This is a project for medical image segmentation. This project includes common medical image segmentation models such as U-net, FCN, Deeplab, SegNet, PSPNet and so on.
The use steps are as follows:
(1): Place dataset in 'inputs' folder.
(2): Modify the path in 'preprocess.py' and run it to generate the image with uniform size.
(3): Modify the parameter in 'train.py' and run it to obtain the trained model.
(4): Place the image you want to segment in 'test' folder.
(5): Modify the parameter in 'val.py' and run it to obtain the predicted image, and it will saved in 'test' folder.
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some classic model used to segment the medical images like CT、X-ray and so on
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- Python 100.0%