earths climate. Ground-penetrating radar is able to collect observations of the internal structure of snow and ice, but the process of manually labeling these observations is slow and laborious. Recent work has developed automatic techniques for finding the boundaries between the ice and the bedrock, but finding internal layers - the subtle boundaries that indicate where one years ice accumulation ended and the next began - is much more challenging because the number of layers varies and the boundaries often merge and split. In this paper, we propose a novel deep neural network for solving a general class of tiered segmentation problems. We then apply it to detecting internal layers in polar ice, evaluating on a large-scale dataset of polar ice radar data with human-labeled annotations as ground truth.



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