PRIN/SPRIN Pretrained Weights

Pretrained checkpoints for PRIN/SPRIN: On Extracting Point-wise Rotation Invariant Features (TPAMI 2022), trained on the ShapeNet part segmentation benchmark.

Code: https://github.com/qq456cvb/SPRIN

Contents

File Model Size
epoch250.pt SPRIN (sparse PRIN, operates directly on sparse point clouds) 112 MB
state79.pkl PRIN (Point-wise Rotation Invariant Network with spherical voxel convolution) 1 MB

Usage

Download the checkpoints into the corresponding folders of the repository:

hf download qq456cvb/SPRIN epoch250.pt --local-dir sprin
hf download qq456cvb/SPRIN state79.pkl --local-dir prin

Then run the test scripts:

python sprin/test.py  # loads sprin/epoch250.pt
python prin/test.py   # loads prin/state79.pkl

Citation

@article{you2022prin,
  title={PRIN/SPRIN: On Extracting Point-wise Rotation Invariant Features},
  author={You, Yang and Lou, Yujing and Shi, Ruoxi and Liu, Qi and Tai, Yu-Wing and Ma, Lizhuang and Wang, Weiming and Lu, Cewu},
  journal={IEEE Transactions on Pattern Analysis and Machine Intelligence},
  volume={44},
  number={12},
  pages={9489--9502},
  year={2022},
  doi={10.1109/TPAMI.2021.3130590}
}
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