TY - JOUR
T1 - Hierarchical image semantics using probabilistic path propagations for biomedical research
AU - Gillmann, Christina
AU - Post, Tobias
AU - Wischgoll, Thomas
AU - Hagen, Hans
AU - Maciejewski, Ross
N1 - Publisher Copyright:
© 1981-2012 IEEE.
PY - 2019/11/1
Y1 - 2019/11/1
N2 - Image segmentation is an important subtask in biomedical research applications, such as estimating the position and shape of a tumor. Unfortunately, advanced image segmentation methods are not widely applied in research applications as they often miss features, such as uncertainty communication, and may lack an intuitive approach for the use of the underlying algorithm. To solve this problem, this paper fuses a fuzzy and a hierarchical segmentation approach together, thus providing a flexible multiclass segmentation method based on probabilistic path propagations. By utilizing this method, analysts and physicians can map their mental model of image components and their composition to higher level objects. The probabilistic segmentation of higher order components is propagated along the user-defined hierarchy to highlight the potential of improvement resulting in each level of hierarchy by providing an intuitive representation. The effectiveness of this approach is demonstrated by evaluating our segmentations of biomedical datasets, comparing it to the state-of-the-art segmentation approaches, and an extensive user study.
AB - Image segmentation is an important subtask in biomedical research applications, such as estimating the position and shape of a tumor. Unfortunately, advanced image segmentation methods are not widely applied in research applications as they often miss features, such as uncertainty communication, and may lack an intuitive approach for the use of the underlying algorithm. To solve this problem, this paper fuses a fuzzy and a hierarchical segmentation approach together, thus providing a flexible multiclass segmentation method based on probabilistic path propagations. By utilizing this method, analysts and physicians can map their mental model of image components and their composition to higher level objects. The probabilistic segmentation of higher order components is propagated along the user-defined hierarchy to highlight the potential of improvement resulting in each level of hierarchy by providing an intuitive representation. The effectiveness of this approach is demonstrated by evaluating our segmentations of biomedical datasets, comparing it to the state-of-the-art segmentation approaches, and an extensive user study.
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U2 - 10.1109/MCG.2019.2894094
DO - 10.1109/MCG.2019.2894094
M3 - Article
C2 - 30668468
AN - SCOPUS:85060285305
SN - 0272-1716
VL - 39
SP - 86
EP - 101
JO - IEEE Computer Graphics and Applications
JF - IEEE Computer Graphics and Applications
IS - 6
M1 - 8618426
ER -