BAAF-Net
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Semantic Segmentation for Real Point Cloud Scenes via Bilateral Augmentation and Adaptive Fusion (CVPR 2021)
Semantic Segmentation for Real Point Cloud Scenes via Bilateral Augmentation and Adaptive Fusion (CVPR 2021)
This repository is for BAAF-Net introduced in the following paper:
"Semantic Segmentation for Real Point Cloud Scenes via Bilateral Augmentation and Adaptive Fusion"
Shi Qiu, Saeed Anwar, Nick Barnes
IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR 2021)
Paper and Citation
The paper can be downloaded from here (CVF) or here (arXiv).
If you find our paper/codes/results are useful, please cite:
@inproceedings{qiu2021semantic,
title={Semantic Segmentation for Real Point Cloud Scenes via Bilateral Augmentation and Adaptive Fusion},
author={Qiu, Shi and Anwar, Saeed and Barnes, Nick},
booktitle={Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR)},
pages={1757-1767},
year={2021}
}
Updates
- 04/05/2021 Results for S3DIS dataset (mIoU: 72.2%, OA: 88.9%, mAcc: 83.1%) are available now.
- 04/05/2021 Test results (sequence 11-21: mIoU: 59.9%, OA: 89.8%) for SemanticKITTI dataset are available now.
- 04/05/2021 Validation results (sequence 08: mIoU: 58.7%, OA: 91.3%) for SemanticKITTI are available now.
- 28/05/2021 Pretrained models can be downloaded on all 6 areas of S3DIS dataset are available at google drive.
- 28/05/2021 codes released!
Settings
- The project is tested on Python 3.6, Tensorflow 1.13.1 and cuda 10.0
- Then install the dependencies:
pip install -r helper_requirements.txt - And compile the cuda-based operators:
sh compile_op.sh
(Note: may change the cuda root directoryCUDA_ROOTin./util/sampling/compile_ops.sh)
Dataset
- Download S3DIS dataset from here.
- Unzip and move the folder
Stanford3dDataset_v1.2_Aligned_Versionto./data. - Run:
python utils/data_prepare_s3dis.py
(Note: may specify other directory asdataset_pathin./util/data_prepare_s3dis.py)
Training/Test
- Training:
python -B main_S3DIS.py --gpu 0 --mode train --test_area 5
(Note: specify the --test_area from 1~6)
- Test:
python -B main_S3DIS.py --gpu 0 --mode test --test_area 5 --model_path 'pretrained/Area5/snap-32251'
(Note: specify the --test_area index and the trained model path --model_path)
6-fold Cross Validation
- Conduct training and test on each area.
- Extract all test results,
Area_1_conferenceRoom_1.ply...Area_6_pantry_1.ply(272.plyfiles in total), to the folder./data/results - Run:
python utils/6_fold_cv.py
(Note: may change the target folderoriginal_data_dirand the test resultsbase_dirin./util/6_fold_cv.py)
Pretrained Models and Results on S3DIS Dataset
- BAAF-Net pretrained models on all 6 areas can be downloaded from google drive.
- Download our results (ply files) via google drive for visualizations/comparisons.
- More Functions about loading/writing/etc. ply files can be found from here.
Results on SemanticKITTI Dataset
- Online test results (sequence 11-21): mIoU: 59.9%, OA: 89.8%
- Download our test results (sequence 11-21 label files) via google drive for visualizations/comparisons.
- Validation results (sequence 08): mIoU: 58.7%, OA: 91.3%
- Download our validation results (sequence 08 label files) via google drive for visualizations/comparisons.
- Visualization tools can be found from semantic-kitti-api.
Acknowledgment
The code is built on RandLA-Net. We thank the authors for sharing the codes.