Publication | Closed Access
Multi-stage Multi-recursive-input Fully Convolutional Networks for Neuronal Boundary Detection
69
Citations
40
References
2017
Year
Unknown Venue
Geometric LearningConvolutional Neural NetworkEngineeringEm ImagesEm DatasetSocial SciencesImage AnalysisElectron MicroscopyComputational ImagingMachine VisionNeuroimagingDeep LearningMedical Image ComputingComputer VisionComputational NeuroscienceBioimage AnalysisBiomedical ImagingNeuronal NetworkNeuroscienceImage SegmentationNeuronal Boundary DetectionCell Detection
In the field of connectomics, neuroscientists seek to identify cortical connectivity comprehensively. Neuronal boundary detection from the Electron Microscopy (EM) images is often done to assist the automatic reconstruction of neuronal circuit. But the segmentation of EM images is a challenging problem, as it requires the detector to be able to detect both filament-like thin and blob-like thick membrane, while suppressing the ambiguous intracellular structure. In this paper, we propose multi-stage multi-recursiveinput fully convolutional networks to address this problem. The multiple recursive inputs for one stage, i.e., the multiple side outputs with different receptive field sizes learned from the lower stage, provide multi-scale contextual boundary information for the consecutive learning. This design is biologically-plausible, as it likes a human visual system to compare different possible segmentation solutions to address the ambiguous boundary issue. Our multi-stage networks are trained end-to-end. It achieves promising results on two public available EM segmentation datasets, the mouse piriform cortex dataset and the ISBI 2012 EM dataset.
| Year | Citations | |
|---|---|---|
Page 1
Page 1