root_painter
Image analyzer
An open-source tool for training deep learning models for image analysis
RootPainter: Deep Learning Segmentation of Biological Images with Corrective Annotation
59 stars
6 watching
17 forks
Language: Python
last commit: 4 months ago
Linked from 1 awesome list
biological-imagesdeep-learningguihuman-in-the-loophuman-in-the-loop-machine-learninginteractive-machine-learninginteractive-segmentationinteractive-trainingmachine-teachingpainterpytorchrootroot-paintersegmentation
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