Publication | Open Access
Cell segmentation with random ferns and graph-cuts
11
Citations
20
References
2016
Year
Unknown Venue
EngineeringPixel Class ProbabilitiesImage AnalysisPattern RecognitionRandom FernsBiostatisticsEdge DetectionComputational GeometryGeometric ModelingMachine VisionMedical ImagingLive Imaging DataCell SegmentationMorphogenesisMedical Image ComputingCell BiologyComputer VisionBiologyPattern FormationMicroscope Image ProcessingBioimage AnalysisBiomedical ImagingSystems BiologyMedicineCell ImagingImage SegmentationCell Detection
The progress in imaging techniques have allowed the study of various aspect of cellular mechanisms. To isolate individual cells in live imaging data, we introduce an elegant image segmentation framework that effectively extracts cell boundaries, even in the presence of poor edge details. Our approach works in two stages. First, we estimate pixel interior/border/exterior class probabilities using random ferns. Then, we use an energy minimization framework to compute boundaries whose localization is compliant with the pixel class probabilities. We validate our approach on a manually annotated dataset.
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