This is the official Pytorch implementation of the following publication.
JSIS3D: Joint Semantic-Instance Segmentation of 3D Point Clouds with
Multi-Task Pointwise Networks and Multi-Value Conditional Random Fields
Quang-Hieu Pham, Duc Thanh Nguyen, Binh-Son Hua, Gemma Roig, Sai-Kit Yeung
Conference on Computer Vision and Pattern Recognition (CVPR), 2019 (Oral)
Paper | Homepage
If you find our work useful for your research, please consider citing:
@inproceedings{pham-jsis3d-cvpr19,
title = {{JSIS3D}: Joint semantic-instance segmentation of 3d point clouds with multi-task pointwise networks and multi-value conditional random fields},
author = {Pham, Quang-Hieu and Nguyen, Duc Thanh and Hua, Binh-Son and Roig, Gemma and Yeung, Sai-Kit},
booktitle = {Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition (CVPR)},
year = {2019}
}
This code is tested in Manjaro Linux with CUDA 10.0 and Pytorch 1.0.
- Python 3.5+
- Pytorch 0.4.0+
To use MV-CRF (optional), you first need to compile the code:
cd external/densecrf
mkdir build
cd build
cmake -D CMAKE_BUILD_TYPE=Release ..
make
cd ../../.. # You should be at the root folder here
make
We have preprocessed the S3DIS dataset (2.5GB)
in HDF5 format. After downloading the files, put them into the corresponding
data/s3dis/h5
folder.
To train a model on S3DIS dataset:
python train.py --config configs/s3dis.json --logdir logs/s3dis
Log files and network parameters will be saved to the logs/s3dis
folder.
After training, we can use the model to predict semantic-instance segmentation labels as follows:
python pred.py --logdir logs/s3dis --mvcrf
To evaluate the results, run the following command:
python eval.py --logdir logs/s3dis
For more details, you can use the --help
option for every scripts.
Note: The results on S3DIS in our paper are tested on Area 6 instead of Area 5. To reproduce the results, please change the split in
train.txt
andtest.txt
accordingly. Here I chose to keep the test set on Area 5 to make it easier to compare with other methods.
Check out the scripts
folder to see how we prepare the dataset for training.
Our code is released under MIT license (see LICENSE for more details).
Contact: Quang-Hieu Pham (pqhieu1192@gmail.com)