Semi-Supervised Learning of Edge Filters for Volumetric Image Segmentation
32nd DAGM Symposium, Springer, LNCS: 462--471, 2010
Abstract: For every segmentation task, prior knowledge about the object
that shall be segmented has to be incorporated. This is typically
performed either automatically by using labeled data to train the used
algorithm, or by manual adaptation of the algorithm to the specic application.
For the segmentation of 3D data, the generation of training
sets is very tedious and time consuming, since in most cases, an expert
has to mark the object boundaries in all slices of the 3D volume. To avoid
this, we developed a new framework that combines unsupervised and supervised
learning. First, the possible edge appearances are grouped, such
that, in the second step, the expert only has to choose between relevant
and non-relevant clusters. This way, even objects with very different edge
appearances in different regions of the boundary can be segmented, while
the user interaction is limited to a very simple operation. In the presented
work, the chosen edge clusters are used to generate a filter for all relevant
edges. The filter response is used to generate an edge map based
on which an active surface segmentation is performed. The evaluation
on the segmentation of plant cells recorded with 3D confocal microscopy
yields convincing results.
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@InProceedings{KBBR10, author = "M.Keuper and R.Bensch and K.Voigt and A.Dovzhenko and K.Palme and H.Burkhardt and O.Ronneberger", title = "Semi-Supervised Learning of Edge Filters for Volumetric Image Segmentation", booktitle = "32nd DAGM Symposium", series = "LNCS", pages = "462--471", year = "2010", publisher = "Springer", url = "http://lmbweb.informatik.uni-freiburg.de/Publications/2010/KBBR10" }