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pct

PCT

This is a reproduction of the paper: PCT: Point cloud transformer.

Performance

Task Dataset Metric Score - Paper Score - DGL (Adam) Time(s) - DGL
Classification ModelNet40 Accuracy 93.2 92.1 740.0
Part Segmentation ShapeNet mIoU 86.4 85.6 390.0
  • Time(s) are the average training time per epoch, measured on EC2 g4dn.12xlarge instance w/ Tesla T4 GPU.
  • We run the code with the preprocessing used in PointNet++. We can only get 84.5 for classification if we use the preprocessing described in the paper:

    During training, a random translation in [−0.2, 0.2], a random anisotropic scaling in [0.67, 1.5] and a random input dropout were applied to augment the input data.

How to Run

For point cloud classification, run with

python train_cls.py

For point cloud part-segmentation, run with

python train_partseg.py