- Automatic 3D Cardiovascular MR Segmentation with Densely-Connected Volumetric ConvNets, MICCAI 2017
- 3D Deeply Supervised Network for Automated Segmentation of Volumetric Medical Images, MedIA 2017
This repository includes the code (training and testing) for our papers about DenseVoxNet and 3D-DSN. The code is based on 3D-CNN for volumetric segmentation, and the 3D operation is implemented with 3D-Caffe library. You can simply extend this code to other volumetric segmentation tasks.
-
Follow the instruction of 3D-Caffe to install Caffe library. Rememebr to use
git checkout 3D-Caffe
to switch the correct branch and usemake matcaffe
to build Matlab interface. -
As an alternative, you can
git clone https://github.com/yulequan/HeartSeg
cd 3D-Caffe
cp Makefile.config.example Makefile.config
vim Makefile.config
##uncomment USE_CUDNN := 1 if you want to use CuDNN
make -j8
make matcaffe
- Install Matlab toolbox NIfTI_tools in order to read nii data format in Matlab.
-
Download HVSMR dataset (phase 2) and put them in folder
data
. -
Prepare the hdf5 data to train the model.
cd code
#modify parameters in prepare_h5_data.m file
matlab prepare_h5_data.m
- Train the model
cd DenseVoxNet or cd 3D-DSN # Different folder for different network architecture
sh start_train.sh
- Test the model
cd code
#modify parameters and model path in test_model.m
matlab test_model.m
-
We use HDF5DataLayer to read data. You need to generate the hdf5 data from original data type. See
prepare_h5_data.m
for more details. -
Due to the limited GPU memory, we use patch-based training/testing strategy. The patch size is 64 by 64 by 64. You can modify it in network architecture and corresponding .m file.
-
In order to get the whole prediction, we provided two schemes (average fusion and major voting). Please see papers for more detail.
-
Generally, the batch normalization will accerate the training. We had better set the batch size (>1) to properly use batchnorm.
If you find this code is useful for your research, please consider citing:
@article{yu2017automatic, author = {Yu, Lequan and Cheng,Jie-Zhi and Dou, Qi and Yang, Xin and Chen, Hao and Qin, Jing and Heng, Pheng-Ann}, title = {Automatic 3D Cardiovascular MR Segmentation with Densely-Connected Volumetric ConvNets}, Journal = {MICCAI}, year = {2017} }
and/or
@article{dou20173d, author = {Dou, Qi and Yu, Lequan and Chen, Hao and Jin, Yueming and Yang, Xin and Qin, Jing and Heng, Pheng-Ann}, title = {3D deeply supervised network for automated segmentation of volumetric medical images}, journal = {Medical Image Analysis}, publisher = {Elsevier}, year = {2017} }
Please contact 'ylqzd2011@gmail.com' or 'lqyu@cse.cuhk.edu.hk'