SyMBac
Synthetic bacteria images
Generates high-quality synthetic images of bacterial cells to aid machine learning-based image segmentation algorithms.
Accurate segmentation of bacterial microscope images using deep learning synthetically generated image data.
19 stars
4 watching
9 forks
Language: Jupyter Notebook
last commit: 7 months ago
Linked from 1 awesome list
biologydeep-learningimage-processingmachine-learningmicroscopysegmentationsynthetic-biologysynthetic-datasynthetic-dataset-generation
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