OIV Leaf Disc Phenotyping
Companion repository for the article "Phenotyping grapevine resistance to downy mildew: deep learning as a promising tool to assess sporulation and necrosis" found Here
Folder Structure
checkpoints
Contains checkpoint files for leaf disc detector and OIV 452-1 scorer.
data
Contains all datasets data in CSV format. All files are semicolon separated.
Leaf Disc Detection Files
- ldd_train.csv, ldd_val.csv and ldd_test.csv contain bounding box annotations in Pascal VOC format.
- train_ld_bounding_boxes.csv contains predictions for all available plates.
OIV 452-1 Annotation
- oiv_annotation.csv fully annotated dataset created with the UI in leaf_patch_annotation.ipynb.
- oiv_annotation_empty.csv empty annotation CSV, use it to familiarize yoursel with the annotation process.
OIV 452-1 Predictions
- oiv_train.csv, oiv_val.csv and oiv_test.csv contain OIV 452-1 annotated scores.
Genotype Differenciation
- genotype_differenciation_dataset.csv contains annotated scores and predictions for leaf patches used in to validate model on genptype differenciation.
images
Contains all images in three different folders:
- plates contains full plate images.
- leaf_discs contains full leaf discs. Output folder for predicted leaf discs.
- leaf_patches contains extracted patches. Output folder for predicted leaf patches.
src
Contains source code under two formats:
- *.py files contain base functionality and classes.
- *.ipynb files contain code to reproduce the article data.
Notebooks
repo_manager.ipynb
Utility notebook to create this repository
Inference Providers
NEW
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The model has no library tag.
Model tree for treizh/oiv_ld_phenotyping
Base model
microsoft/swin-tiny-patch4-window7-224