ImageSeperation

Repository contains Python implementation of ...

  • Training and testing code for sub-figure detector with sideloss
  • cross validation on sub-figure detector, (results are essembled using weighted-box-fusion)

Installation

pip install -r requirements.txt

Data access

You need to contact the organizers of the task (https://www.imageclef.org/2016/medical) and ask for licensing the dataset.

Pre-trained model

To be released

Usage examples

Sub-figure detection

$ python detect.py --weights ./detector.pt --source ./image_dir --hide-labels(optional) --hide-conf(optional)

Subfigure crop

Train

$ python train.py --epochs 100 --batch-size 32 --data imageCLEF.yaml --weights yolov5s.pt --single-cls --sideloss

$ python train_cross_val.py --epochs 100 --batch-size 32 --data imageCLEF_cross_val.yaml --weights yolov5s.pt --single-cls --sideloss

Test

python test.py --batch 32 --data test.yaml --weight best.pt --single-cls --save-txt --save-conf

Model ensemble

test_merge.py

Citation

If you find this repository useful in your research, please cite:

Yao, T., Qu, C., Liu, Q., Deng, R., Tian, Y., Xu, J., Jha, A., Bao, S., Zhao, M., Fogo, A.B. and Landman, B.A., 2021. Compound Figure Separation of Biomedical Images with Side Loss. In Deep Generative Models, and Data Augmentation, Labelling, and Imperfections (pp. 173-183). Springer, Cham.