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Anatomic-landmark detection using graphical context modelling.
In: Proceedings (12th IEEE International Symposium on Biomedical Imaging, ISBI 2015, 16-19 April 2015, Brooklyn, United States). 2015. 1304-1307
Anatomical landmarks in images play an important role in medical practice. This paper presents a graphical model that fully automatically detects such landmarks. The model includes a unary potential using a random forest classifier based on local appearance and binary and ternary potentials encoding geometrical context among different landmarks. The weightings of different potentials are learned in a maximum likelihood manner. The final detection result is formulated as the maximum-a-posteriori estimation jointly over the whole set of landmarks in one image. For validation, the model is applied to detect right-ventricle insert points in cardiac MR images. The result shows that the context modelling is able to substantially improve the overall accuracy.
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Publication type
Article: Conference contribution
Keywords
Anatomical Landmark Detection ; Context Modelling ; Graphical Model ; Parameter Learning
ISSN (print) / ISBN
1945-7928
e-ISSN
978-147992374-8
Conference Title
12th IEEE International Symposium on Biomedical Imaging, ISBI 2015
Conference Date
16-19 April 2015
Conference Location
Brooklyn, United States
Proceedings Title
Proceedings
Quellenangaben
Pages: 1304-1307
Non-patent literature
Publications
Institute(s)
Institute of Computational Biology (ICB)