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SSHMT: Semi-supervised Hierarchical Merge Tree for Electron Microscopy Image Segmentation
by
Ramesh, Nisha
, Zhang, Miaomiao
, Javanmardi, Mehran
, Tasdizen, Tolga
, Liu, Ting
in
Algorithms
/ Bayesian analysis
/ Electron microscopy
/ Ground truth
/ Image segmentation
/ Microscopy
2016
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SSHMT: Semi-supervised Hierarchical Merge Tree for Electron Microscopy Image Segmentation
by
Ramesh, Nisha
, Zhang, Miaomiao
, Javanmardi, Mehran
, Tasdizen, Tolga
, Liu, Ting
in
Algorithms
/ Bayesian analysis
/ Electron microscopy
/ Ground truth
/ Image segmentation
/ Microscopy
2016
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SSHMT: Semi-supervised Hierarchical Merge Tree for Electron Microscopy Image Segmentation
Paper
SSHMT: Semi-supervised Hierarchical Merge Tree for Electron Microscopy Image Segmentation
2016
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Overview
Region-based methods have proven necessary for improving segmentation accuracy of neuronal structures in electron microscopy (EM) images. Most region-based segmentation methods use a scoring function to determine region merging. Such functions are usually learned with supervised algorithms that demand considerable ground truth data, which are costly to collect. We propose a semi-supervised approach that reduces this demand. Based on a merge tree structure, we develop a differentiable unsupervised loss term that enforces consistent predictions from the learned function. We then propose a Bayesian model that combines the supervised and the unsupervised information for probabilistic learning. The experimental results on three EM data sets demonstrate that by using a subset of only 3% to 7% of the entire ground truth data, our approach consistently performs close to the state-of-the-art supervised method with the full labeled data set, and significantly outperforms the supervised method with the same labeled subset.
Publisher
Cornell University Library, arXiv.org
Subject
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