Important Update: The code of Voxel R-CNN in OpenPCDet
is also an official implementation one. Please refer to this repository to find the configs for Waymo Open Dataset.
This is the official implementation of Voxel R-CNN: Towards High Performance Voxel-based 3D Object Detection, built on OpenPCDet
.
@article{deng2020voxel,
title={Voxel R-CNN: Towards High Performance Voxel-based 3D Object Detection},
author={Deng, Jiajun and Shi, Shaoshuai and Li, Peiwei and Zhou, Wengang and Zhang, Yanyong and Li, Houqiang},
journal={arXiv:2012.15712},
year={2020}
}
-
Prepare for the running environment.
You can either use the docker image we provide, or follow the installation steps in
OpenPCDet
.docker pull djiajun1206/pcdet-pytorch1.5
-
Prepare for the data.
Please download the official KITTI 3D object detection dataset and organize the downloaded files as follows (the road planes could be downloaded from [road plane], which are optional for data augmentation in the training):
Voxel-R-CNN ├── data │ ├── kitti │ │ │── ImageSets │ │ │── training │ │ │ ├──calib & velodyne & label_2 & image_2 & (optional: planes) │ │ │── testing │ │ │ ├──calib & velodyne & image_2 ├── pcdet ├── tools
Generate the data infos by running the following command:
python -m pcdet.datasets.kitti.kitti_dataset create_kitti_infos tools/cfgs/dataset_configs/kitti_dataset.yaml
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Setup.
python setup.py develop
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Training.
The configuration file is in tools/cfgs/voxelrcnn, and the training scripts is in tools/scripts.
cd tools sh scripts/train_voxel_rcnn.sh
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Evaluation.
The configuration file is in tools/cfgs/voxelrcnn, and the training scripts is in tools/scripts.
cd tools sh scripts/eval_voxel_rcnn.sh
Thanks to the strong and flexible OpenPCDet
codebase maintained by Shaoshuai Shi (@sshaoshuai) and Chaoxu Guo (@Gus-Guo).
This repository is implemented by Jiajun Deng ([email protected]).