Awesome
SpTr: PyTorch Spatially Sparse Transformer Library
<div align="center"> <img src="figs/sparse_transformer.png"/> </div>SparseTransformer (SpTr) provides a fast, memory-efficient, and easy-to-use implementation for sparse transformer with varying token numbers (e.g., window transformer for 3D point cloud).
SpTr has been used by the following works:
-
Spherical Transformer for LiDAR-based 3D Recognition (CVPR 2023): [Paper] [Code]
-
Stratified Transformer for 3D Point Cloud Segmentation (CVPR 2022): [Paper] [Code]
Installation
Install Dependency
pip install torch==1.8.0+cu111 torchvision==0.9.0+cu111 torchaudio==0.8.0 -f https://download.pytorch.org/whl/torch_stable.html
pip install torch_scatter==2.0.9
pip install torch_geometric==1.7.2
Compile sptr
python3 setup.py install
Usage
SpTr can be easily used in most current transformer-based 3D point cloud networks, with only several minor modifications. First, define the attention module sptr.VarLengthMultiheadSA
. Then, wrap the input features and indices into sptr.SparseTrTensor
, and forward it into the module. That's all. A simple example is as follows. For more complex usage, you can refer to the code of above works (e.g., SphereFormer, StratifiedFormer).
Example
import sptr
# Define module
dim = 48
num_heads = 3
indice_key = 'sptr_0'
window_size = np.array([0.4, 0.4, 0.4]) # can also be integers for voxel-based methods
shift_win = False # whether to adopt shifted window
self.attn = sptr.VarLengthMultiheadSA(
dim,
num_heads,
indice_key,
window_size,
shift_win
)
# Wrap the input features and indices into SparseTrTensor. Note: indices can be either intergers for voxel-based methods or floats (i.e., xyz) for point-based methods
# feats: [N, C], indices: [N, 4] with batch indices in the 0-th column
input_tensor = sptr.SparseTrTensor(feats, indices, spatial_shape=None, batch_size=None)
output_tensor = self.attn(input_tensor)
# Extract features from output tensor
output_feats = output_tensor.query_feats
Authors
Xin Lai (a Ph.D student at CSE CUHK, xinlai@cse.cuhk.edu.hk) - Initial CUDA implementation, maintainance.
Fanbin Lu (a Ph.D student at CSE CUHK) - Improve CUDA implementation, maintainance.
Yukang Chen (a Ph.D student at CSE CUHK) - Maintainance.
Cite
If you find this project useful, please consider citing
@inproceedings{lai2023spherical,
title={Spherical Transformer for LiDAR-based 3D Recognition},
author={Lai, Xin and Chen, Yukang and Lu, Fanbin and Liu, Jianhui and Jia, Jiaya},
booktitle={Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition},
year={2023}
}
@inproceedings{lai2022stratified,
title={Stratified transformer for 3d point cloud segmentation},
author={Lai, Xin and Liu, Jianhui and Jiang, Li and Wang, Liwei and Zhao, Hengshuang and Liu, Shu and Qi, Xiaojuan and Jia, Jiaya},
booktitle={Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition},
pages={8500--8509},
year={2022}
}
License
This project is licensed under the Apache license 2.0 License.