A 2D and 3D PyTorch implementation of the Tiramisu CNN
Project description
tiramisu-brûlée
A 2D and 3D PyTorch implementation of the Tiramisu CNN
This package is primarily used for multiple sclerosis (MS) lesion segmentation; specifically, T2 lesions in the brain.
Free software: Apache Software License 2.0
Documentation: https://tiramisu-brulee.readthedocs.io.
Install
The easiest way to install the package is with:
pip install tiramisu-brulee
Alternatively, you can download the source and run:
python setup.py install
Basic Usage
from tiramisu_brulee import Tiramisu2D, Tiramisu3D
References
[1] Jégou, Simon, et al. “The one hundred layers tiramisu: Fully convolutional densenets for semantic segmentation.” CVPR. 2017.
[2] Zhang, Huahong, et al. “Multiple sclerosis lesion segmentation with Tiramisu and 2.5D stacked slices.” International Conference on Medical Image Computing and Computer-Assisted Intervention. Springer, Cham, 2019.
History
0.1.0 (2021-05-13)
First release on PyPI.
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