Train-Free Segmentation in MRI with Cubical Persistent Homology
Université Paris Cité · Département mathématiques, informatique, sciences de la donnée et technologies du numérique · +4 more institutions
Abstract
Abstract We investigate a framework for train-free MRI segmentation based on Topological Data Analysis. The pipeline proceeds in three steps, first identifying the whole object to segment via automatic thresholding, then detecting a distinctive subset whose topology is known in advance, and finally deducing the various components of the segmentation. A key ingredient is the extraction of approximate representative cycles from persistence diagrams, which provides an interpretable link between persistent features and anatomical components. To clarify the method’s scope, we make the underlying topological and intensity assumptions explicit, quantify when they hold on real data, and analyze typical failure modes.…
Citation impact
- FWCI
- 0.00
- Percentile
- 97%
- References
- 0
Authors
2Topics & keywords
- Segmentation
- Persistent homology
- Thresholding
- Artificial intelligence
- Topological data analysis
- Computer science
- Scale-space segmentation
- Pattern recognition (psychology)